* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download D 2.2 Traits analysis Final April 2010
Latitudinal gradients in species diversity wikipedia , lookup
Molecular ecology wikipedia , lookup
Habitat conservation wikipedia , lookup
Biodiversity action plan wikipedia , lookup
Theoretical ecology wikipedia , lookup
Invasive species wikipedia , lookup
Ecological fitting wikipedia , lookup
Island restoration wikipedia , lookup
Coevolution wikipedia , lookup
PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 ________________________________________________________________ _____ ENHANCEMENTS OF PEST RISK ANALYSIS TECHNIQUES Species traits analysis – environmental and economic impacts PD No. 2-2 Author(s): Therese Pluess, Martin Hejda, Philip E. Hulme, Vojtěch Jarošík, Marc Kenis, Marie-Laure Desprez-Loustau, David Makowski, Jan Pergl, Aurore Philibert, Petr Pysek, Cécile Robin, Urs Schaffner, Corinne Vacher, Johan van Vlaenderen, Sven Bacher Partner(s): UniFr, CABI, IBOT, INRA, Bioprotection Final Draft Submission date: 23rd October 2009 EU Framework 7 Research Project Enhancements of Pest Risk Analysis Techniques (Grant Agreement No. 212459) Page 1 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ PROJECT OVERVIEW: PRATIQUE is an EC-funded 7th Framework research project designed to address the major challenges for pest risk analysis (PRA) in Europe. It has three principal objectives: (i) to assemble the datasets required to construct PRAs valid for the whole of the EU, (ii) to conduct multi-disciplinary research that enhances the techniques used in PRA and (iii) to provide a decision support scheme for PRA that is efficient and user-friendly. For further information please visit the project website or e-mail the project office using the details provided below: Email: [email protected] Internet: www.pratiqueproject.eu Authors of this report and contact details Name: Therese Pluess Partner: UniFr E-mail: [email protected] Name: Marc Kenis Partner: Cabi E-mail: [email protected] Name: Johan van Vlaenderen Partner: Cabi E-mail: [email protected] Name: Marie-Laure Desprez-Loustau Partner: INRA E-mail: [email protected] Name: Cécile Robin Partner: INRA E-mail: [email protected] Name: Corinne Vacher Partner: INRA E-mail: [email protected] Name: David Makowski Partner: INRA E-mail: [email protected] Name: Aurore Philibert Partner: INRA E-mail: [email protected] Name: Petr Pysek Partner: IBOT E-mail: [email protected] Name: Jan Pergl Partner: IBOT E-mail: [email protected] Name: Vojtěch Jarošík Partner: IBOT E-mail: [email protected] Page 2 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Name: Philip E. Hulme Partner: Bioprotection E-mail: [email protected] Name: Martin Hejda1 Partner: IBOT E-mail: Name: Urs Schaffner Partner: CABI E-mail: [email protected] Name: Sven Bacher Partner:UniFr E-mail: [email protected] Disclaimer: This publication has been funded under the small collaborative project PRATIQUE, an EU 7th Framework Programme for Research, Technological Development and Demonstration addressing theme: [kbbe-2007-1-2-03: development of more efficient risk analysis techniques for pests and pathogens of phytosanitary concern call: fp7- kbbe-2007-1]. It does not necessarily reflect the European Commission's views and in no way anticipates the Commission’s future policy in this area. Page 3 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table of Contents: Summary ........................................................................................................................ 6 General Introduction ...................................................................................................... 8 Insects .......................................................................................................................... 11 Introduction .............................................................................................................. 11 Material and Methods .............................................................................................. 12 Environmental impact .......................................................................................... 12 Economic impact ................................................................................................. 14 Results ...................................................................................................................... 18 Environmental impact .......................................................................................... 18 Economic impact ................................................................................................. 18 Discussion ................................................................................................................ 20 Recommendations for best practice ......................................................................... 25 Environmental impact .......................................................................................... 25 Economic impact ................................................................................................. 26 Literature .................................................................................................................. 26 Tables ....................................................................................................................... 29 Plants ............................................................................................................................ 41 Introduction .............................................................................................................. 41 Materials and methods ............................................................................................. 41 Data ...................................................................................................................... 41 Statistical analysis ................................................................................................ 43 Results and discussion ............................................................................................. 45 Conclusions .............................................................................................................. 48 Literature .................................................................................................................. 49 Tables and figures .................................................................................................... 52 Pathogens ..................................................................................................................... 62 Introduction .............................................................................................................. 62 Material and Methods .............................................................................................. 62 1. Data set............................................................................................................. 62 2. Statistical analyses ........................................................................................... 69 Results ...................................................................................................................... 70 Discussion - Conclusions ......................................................................................... 77 Literature .................................................................................................................. 79 Page 4 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Appendices Appendix 1: References to case studies on impact of invasive plants reviewed in the present paper Appendix 2: Agricultural insect pests with scores and significant traits Appendix 3: Forest insect pests with scores and significant trait Appendix 4: Orchard insect pests with scores and significant traits Appendix 5: Ornamental insect pests with scores and significant traits Appendix 6: Storage insect pests with scores and significant traits Appendix 7: Species list of insect pests and number of websites for analysis 2.2 Swiss database Page 5 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Summary Assessing the future impact of alien plant pests is a major challenge in pest risk analysis. The three studies in this deliverable looked for the first time at species traits associated with the impact of plant pests from three taxonomic groups: insects, plants and fungi. Such traits could be integrated in pest risk analysis schemes to help assess economic and environmental impacts. We collected data describing the environmental impacts of insects, plants and fungi and, additionally, on the economic impact of insect plant pests. This report discusses each taxon separately because species traits and data availability differed markedly between the three taxa considered and because a generic basis for impact definition was not available. Despite data scarcity (34 species) and a bias towards forest pests, it was possible to identify a trait (mode of reproduction) that is significantly related to high environmental impact in insects. Economic impact in the insects studied was particularly important in those species that reduced photosynthetic activity (defoliating and honeydew producing insects). It was also found that different traits are associated with impact in different economic sectors (agriculture, forestry, orchards, ornamentals, storage). A further analysis looked at website counts for insecsts that are alien to Switzerland. This analysis revealed that insects that are transmitting diseases have high website counts. A comparison of the results for environmental and economic impacts (including the website counts) was not feasible because the sets of species analysed were not the same. A possible integration of the findings for insects into the EPPO PRA scheme1 is proposed. For plants (173 species), the data basis was better than for insects, but was also biased towards a few well studied species. Shrubs and short trees were most likely to have a significant impact on most characteristics of invaded populations, communities and ecosystems, including native species diversity. An invasive plant species might have a significant impact on some characteristics of the receptor environment, and a non-significant impact on others. Therefore, a universal measure of impact was not feasible and a clear definition of impact categories will be crucial for a successful risk analysis. The 1 http://www.eppo.org/QUARANTINE/Pest_Risk_Analysis/PRA_intro.htm Page 6 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ plant analysis suggests that traits determining invasiveness may be similar to those determining impact. For fungi (47 species), we analysed relationships between species traits and (i) invasiveness and (ii) high ecological impacts. We also included the possible effects of confounding variables: date of introduction, host surface area and phylogeny (the latter showing no effect in our data set). Most discriminant traits were long distance-dispersal and sexual reproduction for invasiveness and optimal growth temperature and infection of perennial organs for high ecological impact. Surprisingly, wide host range (i.e. generalist pathogens) was negatively correlated with invasiveness. Possible adaptations of the EPPO PRA scheme, according to these findings, are proposed. Overall, the approaches and findings of the three taxa differed considerably. Moreover, even though the EPPO scheme uses a five level scoring system, these levels are not clearly defined and may not be readily applicable to environmental impact assessment because of data scarcity. However, tasks 2.3 and 2.4 in PRATIQUE will investigate this topic further and will be using the results from this deliverable. There was also a bias towards a few well studied species and a knowledge gap for low-impact or “non-pest” species, but this is a general characteristic in invasion ecology and is partly dealt with by appropriate statistical analysis. The patchiness of information on environmental impacts can be seen as a caveat in this study. But this situation can only be amended over time, when more studies will be done that quantify rather than only describe the impact of alien organisms. The three studies each identified relevant traits and some of them (reproductive mode, host range) are already part of the EPPO scheme, others (photosynthesis reducing insects, optimal growth temperature for pathogens and plant life form and plant height) are not directly considered in the scheme. However, the integration of these traits into the EPPO PRA scheme, together with a cross-taxonomic analysis of species traits relevant for impacts will take place in task 2.4 (development of modules for assessing economic, environmental and social impact). The decision as to whether our findings are best included as toolkits or notes added to the PRA scheme questions will be taken in task 2.5 (development of a generic integrated model). Page 7 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ It can also be argued that species traits are not useful predictors for impact because other factors (host traits, characteristics of the receptor ecosystem, habitat and climate suitability, pathway characteristics, etc.) are equally or more important. This is certainly true and it would not be appropriate to only rely on pest traits when doing a PRA. Our investigations on species traits can be seen as complementary information for a PRA. The knowledge that a trait correlated with impact in the past could be especially important if other information needed to do a PRA is scarce. The lack of detailed information is often stated to be a considerable problem in the PRA process. Thus in the absence of complete knowledge, species traits could help us to assess the intrinsic biological potential of an organism to become a pest in a new area. General Introduction In a globalizing world, an increasing number of organisms reach areas far outside their native range (Enserink, 1999). Some of these non-native organisms cause considerable economic costs, alter ecosystem processes, are responsible for a multitude of diseases in humans, animals and plants and are a major threat to biodiversity (Vila et al., 2009). Countries and trading blocs are increasingly implementing appropriate measures to prevent or reduce the entry, establishment, spread and impacts of plant pests and invasive alien species in general. In the EU, a more coordinated and harmonized strategy against invasive alien species needs to be developed (Hulme et al., 2009) and the techniques already applied against plant pests need to be enhanced (Baker et al., 2009). With the increase in the volumes, commodity types and origins of trade in plant material, the introduction of new crops, and the impact of climate change, the threats posed by new plant pests in Europe are now greater than ever. However, the free movement of people and commodities is the basis of the European and world economy. For this reason countries may implement phytosanitary measures only for quarantine pests and regulated non-quarantine pests (FAO, 1997, Heather & Hallman, 2008). A Pest Risk Analysis (PRA) is required to determine whether a pest should be regulated and what phytosanitary measures should be taken (Baker et al., Page 8 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 2009). These measures must be based on scientific principles and cannot be maintained without sufficient scientific evidence. Risk assessment has proven to be an effective method for identifying and prioritising environmental problems with high uncertainty, particularly for predicting the likelihood and severity of potential environmental impacts (Andersen, 2007). Over the last few years, risk assessment schemes have been developed for plants (Pheloung et al., 1999, Daehler et al., 2004, Krivanek & Pysek, 2006), birds (Vall-Ilosera & Sol, 2009), fish (Kolar & Lodge, 2002, Copp et al., 2009) and mammals (Andersen, 2007, Nentwig et al., 2009). In Europe, the PRA scheme for plant pests developed by the European Plant Protection Organisation EPPO, is much in use (EPPO, 1997) and has been successfully adapted in the UK to assess the risks posed by all non-native species (Baker et al., 2008). In some European countries, techniques for producing black lists of alien organisms potentially harming the environment have also been developed and used (Branquart, 2007, Essl et al., 2008). However, there is still considerable scope for improvement ((Baker et al., 2009), especially for predicting and comparing environmental and economic impacts (Vila et al., 2009). The current EPPO PRA scheme (EPPO, 2007) is based on expert judgments justified by the existing literature. This may lead to expert-biased risk assessment outcomes (Maguire, 2004) but qualitative assessment techniques provide the only realistic approach for assessing such topics as environmental impacts since they are rarely quantified in the scientific literature. Defining and measuring impact is important when attempting to set priorities for managing invasive species (Parker et al., 1999, Smith et al., 1999, Ricciardi et al., 2000, Duncan et al., 2003). Parker et al. (1999) called for studies that measure impacts at multiple scales and levels of organization and the development of a framework to predict future damages, but little progress has been made. And even if useful and accurate tools have been developed, such as the risk assessment tool for fish introductions to the Great Lakes (Kolar & Lodge, 2002), the political will for implementation is small (Keller & Lodge, 2009). A review of schemes presently used to assess environmental impact of plant pests was produced by PRATIQUE (Deliverable 2.1). It concluded that, for the moment, no scheme provides satisfactory guidelines on how to predict the environmental impact of a species that has not yet Page 9 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ invaded any region, or for which the environmental impact has never been studied. Hence, while some tools may be available for vertebrates, a scheme to assess the ecological impacts of plant pests still needs to be developed. A more quantitative approach including statistical methods is needed, especially to improve the comparability with economic impacts in future PRA schemes (Vila et al., 2009). Statistical methods proved to be valuable instruments to predict establishment and spreading success of invaders and should help to predict impact (Kolar & Lodge, 2001). Only recently Nentwig et al. (2009) published a generic scoring-system for alien mammals in Europe that is based on thorough statistical methods and ranks alien mammals based on their biological traits. They found that the ecological flexibility of a mammal species is a good predictor for its environmental and economic impact in a new environment. Predicting both successful entry and establishment and the impact of an alien species is difficult. However, many studies, focusing on factors associated with entry and establishment success of alien species, have identified species traits associated with invasiveness (Sol & Lefebvre, 2000, Prinzing et al., 2002, Jeschke & Strayer, 2005, Pysek & Richardson, 2007, Sol, 2007, Hayes & Barry, 2008, Sol et al., 2008). Certain species traits, such as brain size in birds and mammals, have proved to be useful in predicting the potential for the entry and establishment of alien species in new areas (Sol & Lefebvre, 2000, Sol et al., 2008). The scoring system developed by Nentwig et al. (2009) used rigorous statistical methods and showed that the impact of mammals can be predicted equally well by a species trait (ecological flexibility) and the information on the damage caused by the species in other parts of the world. Nentwig et al. (2009) thus identified a trait that could reliably predict the possible impact of future mammal introductions. Similar studies for plant pests are still lacking and are being explored by PRATIQUE. Lovett (2006) described short-term and longterm impacts of forest pest outbreaks in Eastern North American Forest Ecosystems and identified species traits such as the feeding niche, host specificity and virulence as the key predictors for determining the nature and severity of insect pest outbreaks. However, they looked at only two insect pests and one pathogen and did not perform statistical analyses to identify traits nor did they quantify impact. A review by Kenis Page 10 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ et al. (2009) was more exhaustive (including 72 alien insects), but comprised many insects that are not plant pests and also did not quantify the impact. A recent study by Sefrova and Lastuvka (2009) identified body size, host specificity and feeding mode as being related to invasive Lepidopteran species in the Czech Republic, thus showing that it is possible to identify traits typical for certain invasive insect species taxa. However, studies that quantify environmental and economic impacts of plant pests and compare these impacts with relevant biological traits of the pest are still lacking. Here, we have attempted to identify species traits of plant pests that are associated with impacts to the environment and the economy. Such traits can then be integrated as predictors in PRA schemes to make estimation of environmental and economic impacts more objective and reliable, despite the difficulties in relating explanations to predictions (Williamson, 2006). Insects Introduction For insects, we hypothesize that two sets of traits can be associated with high impacts to plants in both wild and crop plants. An insect species can cause significant impacts to a host plant either by (i) the feeding behaviour of the individual insects or (ii) by high feeding pressure due to high population densities. Thus, the first set of traits consists of those related to the feeding behaviour of herbivorous insects. We expect that the host range of a species may have an effect on the impact. The majority of the most environmentally damaging pests or diseases are monophagous because these are the ones that can kill or even locally eradicate host plants (Lovett et al., 2006, Kenis et al., 2009). For economic pests however, it is likely that a polyphagous insect would cause higher impacts than a monophagous or oligophagous insect because it has shown that it can overcome the defences of many host plants. Also, if an insect is polyphagous, it is more likely to include crops of economic importance in its diet. We thus expect to observe an effect of host specificity but are expecting opposing outcomes for environmental and economic impact respectively. Furthermore, we expect those species feeding in dense groups on a single plant (Lawrence 1990, Hunter 1991, Codella and Raffa 1995, Clark and Faeth 1997) would also be Page 11 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ associated with higher impacts because, by feeding gregariously, the individuals might more easily overcome plant defence mechanisms. There might also be a difference between external and internal, above- and belowground feeders and those insects preferentially feeding on vegetative or reproductive parts of the host plant. The second set of traits relates to the population growth capacity of an insect species. We expect that insects that are small, have a high fecundity, several generations per year and asexual reproduction reproduce faster and are thus more able to quickly build up high population densities. High population density in turn will lead to higher feeding pressure on host plants (both in wild and crop plants) which will thus be associated with higher impacts. For predicting the economic impact of insect pests, we used a third set of predictors describing the pest history of a species and hypothesize that species that are recorded as pests in their native range (without considering the seriousness of the pest in the native range) will have a higher impact in general than those not regarded as a problem in their native range. Furthermore, we also included in our analyses the predictor “being invasive elsewhere”, a characteristic that is known to be associated with likelihood of entry and establishment (Williamson, 2006). Two further traits for the economic pests were tested: Insects can affect the photosynthetic activity of their hosts either by defoliation or sooty moulds originating from excessive honeydew production and covering the leaf area. Both mechanisms may lead to reduced photosynthetic activity (Boote et al., 1983, Spitters, 1990). This trait was defined as “affecting photosynthesis”. Another trait expected to be important for economic impact was the capacity to transmit plant pathogens. Material and Methods Environmental impact 1.1 Data collection Species traits and species list Based on our hypotheses, information on the following species traits was collated: i) host specificity, feeding niche, gregariousness, ii) asexual reproduction, fecundity, generations/year, adult longevity and adult body size. Traits were retrieved from the Page 12 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Crop Protection Compendium CPC (www.cabcompendium.org, accessed in 2008), CAB Abstracts and the literature search engine, Google scholar. The species list (Table 1) consisted of the insect species reviewed by Kenis et al. (2009). This review included primary research publications studying the ecological effects of invasive alien insects and/or mechanisms underlying these effects (Kenis et al., 2009). From this list we excluded the social insects because of their special life-history traits and those species for which Kenis et al. (2009) did not describe the impacts on plants. In addition, species from the list of insect defoliators in North America (Mattson et al. (1991) were only included in the dataset if impact reports were available. Because this list also includes native pests, we introduced pest location status (native vs. alien) as another variable. Impact reports The internet was screened for case studies describing the ecological impacts of the species selected (Google scholar, accessed 2008). The search words “ecological impact”, “ecological damage”, “environmental impact” and “environmental damage” plus the scientific species name were used to obtain impact information for each species. The impacts, described in the retrieved literature and in Kenis et al. (2009), were scored based on the following principles. 1.2 Impact scoring We followed Parker et al. (1999) by quantifying the impacts of plant pests from the individual host plant to the ecosystem/landscape level. To do so, we used an approach also taken by Nentwig et al. (2009) to quantify the impact of alien mammals in Europe, where ecological impacts are categorized into: herbivory, competition, predation, hybridisation and ability to transmit of diseases and subsequently scored. The categories were adapted for the purpose of scoring the environmental impacts of plant pests. Possible impacts of plant pests on the native flora and ecosystem services were thus categorized as: herbivory, transmitting plant diseases, exploitation competition, apparent competition and negative changes to the ecosystem. Each category was divided into five scoring levels according to the possible consequences of a pest outbreak from 0 (no interaction between pest and plant reported or Page 13 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ mechanism not studied) to 5 (massive consequences for the flora or the ecosystem due to presence of the pest). A detailed description of the impact categories is given in Table 2. 1.3 Analysis The data were analyzed with General Linear Models (GLMs), using the function glm in R (Version 2.7.1; R Development Core Team 2008). GLMs are standard statistical models that are equivalent to linear regression if the explanatory variable is continuous and equivalent to ANOVA if the explanatory variable is categorical. From each of the five impact categories the highest scores were taken and summed to obtain the overall impact, which served as the dependent variable. Each species trait was included as the fixed factor in separate analyses. Economic impact The analysis of species traits associated with economic impact was made using two different databases. The first is a European database of 182 alien plant pests (DAISIE, 2009) and the second is a database of 313 alien species in Switzerland (Kenis, 2006). The two analyses included similar species traits (explanatory variables) but different socio-economic impact scoring systems (dependent variables). European database Data collection Species traits and species lists Based on our hypotheses, we used three sets of species traits; those related to i) the feeding behaviour, ii) the population growth capacity and iii) the pest history of a species. An insect was considered a native pest if at least one paper from the last 40 years, describing it as a pest (causing impacts and/or needing control) in its native range was found in CAB Abstracts. Other traits, such as the capacity to transmit vectors or to reduce photosynthetic activity (by defoliators and excessive honeydew producers causing sooty moulds), were also analysed. Table 3 lists and defines the traits considered. The species traits analysis for economic impact was performed with Page 14 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 182 plant pests that are alien to Europe but have already been established or intercepted in Europe (DAISIE, 2009); see appendices for the species list. Impact scoring The economic impact described in the Crop Protection Compendium (CPC, accessed in spring 2009) was used as the dependent variable in the analysis for each species. Two different scoring methods were developed to assess the impacts. Overall impact scoring In order to obtain a large sample size and increase statistical power, we scored impacts semi-quantitatively in four levels: no impact (no economic impact reported in CPC), low impact (economic impact is reported but not quantified or no notion is given on the severity of the damage), medium impact (the economic impact report describes the medium importance of the plant pest and/or reports yield/quality losses below 25%) and high impact (the CPC qualifies the species as a serious pest and/or reports losses over 25%). A detailed description of the four scoring levels is given in Table 4. This method allowed us to score and analyse the impacts of 176 species. The same insect can be a minor pest for one crop and a major pest for another crop. Hence, if the CPC cites different levels of damage, the worst case was always scored, representing the highest potential damage a species could cause. This method does not consider the spatial extent of the damage caused by an insect species. Quantification of monetary losses For 63 species from our list of 176, the CPC reports the percentage of yield loss or lost income for producers. For these species, a second method was envisaged with the aim of calculating a continuous dependent variable (a percentage or an index with more than four levels). The references in CPC were scored according to the monetary losses that they caused or that were estimated in the literature. This method promised a more accurate evaluation of impact with more than four levels and thus a more accurate analysis. However, it could only be applied to a subset of the insects listed because exact figures were not available for many species. Page 15 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Analysis The data were analyzed with General Linear Mixed Models (GLMM), using the function lme of the software R, Version 2.7.1; R Development Core Team (accessed 2008). The highest impact score of a species served as the dependent variable and each species trait was included as the fixed factor in separate analyses. Because related species have similar traits, they are likely to achieve similar impact levels (Manchester & Bullock, 2000). GLMMs deal directly with non-independent data points and the taxonomic hierarchy at the order level was integrated as a random effect in our model (Goldstein, 1999, Diggle et al., 2007). First, an analysis including all 176 species was performed. Because insects can affect several types of cropping systems, we split the dataset into five sectors: “agriculture” (mainly annual food or fibre crops), “forest” (without ornamental trees), “orchard” (including perennials such as apple, citrus, coffee, pineapple, avocado, cassava, banana, palms, etc), “ornamental” (including ornamental trees and flowers) and “storage” (including stored plant products such as wood, but also cereals). Each pest species was included in every sector affected. The same analysis was then performed separately for each sector. Swiss database Data collection In this analysis, we used the database of 313 alien insects established in Switzerland (Kenis, 2006). This list not only contains herbivores but also detritivores, parasitoids and predators. Using the whole list, we first tested four basic traits or characteristics of all insects: feeding niche, habitat (EUNIS classification, http://eunis.eea.europa.eu/habitats-code-browser.jsp), continent of origin and insect order. For the trait “feeding niche”, we classified the insects into five categories: 1: omnivorous, saprophagous and mycetophagous; 2: sap feeders; 3: parasites, parasitoids, predators; 4: external defoliators, leaf miners, gall makers; 5: borers (fruit/shoot/stem/etc.) and seed feeders. The number of Swiss websites describing socio-economic impact in Switzerland (covering all Swiss languages), or control Page 16 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ methods for application in Switzerland was used as the dependent variable. Only one website was counted per host organisation. The data were analyzed with Generalized Linear Mixed Models (GLMM). Then, using a subset of 100 species (Appendix 7), which live at least partly as herbivores (but including stored product pests), we tested an additional list of 11 traits, similar to those tested in the analysis of the European database: asexual reproduction; fecundity; mean number of generations per year in Europe; specificity; longevity of adults; adult size; alien elsewhere and pest in the native range (see Table 3 for definitions). The feeding niche was defined as above for the first analysis. Finally, we also included the traits “vector or facilitator (facilitating infection processus) of plant disease – yes or no” and “congeneric-species native to Europe – yes or no”. In this latter analysis, as the dependent variable, we again used the number of Swiss websites describing impact in Switzerland, or control methods for application in Switzerland. In addition, we also used as the dependent variable the number of scientific publications in Switzerland and worldwide over a ten-year period (1999-2008), retrieved using CAB Abstracts. For a few insects that are commonly used as hosts for rearing parasitoids or predators (e.g. Ephestia kuehniella, used for rearing Trichogramma spp) or as model species for ecological studies the list of publications was sorted to select only those where the insect was considered a pest. For the number of publications in Switzerland, only publications of studies carried out in Switzerland (or by a Swiss senior author in a neighbouring country) were taken into account. Studies made by Swiss authors on other continents were discarded. Analysis The distribution of these three counts followed a Poisson distribution and we therefore used the LMER function of the software R (Version 2.7.1; R Development Core Team 2008). We first performed univariate analyses with each of the 11 species traits as fixed factors and included insect order as the random factor. Because correlations between the different species traits were weak, we then built multivariate models including all 11 traits as fixed factors and insect order as the random factor and then reduced the number of fixed factors in a stepwise approach, selecting the minimum adequate model by minimising Akaike’s Information Criterion (AIC). Page 17 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Results Environmental impact Environmental impacts were scored for 34 species from 4 orders, reported in 74 papers (see Table 1 for a species list). Asexual reproduction was the only factor explaining high impact levels (p = 0.005). However, most high-impact species came from the same order (Hemiptera) and it is currently impossible to disentangle species traits from phylogenetic relatedness (p = 0.014 if the insect order was used as the explanatory variable). Alien insects (n=13) caused significantly higher impacts than native species (n=21) (p = 0.002). Economic impact European database Overall impact scoring For all 176 species (see Appendices for the species list), a score between 0 (no impact) and 3 (major impact) was attributed. For 26 species no impact record was reported in the CPC, hence we assumed their impact would not be serious enough to justify an impact record in CPC and therefore, they were scored 0, 23 species were classified as minor pests (score 1), 32 species as medium (score 2) and 95 species as major pests (score 3). An analysis of all species revealed that insects affecting the photosynthetic activity (see Table 5 for an overview of the results) of their host plant were significantly related to high economic impacts (p < 0.01). Furthermore, species that are also alien on a continent other than Europe had a significantly higher economic impact (p < 0.01). The overall analysis also showed that species already considered to be a pest in their native range were also of higher economic importance (p = 0.06) In the agricultural sector (61 species), insects that were alien elsewhere were significantly correlated with high impact (p = 0.04). There was also a tendency for insects affecting the photosynthetic activity of their host plants to be of higher economic importance (p = 0.07). This trait was significant for the forest sector (35 Page 18 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ species) (p = 0.02). In the orchard sector (79 species), species with many generations per year were significantly related to high economic damage (p = 0.01). Also, species being alien elsewhere were significantly associated with high economic damage (p < 0.01). There was also a tendency for polyphagous insects to have higher economic impacts (p = 0.10) than mono- or oligophagous species. In the ornamental sector (47 species), the number of generations (p = 0.04), host specificity (p = 0.003), gregariousness (p = 0.03) and alienness (p < 0.001) and affecting photosynthesis (p = 0.009) were significant factors. Fecundity (p = 0.02) was also significantly correlated with high impacts, but this correlation was negative. For storage pests, the feeding behaviour hypothesis could not be tested because all traits were the same for the relevant species. However, adult longevity correlated positively with high impact (p = 0.08) while fecundity was also negatively correlated with high impact (p < 0.01) Quantification of monetary losses A first screening of the impacts reported in CPC revealed that this method had its drawbacks and could not be applied: the impacts reported were too heterogeneous. Some reports were based on scientific experiments; others reported lost income of producers in a certain year, while others were more general and stated costs from a country over a certain time period. Furthermore, a certain amount of money will have different consequences in different countries and different years because of inflation and fluctuating monetary stability in many agrarian countries. It also became apparent, that the information that the method requires was only available for certain well studied insects, presumably those responsible for high economic impacts. Swiss database The analysis of full Swiss database using the number of Swiss websites as the dependent variable did not provide significant differences for the traits “feeding niche”, “habitat” and “taxon”. In contrast, the continent of origin significantly affected the number of websites (p=0.022) species of European origin being mentioned as pests in fewer websites than species from other continents. Results from the univariate analyses using the subset of 100 species and 11 traits are shown in Table 6. Several traits showed a clear trend throughout the three Page 19 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ dependent variables. Being a vector or facilitator of a disease has a positive effect on the number of websites or publications. In contrast, having a congeneric native species in Europe was negatively correlated with the number of websites and publications. Being a native pest in the region of origin and having a high fecundity was significantly affecting the number of websites in Switzerland and publications worldwide. In contrast, species with long-lived adults had fewer publications than short-lived species. For a couple of traits, we observed contradictory results between dependent variables. For example, the number of Swiss websites and worldwide publications were positively affected by the host range size while it was the contrary for the number of Swiss publications. Tables 7, 8, and 9 show the best fitting models for the three dependent variables. The models for the number of Swiss websites, Swiss publications and world publications include four, seven and eleven factors, respectively. The model for worldwide CAB publications is statistically over-fitted, with all factors being of significant importance. It cannot be interpreted meaningfully and hence is not discussed further. Discussion Environmental impact Asexual reproduction was the only insect trait significantly related with environmental impacts on the native flora. With one exception, all species with asexual reproduction belonged to the order Hemiptera. Thus we cannot rule out that it is indeed the reproductive mode that correlates with higher environmental damage or whether other traits, shared by all Hemiptera, are responsible for this result. Furthermore, our dataset consists of a majority of forest pests and this makes generalisations difficult. While there is a plethora of literature concerning impacts on plants and many studies have also investigated the traits of high-impact species (Pysek & Richardson, 2007), there are only few detailed studies on herbivorous insects and their environmental impact that go beyond the well studied high-impact species such as Adelges piceae, A. Page 20 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ tsugae or Lymantria dispar (Kenis et al., 2009). However, besides herbivorous forest pests, many studies describing impact of insects focus on non-herbivorous species and are thus not relevant to PRATIQUE. This may well be because insects act on many trophic levels and impacts can be direct (such as herbivory) or indirect (such as apparent competition or hybridisation). Furthermore, aliens may remain undetected for a long time until their impact is obvious and research efforts often focus only on high-impact species. From most world regions there currently exist several lists of alien insects, including many herbivores, but their impact is seldom described or even studied in detail (Mattson et al., 1991, Causton et al., 2006, DAISIE, 2009). Hence, while the categorization and development of the scoring scheme for environmental impact is relatively straightforward, it will remain a challenge to use the scheme due to knowledge gaps. We therefore suggest widening our view and scoring all impacts described in the literature that alien plant pests may have on the environment. This will enable us to enlarge the species list and gain statistical power. The present dataset also includes native insect pests, whereas alien insects are more harmful to the environment. We will thus now focus on alien insects and, because the sample size is too low, we will need to collect new data. Possible data sources for this approach are: the 17 herbivore species reviewed by Kenis et al. (2008) that have so far been excluded, the study on alien insect species for Galapagos published by Causton (2006) listing 463 alien insects (42% herbivores), a list of insect forest pests in Canada, published by the Canadian Forestry Service: (http://www.exoticpests.gc.ca/documents_eng.asp), and the 13 invasive Lepidopteran species in the Czech Republic studied by Sefrova & Lastuvka (2009). For the moment, we still lack a thorough scheme to assess the environmental impact of plant pests (PRATIQUE, Deliverable 2.1) and our recommendations from the insect traits analysis for additions to the EPPO PRA scheme need to be considered with caution because of the low sample size. However, Task 2.4 of PRATIQUE will develop modules for environmental impact assessment and the impact scoring system and trait analysis will contribute to this task. Page 21 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Economic impact European database Insects affecting the photosynthetic activity of their host plants include defoliators (such as Lepidoptera and Coleoptera species) and honeydew producing species (Hemiptera) that have a record in CPC for causing problems with sooty moulds that cover the surface of the photosynthetic tissue of their host plant, thus reducing photosynthesis. Our findings might be of importance because crop growth models include light utilisation in some form or another (Spitters, 1990). Boote et al. (1983) distinguish between light stealers and leaf area reducers because the mechanisms affected differ. Defoliators reduce the leaf area where photosynthesis can occur, while sooty moulds growing on honeydew cover the leaf area and thus reduce photosynthetic activity. However, since both mechanisms affect the C fixation process in plant growth and we are interested in a generic model, we combined them in this study. This is also in accordance with Spitters (1990) who states that the yield reduction by pests and diseases can be explained by a reduction in cumulative light interception. This reduction is attributable either to an accelerated leaf senescence (not taken into account here) or to the coverage or consumption of green foliage, without affecting the rate of photosynthesis of the remaining green leaf area (Spitters, 1990). The focus on photosynthesis reduction from defoliators and sooty moulds due to honeydew production might be criticised, especially since hemipteran species damage host plants with other mechanisms (toxic saliva, transmitting diseases) that could be taken in account in separate analyses of this taxa only. Another important factor is the history of invasiveness, here represented by the trait of being alien elsewhere than Europe (although the species studied were all alien to Europe, they may already have been introduced to other continents). Being alien gives no information about their level of invasiveness (Ricciardi & Cohen, 2007). However, in the present study, being alien is the best surrogate that we have for the invasiveness of a species and we consider that an alien (potentially invasive) species also has the potential to be an economic pest. We did, however, find that being alien is significantly associated with high impacts in the overall analysis as well as in the agricultural, orchard and ornamental sectors (see Appendices 1 to 5). The history of Page 22 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ invasive success has previously been found to be a useful predictor for invasion success (Kolar & Lodge, 2001, Wittenberg & Cock, 2001, Hayes & Barry, 2008). However, in the context of impact, one could also argue, that a species, that has been introduced to other countries, is more widely spread and has therefore more chances to become a pest somewhere because its chances to be pre-adapted to new biotic and abiotic conditions will increase the wider a species is distributed. For plant pests however, it might be more likely that repeated introductions increase the chances to arrive in a place where an economically important crop is grown. Although it is not very surprising that species defined as pests in their native range also had a significant economic impact, this point needs clarification: the definition of native range is not always straightforward because the exact native range of an insect is not always known or is disputed in the literature. This might be problematic if only the extent of occurrence is known and is given at the continental scale, as described by Gaston (1991). At this scale, most insects might be a pest problem somewhere on the continent and thus be considered a native pest. On the other hand, if the native range is considered at a smaller scale, which is probably closer to the reality, comparatively fewer species will be considered a native pest. Hence, while this predictor is significantly related with high economic impacts, it is inherently dependent on the spatial scale and care has to be taken when it is used for predictions. However, from some continents, such as Africa, Asia or Southern America, country specific pest lists may not exist and continental pest records are the most accurate information available at the moment. Furthermore, the growth of plants mainly depends on the availability of light, hence on the photosynthetic activity in the green tissue of a plant. Thus it makes sense that insects that particularly affect this physiological activity might be of higher economic importance, especially for crops where yield matters. We thus suggest assessing risks for each sector (agriculture, forestry, orchards, ornamentals, storage) separately and to consider the relevant traits for each of these sectors only (see recommendation for best practice) Page 23 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Overall, it appears that some findings from other taxonomic groups, such as plants (Pysek & Richardson, 2007)) also seem to hold for insect plant pests. The history of an organism matters if we want to predict its possible impact in a new receptor environment, even though it cannot explain why it is damaging (Nentwig et al., 2009). However, we also found other significant relationships between traits and economic impact. Since our results indicate that the importance of certain traits varies across the different economic sectors distinguished in our study, we advocate that predictions of impacts should be made for each of the sectors separately to increase accuracy. Swiss database In general, factors that had a significant effect on the economic impact score using the European (DAISIE) database also had an effect on the number of websites and/or publications using the Swiss database. In particular, being a pest in the region of origin, being alien elsewhere or being polyphagous tended to have the same effect in both studies. The effect of reducing photosynthesis was not tested with the Swiss database because the feeding niche was analysed differently. In contrast, some factors that were not tested in the European analysis were found to be highly significant in the Swiss analysis. In particular, being a vector or facilitator of a disease had a positive effect on the number of websites and publications. This is not surprising, knowing that many of the most serious insect pests worldwide are vectors of plant viruses or other diseases, causing problems even at low densities. It seems also that insects invading in Europe or having congeneric species in Europe are less cited in websites and publications than species from other continents that have no congeneric species in Europe. Both observations may be due to the fact that European species or species having a congeneric species in Europe will be more likely to be controlled by natural enemies than fully exotic species. It would be interesting to test these three factors using the European database and the economic impact score described in Table 4. It may be questioned whether using the number of websites or scientific publications is a good indicator for socio-economic impact. Although we would certainly not advise their use as impact indicators in pest risk analysis, they provide an objective and replicable measurement and, we believe, a reasonable approximation for our analyses. When websites and publications are counted for a particular country (in this Page 24 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ case Switzerland), it gives a good indication of the socio-economic importance of the species in the country, especially since only websites and publications mentioning the insect as a pest were considered. Furthermore, in Switzerland, hardly any alien insect is known to have an environmental impact, suggesting that any mention of an alien insect as a pest implies an economic or social impact. The number of Swiss publications suffers from a high number of zeros, i.e. the majority of insects had no citation from Switzerland in the last ten years. However, including older citations may overemphasize the importance of old introductions compared to newly introduced insects. In contrast, the number of publications worldwide is a good indicator of the importance of the insect worldwide. However, this variable is not only influenced by the impact of an insect, but also by its distribution. Insects that have a worldwide distribution or are pests in North America or Europe are more likely to be cited in a higher number of publications than insects that are pests in other regions. The distribution of the pest was not taken into account in our analysis but could be easily incorporated in future analyses. However, because a correlation between the number of websites and economic impact is not certain and would need to be investigated, the outcome of these analyses has to be treated with caution. Recommendations for best practice The trait analysis can not stand alone in a PRA. It can contribute to new modules for impact assessments and should thus be part of a generic integrated model. Such a model is being developed in task 2.5 of PRATIQUE and the usefulness and integration of the species traits analysis should be further evaluated in this task. Environmental impact We found a significant influence of the reproductive mode on environmental impact. We suggest including the following text into a tool kit that would be part of the generic integrated model (being developed in task 2-5 of PRATIQUE): - Are potential host plants present in the natural flora of the PRA area? if yes: Page 25 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ - Is the pest a hemipteran species or does it reproduce asexually? if yes, there is an increased risk for the native flora However, we recommend treating this suggestion with caution, because it is based on a small dataset, including both alien and native pests. A new analysis is being done that focuses on alien insects only. . Economic impact Based on the European dataset, we found no generic traits, but it became apparent, that different traits are of importance in different sectors. Because the economic impact of a pest will not only depend on its biological traits but also on the economic importance of its host plants, this needs to be taken into account and could be included as follows into a tool kit as part of the generic integrated model (being developed in task 2-5 of PRATIQUE): - Is an economically important host plant for this pest grown in the PRA area? if yes: - Specify which sectors are likely to be affected by this pest and pay attention to the relevant traits for each sector separately. - The weight of the risk for each sector will depend on its economic importance and should be part of the generic integrated model. The development of the exact form of the tool kit and the decision whether our findings are best included as notes into the PRA scheme will be part of task 2.5. Literature Andersen MC (2007) The roles of risk assessment in the control of invasive vertebrates. Wildlife Research 35, 242-248. Baker RHA, Battisti A, Bremmer J, Kenis M, Mumford J, Petter F, Schrader G, Bacher S, De Barro P, Hulme PE, Karadjova O, Lansink AO, Pruvost O, Pysek P, Roques A, Baranchikov Y & Sun JH (2009) PRATIQUE: a research project to enhance pest risk analysis techniques in the European Union. EPPO/OEPP Bulletin 39, 87-93. Baker RHA, Black R, Copp GH, Haysom KA, Hulme PE, Thomas MB, Brown A, Brown M, Cannon RJC, Ellis J, Ellis E, R. F, Glaves P, Gozlan RE, Holt J, Howe L, Knight JD, MacLeod A, Moore NP, Mumford JD, Murphy ST, Parrott D, Sansford Page 26 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ CE, Smith GC, St-Hilaire S & Ward NL (2008) The UK risk assessment scheme for all non-native species. Neobiota 7, 46-57. Boote KJ, Jones JW, Mishoe JW & Berger RD (1983) Coupling pests to crop growth simulators to predict yield reductions [Mathematical models]. Phytopathology 73, 1581-1587. Branquart E (2007) Guidelines for environmental impact assessment and list classification of non-native organisms in Belgium. Belgian Forum on Invasive Species. Causton CE, Peck SB, Sinclair BJ, Roque-Albelo L, Hodgson CJ & Landry B (2006) Alien Insects: Threats and Implications for Conservation of Galapagos Islands. Annals of the Entomological Society of America 99, 121-143. Copp GH, Vilizzi L, Mumford J, Fenwick GV, Godard MJ & Gozlan RE (2009) Calibration of FISK, an Invasiveness Screening Tool for Nonnative Freshwater Fishes. Risk Analysis 29, 457-467. Daehler CC, Denslow JS, Ansari S & Kuo HC (2004) A risk-assessment system for screening out invasive pest plants from Hawaii and other Pacific Islands. Conservation Biology 18, 360-368. DAISIE (2009) Handbook of Alien Species in Europe. Springer. Diggle P, Farewell D & Henderson R (2007) Analysis of longitudinal data with dropout: objectives, assumptions and a proposal. Journal of the Royal Statistical Society Series C-Applied Statistics 56, 499-529. Duncan RP, Blackburn TM & Sol D (2003) The Ecology of Bird Introductions. Annual Review of Ecology, Evolution and Systematics 34, 71-98. Enserink M (1999) Predicting invasions: Biological invaders sweep in. Science 285, 1834-1836. EPPO (1997) Guidelines on Pest Risk Analysis: Decision-support scheme for quarantine pests PM 5/3 (3). 27, 281-305. Essl F, Klingenstein F, Nehring S, Otto C, Rabitsch W & Stöhr O (2008) Schwarze Listen invasiver Arten - ein Instrument zur Risikobewertung für die NaturschutzPraxis Natur und Landschaft. FAO (1997) International Plant Protection Convention (IPPC) FAO, Rome. Gaston KJ (1991) How large is a species' geographic range? Oikos, 434-438. Goldstein H (1999) Multilevel Statistical Models. Institute of Education, Multilevel Models Project, London. Hayes KR & Barry SC (2008) Are there any consistent predictors of invasion success? Biological Invasions 10, 483-506. Heather NW & Hallman GJ (2008) Pest management and phytosanitary trade barriers. CABI Publishing, Wallingford. Hulme PE, Pysek P, Nentwig W & Vila M (2009) ECOLOGY: Will Threat of Biological Invasions Unite the European Union? Science 324, 40-41. Jeschke JM & Strayer DL (2005) Invasion success of vertebrates in Europe and North America. Proceedings of the National Academy of Sciences 102, 7198-7202. Keller R & Lodge DM (2009) Trait-Based Risk Assessment for Invasive Species. In Bioeconomics of Invasive Species: Integrating Ecology, Economics, Policy, and Management pp. 44-62. Oxford University Press. Kenis M (2006) Insects-Insecta. In R. Wittenberg (Ed.) An inventory of alien species and their threat to biodiversity and economy in Switzerland. CABI Bioscience Page 27 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Switzerland. Centre report to the Swiss Agency for Environment, Forests and Landscape. The environment in practice no. 0629. pp. 71-100. Federal Office for the Environment, Bern. Kenis M, Auger-Rozenberg M-A, Roques A, Timms L, Péré C, Cock M, Settele J, Augustin S & Lopez-Vaamonde C (2008) Ecological effects of invasive alien insects. Biological Invasions. Kenis M, Auger-Rozenberg M-A, Roques A, Timms L, Péré C, Cock M, Settele J, Augustin S & Lopez-Vaamonde C (2009) Ecological effects of invasive alien insects. Biological Invasions 11, 21-45. Kolar CS & Lodge DM (2001) Progress in invasion biology: predicting invaders. Trends in Ecology & Evolution 16, 199-204. Kolar CS & Lodge DM (2002) Ecological predictions and risk assessment for alien fishes in North America. Science 298, 1233-1236. Krivanek M & Pysek P (2006) Predicting invasions by woody species in a temperate zone: a test of three risk assessment schemes in the Czech Republic (Central Europe). Diversity and Distributions 12, 319-327. Lovett GM, Canham CD, Arthur MA, Weathers KC & Fitzhugh RD (2006) Forest Ecosystem Responses to Exotic Pests and Pathogens in Eastern North America. Bioscience 56, 395-405. Maguire LA (2004) What can decision analysis do for invasive species management? Risk Analysis 24, 859-868. Manchester SJ & Bullock JM (2000) The impacts of non-native species on UK biodiversity and the effectiveness of control. Journal of Applied Ecology 37, 845-864. Mattson WJ, Herms DA, Witter JA & Allen DC (1991) Woody Plant Grazing Systems: North American Outbreak Folivores and their Host Plants. pp. 53-84. Baranchikov, Y.N., Mattson, W.J., Hain, F.P., and Payne, T.L., eds. 1991. Forest Insect Guilds: Patterns of Interaction with Host Trees. U.S. Dep. Agric. For. Sew. Gen. Tech. Rep. NE-153. Radnor, PA: U.S. Department of Agriculture, Forest Service, Northeastern Forest Experiment Station. 53-84. Nentwig W, Kühnel E & Bacher S (2009) A Generic Impact-Scoring System Applied to Alien Mammals in Europe. Conservation Biology (in press). Parker IM, Simberloff D, Lonsdale WM, Goodell K, Wonham M, Kareiva PM, Williamson MH, Von Holle B, Moyle PB, Byers JE & Goldwasser L (1999) Impact: Toward a Framework for Understanding the Ecological Effects of Invaders. Biological Invasions 1, 3-19. Pheloung PC, Williams PA & Halloy SR (1999) A weed risk assessment model for use as a biosecurity tool evaluating plant introductions. Journal of Environmental Management 57, 239-251. Prinzing A, Durka W, Klotz S & Brandl R (2002) Which species become aliens? Evolutionary Ecology Research 4, 385-405. Pysek P & Richardson DM (2007) Traits Associated with Invasiveness in Alien Plants: Where Do we Stand? In Biological invasions, ecological studies 193, pp. 97126. Springer-Verlag, Berlin Heidelberg. Ricciardi A & Cohen J (2007) The invasiveness of an introduced species does not predict its impact. Biological Invasions 9, 309-315. Ricciardi A, Steiner WWM, Mack RN & Simberloff D (2000) Toward a global information system for invasive species. Bioscience 50, 239-244. Page 28 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Sefrova H & Lastuvka Z (2009) Do invasive species of Lepidopera in the Czech Republic share traits favouring introduction and invasion? In Biological Invasions: Towards a Synthesis, pp. 87-100. Neobiota. Smith CS, Lonsdale WM & Fortune J (1999) When to Ignore Advice: Invasion Predictions and Decision Theory. Biological Invasions 1, 89-96. Sol D (2007) Do Successful Invaders Exist? Pre-Adaptations to Novel Environments in Terrestrial Vertebrates. . In Biological invasions, ecological studies 193, pp. 127141. Springer-Verlag, Berlin Heidelberg. Sol D, Bacher S, Reader SM & Lefebvre L (2008) Brain size predicts the success of mammal species introduced into novel environments. American Naturalist 172, S63S71. Sol D & Lefebvre L (2000) Behavioural flexibility predicts invasion success in birds introduced to New Zealand. Oikos 90, 599-605. Spitters CJT (1990) Crop growth models - Their usefulness and limitations. Acta Horticulture 267, 349-368. Team RDC (accessed 2008) R: a language and environment for statistical computing. In R Foundation for Statistical Computing, Vienna, Austria, pp. http://www.Rproject.org, Available from http://www.R-project.org. Vall-Ilosera M & Sol D (2009) A global risk assessment for the success of bird introductions. Journal of Applied Ecology 46, 787-795. Vila M, Basnou C, Pysek P, Josefsson M, Genovesi P, Gollasch S, Nentwig W, Olenin S, Roques A, Roy D & Hulme PE (2009) How well do we understand the impacts of alien species on ecosystem services? A pan-European, cross-taxa assessment. Frontiers in Ecology and the Environment (in press). Williamson M (2006) Explaining and predicting the success of invading species at different stages of invasion. Biological Invasions 8, 1561-1568. Wittenberg R & Cock MJW (2001) Invasive alien species: a toolkit of best prevention and management practices, CAB International edn, Wallingford (GB). Tables Table 1: Species list with significant traits in the analysis and environmental impact score Order Family Genus Species Coleoptera Buprestidae Scolytidae Curculionidae Agrilus Dendroctonus Rhinocyllus planipennis frontalis conicus Hemiptera Adelgidae Adelges Adelges Pineus Aphididae Elatobium piceae tsugae boerneri coloradensis abietinum Asexual? no no no Status (a/n= alien/native) a n a Impact Score 4 4 4 yes yes yes yes yes a a a n a 5 9 8 4 4 Page 29 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Eriococcidae Margarodidae Ortheziidae Cryptococcus Icerya Orthezia Diprion Neodiprion Tenthredinidae Pristiphora Hymenoptera Diprionidae Lepidoptera fagisuga purchasi insignis yes yes yes a a a 5 10 4 pini sertifer erichsonii no no yes a n n 2 2 4 no no no no a n n n 2 3 2 4 no n 4 no no no no no no no no no no no no no no no n n n n a n n n n a n n n n n 1 4 2 8 10 3 3 2 2 5 2 4 2 3 3 cunea pomelaria piniaria fiscellaria fiscellaria Lambdina fiscellaria lugubrosa Operophtera brumata disstria Lasiocampidae Malacosoma neustria parallela Lymantria dispar Lymantriidae Orgyia pseudotsugata Notodontidae Heterocampa guttivita Lochmaeus manteo Thaumetopoea pityocampa Cactoblastis cactorum Pyralidae Acleris gloverana Tortricidae Choristoneura fumiferana lambertiana occidentalis pinus Arctiidae Geometridae Hyphantria Alsophila Bupalus Lambdina Table 2: Description of possible environmental impact categories 1) herbivory on native plants 0 no impact; herbivore not feeding on native plants 1 plant material is removed fitness of native host plants (growth, reproduction) not affected population structure of native host plants unchanged native plant community structure unchanged 2 occasionally reduced fitness of plants (growth, reproduction) population structure of native host plants unchanged native plant community structure unchanged 3 regularly reduced fitness of plants (growth, reproduction) increased mortality of host plants occasionally observed Page 30 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ population structure of native host plants may be affected native plant community structure unchanged 4 fitness of plants (growth, reproduction) is reduced to the extent that population structure is changed or regularly increased mortality of host plants native plant community structure changes, but no species disappeared yet 5 very high mortality of native host plants massive changes in community structure native host plant species disappear native host plant may be replaced by newcomers (invasive plants) 2) plant pest is vector of plant diseases 0 organism is not transferring plant diseases 1 organism transmits disease occasionally, but no consequences for native host plants are known 2 organism transmits disease occasionally disease can affect growth/reproduction of native host plants 3 the transmitted disease regularly affects fitness of native host plants mortality of native host plants occasionally increased 4 mortality of native host plants regularly increased population and community structure may change 5 massively increased mortality of native host plants massive changes in community structure native host plant species disappear native host plant may be replaced by newcomers (invasive plants) 3) plant pest competes with native relative that is not a pest 0 no competition known or observed 1 exploitation competition with native species occasionally observed interference with native competitors occasionally observed 2 exploitation competition or interference with native species is regularly observed, without impact on native species 3 exploitation competition or interference is common and native species population may be negatively affected (increased mortality) Page 31 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 4 exploitation competition or interference is widespread and negative effects on native species population and community is observed (native species displaced) 5 community structure is altered due to exploitation competition or interference between the new pest and native herbivore, native herbivores threatened 4) plant pest promotes predator/parasitoid of native herbivores 0 no impact 1 a native predator is observed to occasionally prey on new plant pest but no effect on predator density 2 predation is common, positive effect on predator density likely 3 predator density increased and higher predator pressure on native herbivore is observed 4 population size of native herbivore species is reduced due to increased predation and plant 5 native herbivore species is being extinguished 5) plant pest affects ecosystem (nutrient cycle, water quality, seed dispersal etc.) 0 no impact found 1 occasional signs that ecosystem processes such as pollination, seed dispersal, nutrient cycles, water purification or decomposition are affected, but no changes in ecosystem functioning observed 2 frequent signs that ecosystem processes such as pollination, seed dispersal, nutrient cycles, water purification or decomposition are affected, but no changes in ecosystem functioning observed (e.g. decomposition rates are changed in patches, soil chemistry slightly changed, but isolated, reduced pollination or seed dispersal is observed, but plant fitness not affected) 3 ecosystem processes are altered to an extent, that occasionally, the ecosystem functions are changed (e.g. changes in nutrient cycles / decomposition reach outside the infested area, but changes are too small to have impacts there; reduced pollination or seed dispersal negatively affects plant fitness) 4 ecosystem processes altered constantly Page 32 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ ecosystems functions are not reliable anymore erosion persistent changes in nutrient cycling 5 disruption of ecosystem processes and services, system collapsing Page 33 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 3: List of species traits considered for the economic impact analysis. The information for each species were retrieved from CPC (www.cabi.org/compendia/cpc/) and Cab Abstracts (www.cabi.org), websites consulted in spring 2009. i) feeding behaviour Host specificity (3 classes) - monophagous = species feeding on hosts of 1 genus - oligophagous = species feeding on hosts of 1 family - polyphagous= species feeding on hosts from more than 1 family Plant part - feeding on vegetative parts of host plant - feeding on reproductive parts of host plant Feeding niche (2 classes) - internal - external Feeding place (2 classes) - above ground feeding - below ground feeding Feeding mode - chewing - sucking ii) population growth capacity Asexual reproduction (yes or no) - Includes all species being capable of asexual reproduction (yes), all other species have exclusively sexual reproduction (no) Fecundity - 1 = less than 200 eggs per female during her lifetime (average) - 2 = equal to, or more than 200 eggs per female during her lifetime (average) Mean number of generations per year in Europe (3 classes) - 1 = one generation per year or less - 2 = more than 1 and up to 3 generations per year - 3 = more than 3 generations per year Longevity of adults (3 classes) - 1 = one month or less - 2 = between 1 and 4 months - 3= more than 4 months Adult size (3 classes) - 1 = smaller than 5 mm - 2 = between 5 an 9,9 mm - 3 = equal to or larger than 10mm Affects photosynthesis (yes or no) - Defoliators (excluding leaf miners and gall makers) and species with a diagnostic record as honeydew producers in CPC are considered to affect the photosynthetic rate of their host plant (yes), all other species are classified as not affecting it (no) iii) pest history Alien elsewhere - A species is classified as being alien elsewhere, if it is recorded as an alien species elsewhere than in Europe (yes), else, it is not considered alien elsewhere (no) Native pest (yes, no, cryptogenic) - A species is considered a pest in its native region, if the area of origin is known and if a Page 34 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ - - search in CAB Abstracts identified at least one publication from the last 40 years describing the species as a pest in its region of origin (yes) If the origin of the species is known and if a search in CAB Abstracts failed to identify a publication from the last 40 years describing the species as a pest in its region of origin, the species is considered to be not a pest in its native region (no) if the origin of a species is not known, the species is classified as cryptogenic Page 35 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 4: Definitions of scoring levels for economic impact of insect plant pests, following method 1. The impact was scored based on the description in the Cab Compendium (www.cabi.org/compendia/cpc/), consulted in spring 2009. The following descriptions were decisive for the categorization: unknown - no study found on economic impact species has no record in CPC 0) - no economic impact observed in a study species has a record in CPC, but no impact record at all 1) minor - is a minor pest in a crop or a region is a minor pest in its native range causes 1% to 5% reduction of yield, weight, etc. did not usually cause severe damage seldom of economic importance little is known on the economic impact of this pest in its indigenous area is not of particular importance may damage has an impact record in CPC, but without description of seriousness or even references with quantifications is a secondary pest 2) medium - can be serious pest > 5% and up to 25% reduction of yield, weight, etc. tree vigour decreased attacks on branches and leaves lead to leaf fall, and possibly to complete dieback only locally damaging substantial losses may occur is an important and common pest, although losses have not been quantified is intermittently injurious is an important secondary pest - > 25% reduction of yield, weight, etc. is a major pest is a serious pest causes significant yield/quality loss is of primary importance among most common and serious pests in the region xx industry cause the most damage loss of large amounts of raw materials is one of the most destructive cerambycid pests causes dieback trees die very toxic to the leaves, twigs, branches and fruit can infest and kill whole trees and plantations serious damage was recorded was recorded devastating orchards, killing even large trees - 3) major Page 36 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ - is an important economic pest is a common and highly injurious pest is a key pest Page 37 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 5: Relationships between economic impact and traits of plant pests using the European database. Given are the error probabilities (p values) for the fixed variable of the models. Values below 0.1 are shown in bold and those with a negative relationship are shown in Italics. Order was included as random variable in the models to account for phylogenetic relationship. Agriculture Forest Orchard Ornamental Storage Overall (n=61) (n=35) (n=79) (n=47) (n=21) (n=176) Host specificity 0.99 0.39 0.35 0.00 0.27 Gregariousness 0.13 0.41 0.66 0.03 0.50 0.87 0.74 0.30 0.39 0.82 0.88 0.96 0.40 0.17 0.84 0.91 0.75 0.64 0.68 0.50 0.57 0.67 0.08 0.53 0.88 Reproductive mode 0.19 0.66 0.83 0.65 0.75 Fecundity 0.14 0.44 0.81 0.04 0.02 0.90 Generation per year 0.80 0.46 0.01 0.03 0.61 0.14 Adult longevity 0.31 0.48 0.99 0.80 0.08 0.40 Adult size 0.18 0.56 0.12 0.50 0.75 0.72 iii) Alien elsewhere 0.05 0.48 0.00 0.00 0.43 0.00 Native Pest 0.77 0.98 0.54 0.59 0.88 0.08 Vector 0.52 0.54 0.67 0.57 0.24 0.41 Photosynthesis affecting 0.09 0.02 0.28 0.01 Trait i) Plant part (vegetative or reproductive) Feeding niche (internal or external) Feeding place (above or below) Feeding mode (sucking or chewing) ii) 0.00 Page 38 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 6. Error probabilities (p values) of species traits obtained in univariate analysis using the database on 100 alien insects in Switzerland. Values below 0.05 are shown in bold. Those with a negative relationship are shown in Italics. Traits with an asterix (*) are significant for all 3 dependant variables. Trait Swiss Websites Dependant variables No. of Swiss No. of world publications publications Asexual 0.450 0.157 0.012 Fecundity 0.006 0.052 <0.001 Generation 0.500 0.042 <0.001 Specificity (*) 0.021 0.041 <0.001 Longevity 0.071 0.030 0.039 FeedingNiche 0.236 <0.001 0.129 Size 0.583 0.874 <0.001 GenusPresent (*) 0.002 0.003 <0.001 InvasiveElsewhere 0.352 0.308 <0.001 <0.001 0.206 <0.001 0.007 <0.001 <0.001 NativePest Vector (*) Table 7: Best fitting model for Swiss Websites, using the database of 100 insects alien in Switerland. Eleven traits were included as fixed factors and then the number of fixed factors was reduced in a stepwise approach, selecting the minimum adequate model by minimising Akaike’s Information Criterion (AIC). Factor Estimate Std. Error z value Pr(>|z|) Intercept 0.051 0.510 0.099 0.921 NativePest 0.425 0.102 4.157 0.000 GenusPresent -0.455 0.150 -3.040 0.002 Vector 0.338 0.156 2.169 0.030 Fecundity 0.278 0.137 2.033 0.042 Page 39 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 8: Best fitting model for Swiss CAB publications, using the database of 100 insects alien in Switzerland. Eleven traits were included as fixed factors and then the number of fixed factors was reduced in a stepwise approach, selecting the minimum adequate model by minimising Akaike’s Information Criterion (AIC) Factor Estimate Intercept -0.202 Vector 1.707 FeedingNiche 0.236 Fecundity -0.436 Longevity -0.285 NativePest -0.271 Size -0.262 Generation -0.191 Std. Error 0.673 0.193 0.068 0.190 0.132 0.137 0.137 0.124 z value -0.301 8.823 3.475 -2.294 -2.166 -1.978 -1.913 -1.536 Pr(>|z|) 0.763 0.000 0.001 0.022 0.030 0.048 0.056 0.125 Table 9: Best fitting model for worldwide CAB publications, using the database of 100 insects alien in Switerland. Eleven 11 traits were included as fixed factors and then the number of fixed factors was reduced in a stepwise approach, selecting the minimum adequate model by minimising Akaike’s Information Criterion (AIC) Factor Estimate Std. Error z value Pr(>|z|) Intercept -4.695 0.379 -12.4 <0.001 <0.001 Asexual -0.215 0.021 -10 <0.001 Fecundity 0.354 0.022 15.76 <0.001 FeedingNiche 0.162 0.009 17.2 <0.001 Generation 0.713 0.016 45.83 <0.001 GenusPresent -0.572 0.022 -25.74 <0.001 InvasiveElsewhere 1.061 0.042 25.44 <0.001 Longevity -0.186 0.014 -13.47 <0.001 NativePest 0.774 0.016 47.14 <0.001 Size 0.725 0.018 39.45 <0.001 Specificity 0.532 0.017 31.4 <0.001 Vector 1.705 0.017 98.32 Page 40 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Plants Introduction Invasive species can threaten biological diversity in various ways; environmental impacts include reducing the species richness of native biota, changing the genetic variation of native populations and altering habitat and ecosystem functioning (Hulme 2007, Vilà et al. 2009). However, despite recently increasing awareness of the necessity to collect better data on impacts and a number of published studies (e.g. Levine et al. 2003, Liao et al. 2007, Hejda et al. 2009, DAISIE 2009), the information on impacts of biological invasions is still rather scarce and so is the understanding of the determining mechanisms. For example Europe has the most up-to-date information on numbers of aliens and their impacts (Vilà et al. 2009). Yet, of the 5,789 plant species alien to this continent registered in the DAISIE database (Lambdon et al. 2008, DAISIE 2008), ecological impacts are only documented for 326 (5.3%) of of these species (Vilà et al. 2009). The present study is based on a review of available data on invasive plants globally and focuses on their ecological and environmental impacts. It aims at quantifying the frequency of significant and non-significant impacts on a number of population, community and ecosystem characteristics at various trophic levels. Further, invasion biology is still at the stage of describing the patterns of impact and mechanisms acting in individual invasions, and little has been known about the effects of underlying factors, including species traits (but see Shirley & Kark 2009). Here we evaluate the effect of species traits of invasive plants in a given environmental and geographical context (e.g., invaded habitat, biome and geographical region). Materials and methods Data Classification of impacts Page 41 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ We screened 296 studies (Appendix 1) addressing impact of invasive plant species. A hierarchical classification of impact was adopted. On the first level, the impact was classified according to the characteristics of the invaded plant and animal populations and communities and their environment into the following groups: (A) impact on plant population and communities in invaded sites; (B) impact on populations and communities of animals associated with the invaded environment; (C) impact on soil characteristics; and (D) impact on disturbance regime (Table 1). On the second level, impact was classified within each of these categories, using a more detailed scheme with 10 characteristics in group (A), seven in (B), nine in (C) and one in (D). These characteristics were further classified as to whether the impact was on populations, communities and ecosystems (Table 1). Only studies in which the effect of invasion on the characteristics addressed was statistically tested were considered, and it was recorded whether the impact of invasion on a given characteristic was non-significant or significant. If multiple characteristics of the invaded community or environment were addressed in a single study (e.g., effect on species richness and diversity), they were all considered as individual cases and included into the analysis. In total, the data set included 1551 individual cases of a statistically tested impact of a plant invasion of which 412 were attributed to (A), 203 to (B), 876 to (C) and 60 to (D). Invasive plant species For each case of invasion, the information on the following traits of invading species was obtained using regional floras, checklists of invasive species, global compendia (e.g., Weber 2003) and internet sources: Taxonomic affiliation (genus, family, subclass, class) Region of origin: Europe (n = 541 cases), Asia (692), North America (207), Central America (67), South America (91), Africa (265), Australasia (95), Pacific region (30), hybrid origin (12) Life form: annual grass (170), perennial grass (285; incl. 4 Cyperaceae), annual herb (256), perennial herb (808, incl. 14 biennial), shrub (347), tree (341), vine (44) Height, taken as an average value of minimum and maximum height (in m; data available for n = 1551 cases) Page 42 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Reproduction: only generative (727), only vegetative (141), both (682) Seed size (in m; n = 907) Defense: presence of thorns, spikes and other mechanical defensive structures (yes=152/no) Toxicity: (yes = 266/no) Nitrogen fixation: (yes = 264/no) Pollination: self (355), wind (640), insect (1125), water (94) Dispersal: wind (695), water (478), endozoochory (422), exozoochory (361), self (80), Breeding: mating partner needed yes (exclusively allogamous, n = 379)/no (apomictic and/or self-compatible, n = 608) Flowering period (in months; n = 1373) For each case of invasion, the following site characteristics were recorded Region invaded (see Fig. 1): Old World (n = 487 cases, including Europe 327, Asia 53, Africa 107) vs. New World (n = 1064, including North America 721, South America 77, Australasia 126, Pacific 140). Biome invaded: temperate (925), mediterranean (302), subtropical (141), tropical (183) Insularity: (yes = 173/no) Habitat invaded: riparian (209, including coastal), arid (23), grassland (657), shrubland (226), woodland (441), rocky (62), anthropogenic (90) The data set included 173 invasive plant species from 51 families (Table 2). In terms of geographical distribution of invaded regions, 47% of cases studied come from North America, 21% from Europe, 9% from islands in Indian and Pacific Ocean, 8% from Australasia, 7% from Africa, 5% from South and Central America and 3% from Asia (Fig. 1). This reflects previously reported geographical biases in invasion ecology (Pyšek et al. 2008) and focus on studies on impact especially in North America (Levine et al. 2003, Vilà et al. 2009). In terms of life forms, there were 30 annual (11.2%), 4 biennial (1.6%) and 146 perennial (54.7%) herbaceous plants, 42 shrubs (15.7%), 39 trees (15.0%) and 5 vines (1.9%) among the species studied. Statistical analysis Impact score (significant or non-significant) was the response variable. To make the effect of individual species in analyses comparable, the impact score for each species was weighted by the number of records of the species in the analysis and by the number of species in a study (if a single study explored the impact of several invasive Page 43 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ species on e.g., native species diversity). Impact type (Level 2: impact on individual characteristics, see Table 1), taxonomic affiliation (genus, family, order, subclass), and species and site characteristics were the explanatory variables. Classification trees were used for the analyses, due to their flexibility and robustness, invariance to monotonic transformations of predictor variables, their ability to use combinations of explanatory variables that are either categorical and/or numeric, ability to deal with nonlinear relationships and high-order interactions, and ability to treat missing data which appeared for some of the explanatory variables (De’ath & Fabricius, 2000). The classification trees were constructed in CART v. 6.0 (Breiman et al. 1984, Steinberg & Colla 1995) by binary recursive partitioning, using the default “Gini” impurity measure as the splitting index. To determine the optimal tree, a sequence of nested trees of decreasing size, each of them being the best of all trees of its size, were constructed, and their resubstitution relative errors were estimated. Ten-fold crossvalidation was used to obtain estimates of cross-validated relative errors of these trees. These estimates were then plotted against tree size, and the optimal tree chosen based on the 1–SE rule, which minimizes cross-validated error within one standard error of the minimum (Breiman et al. 1984). Following De’ath & Fabricius (2000), a series of 50 cross-validations were run, and the modal (most likely) single optimal tree chosen for description. The quality of the chosen tree was evaluated as the overall misclassification rate by comparing the misclassification rate of the optimal tree with misclassification rate of the null model (De’ath & Fabricius 2000), and using crossvalidated samples (Steinberg & Colla 1995) as specificity (i.e. the ability of the model to predict that the impact is not significant when it is not) and sensitivity (the ability of the model to predict that the impact is significant when it is) (Bourg et al. 2005). Because high categorical explanatory variables have higher splitting power than continuous variables, to prevent these variables to have inherent advantage over continuous variables, penalization rules for high category variables (Steinberg & Colla 1997, p. 88) were applied. Similarly, explanatory variables with missing values have advantage as splitters. Consequently, these variables were first penalized in proportion to the degree to which their values were missing, and then treated by backup rules using surrogates that closely mimicked the action of the missing primary splitters (Steinberg & Colla 1997). Page 44 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ The optimal tree was represented graphically, with the root standing for undivided data at the top, and the terminal nodes, describing the most homogeneous groups of data, at the bottom of the hierarchy. The quality of each split was expressed by its improvement value, corresponding to the overall misclassification rate at the node, with high scores of improvement values corresponding to splits of high quality. In graphical representation, vertical depth of each node was expressed as proportional to its improvement value. Vertical depth of each node thus represented a value similar to explained variance in a linear model. Surrogates of each split, describing splitting rules that closely mimicked the action of the primary split, were assessed and ranked according to their association values, with the highest possible value 1.0 corresponding to the surrogate producing exactly the same split as the primary split. Using weighted values, which were expressed for each species as fractions decreasing with increasing number of replicates of the species in the analysis, the minimum size of each terminal node was limited to one. Results and discussion Frequency of significant and non-significant impacts In the majority of cases studied, invasion caused a significant change in the characteristics studied. For pooled data across the 1551 cases, the impact was significant in 982 cases (63.3%) and non-significant in 569 cases (36.7%). In more than one third of cases, invasive plants do not exert significant impact on invaded populations, communities and ecosystems. However, it needs to be borne in mind that a non-significant result does not necessarily mean that there is no impact and can be due to insufficient number of replicates hence a low test power, inappropriate experimental design, etc. The proportion of significant impacts was highest on plants (76.2%), followed by soil (57.8%) and animals (50.2%). The impact of invasive plants on fire regime, which was the only disturbance type for which enough data were available to be analysed, was always significant (Fig. 2). The impact of invasive species is often labeled as “negative” or “positive”. However, this assessment brings about interpretation difficulties. For the effects on native plants Page 45 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ and animals, this is relatively straightforward; reduced values in population and community characteristics (Table 1) imply decreased vigour and population status of affected native biota. However, for soil characteristics, an increase in, e.g. soil nutrients, may not necessarily mean an improved state of the affected ecosystem. For example, in oligotrophic ecosystems increased nutrient status may lead to further invasion (Vitousek et al. 1987, Vitousek & Walker 1989). In the same vein, an increase in the frequency of fires, i.e. the change in the natural fire regime, which often supports the invasive species (D’Antonio & Vitousek 1992), may have a negative effect on ecosystem functioning. Much depends also on the way impacts are measured. Invasive alien species could be considered as increasing biodiversity (since the new species adds to species lists) and invasions rarely lead to extinctions. Impacts can also appear differently depending on perspective. Thus, Impatiens glandulifera has an attractive flower, grows in areas that are already invaded or where native vegetation primarily consists of weeds (Hulme & Bremner, 2005) and provides a copious nectar source for bees. However, it also invades nature reserves, can attract bees away from native flowers (Chittka & Schurkens, 2001) and may enhance erosion of river banks2. Therefore, we refrain from an attempt to classify impacts as “positive” or “negative” and only focus on whether the invasion by alien plants causes a significant impact or not. Nevertheless, all the species studied are considered to be invasive aliens and therefore threaten biological diversity in some way. Ranking of species according to significant impact Using a simple measure of the total number of significant impacts caused by an invading species relative to the total number of cases in which its impact was studied provides a ranking of invasive plant species according to their effect on invaded biota and environment. There were 38 species that were studied frequently enough (at least 10 cases) and their impact was more often significant than not (Fig. 3). All life forms are represented among this group: annual grasses (Aegilops triuncialis, Bromus tectorum), annual herb (Alliaria petiolata), perennial grasses (Typha ×glauca, Cortaderia selloana, Phragmites australis, Hyparrhenia rufa, Elymus junceus, 2 http://www.europe-aliens.org/speciesFactsheet.do?speciesId=17367# Page 46 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Melinis minutiflora, Andropogon bladhii, Agropyron cristatum, Ehrharta calycina), perennial herbs (Lepidium latifolium, Hieracium pilosella, Solidago gigantea, Fallopia sachalinensis, Euphorbia esula, Lythrum salicaria), shrubs (Elaeagnus umbellata, Lonicera maackii, Myrica faya, Lantana camara, Acacia cyclops, Acacia saligna, Tamarix ramosissima) and trees (Acer platanoides, Acacia longifolia, Falcataria mollucana, Sapium sebiferum, Melaleuca quinquenervia, Pseudotsuga menziesii, Ailanthus altissima, Pinus radiata, Robinia pseudacacia). Nevertheless, among the 15 species in which the proportion of negative impacts exceeds 75% of cases studied, woody species prevail, represented by 10 species (Fig. 3). Factors determining the significance of impacts For pooled data (Fig. 4), the invasion was more likely to exert a significant impact on litter decomposition, biomass production of native plants, animals and soil biota, establishment of native plant species, plant community cover, fire frequency and activity of animals; these characteristics were significantly affected in 92.4% of cases (Terminal node 1). The remaining characteristics were significantly impacted in 62.8% of cases and the proportion of significant impacts in this group depended on taxonomy. Plants from the subclasses Commelinidae, Dilleniidae, Hamamelidae, Liliidae, Magnoliidae and Pinopsida had more often a significant effect in the mediteranean biome (Terminal node 2) than in temperate, subtropical and tropical biomes. In the latter biomes, shrubs caused more often a significant impact than other life forms (Terminal nodes 3 and 4). The impact of plants from the subclasses Asteridae, Caryophyllidae, Rosidae and Zingiberidae depended on their height; a significant impact was least likely to occur when invading species was shorter than 4.8 m (45.8% of cases, Terminal node 5) and most likely (94.4%) for those with height between 4.8 and 13.3 m (Terminal nodes 6 and 7). The taxonomic pattern suggests that species from subclasses, some of them evolutionarily advanced (e.g. Asteridae, Rosidae), that were previously reported to include a high proportion of invasive plants (Pyšek 1998) tend to cause significant impacts regardless of environmental settings (biome invaded) and life form, and the Page 47 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ only trait that affects whether or not their impact will be significant is height. Height is a trait closely associated with invasiveness (Pyšek & Richardson 2007) and this study indicates that it is also one of the few affecting the impact. Therefore, the factors driving ability to invade and that to exert impact may not differ. That there is a range of heights, within which the impact of invading plant species is likely to be more often significant, implies that the impact of tree invaders (height of which generally exceeds the threshold of 4.8 m) on some characteristics of invaded systems, namely those related to diversity, is less severe than impact of shrub invaders that supress native species by means of a rapidly built high cover. On the other hand the shrub life form, with majority of representatives within the range of heights with a high likelihood of significant impacts, also determines the significance of impact among the other subclasses in all biomes except the Mediterranean. The nonsignificant effect of life form in the Mediterranean biome can be attributed to a high diversity of native shrubs in this biome which probably results in less effective impact of this life form due to the competition from native vegetation. Conclusions 1. So far impact has been rigorously studied for only a fraction of invasive plant species globally. A previous analysis, based on screening of the Web of Science, identified that there are at least 395 alien plant species, most of them invasive, that were subjects of ecological case studies (Pyšek et al. 2008). Our analysis identified 173 species, i.e. less than a half of that number, for which the impact of invasive plant species was tested. However, the frequency distribution of species with respect to the intensity of research on impact is strongly skewed, with the 21 most intensively studied species (Table 2) accounting for 50% of all cases testing impact on individual characteristics (Table 1). Therefore, our knowledge of how the most invasive plant species affect recipient biota and the invaded environment in target regions results from studies of a limited number of species and may be biased in a similar way as that of the ecology of invasive species in general (Pyšek et al. 2008). Moreover, considering all alien species with a potential to exert impact in invaded regions, the Page 48 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ information is only available for about 5% of such plant species in Europe (Vilà et al. 2009). 2. By considering impacts on various characteristics of invaded communities and ecosystems and different trophic levels, our study shows that an invasive plant species might have a significant impact on some characteristics and non-significant on others. This points to the fact that there is no universal measure of impact and it is crucial how the impact is defined in a concrete study. 3. Invasive plant species differ greatly in the significance of their impacts which is negative in the majority of cases. Nevertheless, among the species exerting negative impacts in more 75% of cases studied, two thirds are woody species. This life form should be therefore paid serious attention in risk-assessment procedures. Among woody species, shrubs and short trees, from evolutionary advanced taxonomic groups, up to ca 13 m tall are most likely to have a significant impact on most characteristics of invaded populations, communities and ecosystems, including native species diversity. 4. Whether the effect of invasive plants is significant or not depends on both species traits (phylogenetic affiliation, life form and plant height) and the invaded environment (biome in which the invasion occurs). Height and life form are traits that are also known to affect invasiveness; although further research is needed to confirm this. Our analysis suggests that traits determining invasiveness may be similar to those determining impact. This has potentially important practical consequences since the determinants of invasiveness have been studied much more intensively so far than those of impact; this is due to the availability of data (which is still rather scarce on impact) and research focus (impacts have only started to be intensively studied recently). If both invasiveness and impact are associated with a similar suite of traits, the body of information available from screening systems addressing invasiveness would be also applicable to impact. Literature Page 49 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Bourg N.A., McShea W.J. & Gill D.E. (2005) Putting a CART before the search: successful habitat prediction for a rare forest herb. Ecology 86: 2793-2804. Breiman L., Friedman J.H., Olshen R.A. & Stone C.G. (1984) Classification and regression trees. Wadsworth International Group, Belmont, California. Chittka, L., Schurkens, S. (2001) Succesful Invasion of a Floral Market - An Exotic Plant Has Moved in on Europe’s River Banks by Bribing Pollinators. Nature 411:653-653 DAISIE (2009): Handbook of alien species in Europe. Springer, Berlin D’Antonio C.M. & Vitousek P.M. (1992) Biological invasions by exotic grasses, the grass fire cycle, and global change. Annual Review of Ecology and Systematics 23: 63–87. De’ath G. &. Fabricius E. (2000) Classification and regression trees: a powerful yet simple technique for ecological data analysis. Ecology 81: 3178–3192. Hejda M., Pyšek P. & Jarošík V. (2009) Impact of invasive plants on the species richness, diversity and composition of invaded communities. Journal of Ecology 97: 393–403. Hulme P.E. (2007) Biological invasions in Europe: drivers, pressures, states, impacts and responses. In: Hester R. & Harrison R.M, (Eds), Biodiversity under threat, p. 56–80, Cambridge University Press. Cambridge. Hulme P, Bremner ET (2005) Assessing the impact of Impatiens glandulifera on riparian habitats: partitioning diversity components following species removal. Journal of Applied Ecology 43:43-50 Lambdon P. W., Pyšek P., Basnou C., Hejda M., Arianoutsou M., Essl F., Jarošík V., Pergl J., Winter M., Anastasiu P., Andriopoulos P., Bazos I., Brundu G., CelestiGrapow L., Chassot P., Delipetrou P., Josefsson M., Kark S., Klotz S., Kokkoris Y., Kühn I., Marchante H., Perglová I., Pino J., Vila M., Zikos A., Roy D. & Hulme P. E. (2008) Alien flora of Europe: species diversity, temporal trends, geographical patterns and research needs. Preslia 80: 101–149. Levine J.M., Vilà M., D’Antonio C.M., Dukes J.S., Grigulis K. & Lavorel S. (2003) Mechanisms underlying the impacts of exotic plant invasions. Proceedings of the Royal Society London B, 270: 775–781. Liao C., Peng R., Luo Y., Zhou X., Wu X., Fang C., Chen J. & Li B. (2007) Altered ecosystem carbon and nitrogen cycles by plant invasion: a meta-analysis. New Phytol 177: 706–14. Pyšek P. (1998) Is there a taxonomic pattern to plant invasions? Oikos 82: 282–294. Pyšek P. & Richardson D. M. (2007) Traits associated with invasiveness in alien plants: Where do we stand? In: Nentwig W. (ed.), Biological invasions, Ecological Studies 193, p. 97–125, Springer-Verlag, Berlin & Heidelberg. Pyšek P., Richardson D. M., Pergl J., Jarošík V., Sixtová Z. & Weber E. (2008) Geographical and taxonomic biases in invasion ecology. Trends in Ecology and Evolution 23: 237–244. Shirley S.M. & Kark S. (2009) The role of species traits and taxonomic patterns in alien bird impacts. Global Ecology and Biogeography 18: 450-459. Steinberg G. & Colla P. (1995) CART: Tree-structured non-parametric data analysis. Salford Systems, San Diego. Page 50 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Steinberg G. & Colla P. (1997) CART: Classification and regression trees. Salford Systems, San Diego. Vilà M., Basnou C., Pyšek P., Josefsson M., Genovesi P., Gollasch S., Nentwig W., Olenin S., Roques A., Roy D., Hulme P. E. & DAISIE partners (2009) How well do we understand the impacts of alien species on ecological services? A pan-European cross-taxa assessment. Frontiers in Ecology and the Environment, doi 10.1890/080083 Vitousek P.M., Walker L.R., Whitaker L.D., Mueller-Dombois D. & Matson P.A. (1987) Biological invasion by Myrica faya alters ecosystem development in Hawaii. Science 238: 802–804. Vitousek P.M. & Walker L.R. (1989) Biological invasion by Myrica faya in Hawaii: plant demography, nitrogen fixation, ecosystem effects. Ecological Monographs 59:247–265. Page 51 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Tables and figures Table 1. Overview of characteristics on which the impact of invasive plants was addressed in the 296 studies considered. Four groups of impact: (A) on native plants, (B) animals associated with invaded vegetation, (C) soil characteristics and (D) disturbance regime, were considered. The activity of native animals includes e.g., nesting activities, pollinator visits etc. Impacted characteristic Abundance of native biota Species richness of native biota Species diversity of native biota Productivity of native biota Community cover Fecundity of native biota Seedling establishment Mortality/survival of native biota Contents of minerals in plant tissues Nutrient contents in plant tissues Mineral contents of soil Activity of native animals Water contents in soil Nutrient content in soil pH Rate of litter decomposition Frequency of fires A. Plants 15 95 65 105 27 20 16 9 36 24 B. animals 85 37 25 10 C. Soil 31 9 4 45 D. Disturbance 8 20 242 18 22 436 62 25 60 Page 52 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 2. List of invasive plant species that were studied with respect to impact. The numbers (N) indicate total number of cases in which the impact on various characteristics was studied, separated into significant and non-significant results; multiple characteristics in a study were considered as cases. Species are ranked according to the decreasing number of cases studied. Species Bromus tectorum Fallopia japonica Acacia saligna Solidago gigantea Chrysanthemoides monilifera Heracleum mantegazzianum Phragmites australis Lythrum salicaria Agropyron cristatum Robinia pseudoacacia Falcataria molluccana Euphorbia esula Hieracium pilosella Melinis minutiflora Tamarix ramosissima Impatiens glandulifera Pelargonium capitatum Prunus serotina Mesembryanthemum crystallinum Lepidium latifolium Eleagnus umbellata Hyparrhenia rufa Lonicera maackii Rosa rugosa Aegilops triuncialis Melaleuca quinquenervia Pinus radiata Acer platanoides Centaurea maculosa Elymus junceus Acacia cyclops Acacia longifolia Ailanthus altissima Andropogon bladhii Lantana camara Myrica faya Spartina anglica Tradescantia fluminensis Cytisus scoparius Ehrharta calycina Mimosa pigra Pseudotsuga menziesii Typha x glauca Alliaria petiolata Fallopia sachalinensis Poa pratensis Family Poaceae Polygonaceae Mimosaceae Asteraceae Asteraceae Apiaceae Poaceae Lythraceae Poaceae Fabaceae Fabaceae Euphorbiaceae Asteraceae Poaceae Tamaricaceae Balsaminaceae Geraniaceae Rosaceae Aizoaceae Brassicaceae Elaeagnaceae Poaceae Caprifoliaceae Rosaceae Poaceae Myrtaceae Pinaceae Sapindaceae Asteraceae Poaceae Mimosaceae Mimosaceae Simaroubaceae Poaceae Verbenaceae Myricaceae Poaceae Commelinaceae Fabaceae Poaceae Mimosaceae Pinaceae Typhaceae Brassicaceae Polygonaceae Poaceae Life form an per shr tree per shr per per per per tree tree per per per shr an shr shr tree an per per shr tree per shr vine shr an tree tree tree per per shr tree tree tree per shr shr tree per per shr per shr vine tree per an per per per N Significant Non-significant 118 76 42 94 38 56 62 35 27 56 35 21 37 15 22 36 6 30 36 26 10 34 17 17 32 17 15 32 17 15 30 25 5 25 13 12 25 23 2 25 14 11 25 14 11 21 10 11 20 8 12 20 8 12 19 7 12 18 18 0 17 17 0 17 12 5 17 15 2 16 1 15 15 14 1 15 11 4 15 9 6 14 13 1 14 9 5 14 9 5 13 10 3 13 12 1 13 8 5 13 8 5 13 11 2 13 11 2 13 6 7 13 7 6 12 11 1 12 6 6 12 5 7 12 8 4 12 12 0 11 7 4 11 6 5 11 4 7 Page 53 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Sapium sebiferum Ageratina adenophora Cortaderia selloana Delairea odorata Chromolaena odorata Lupinus luteus Microstegium vimineum Pennisetum setaceum Berberis thunbergii Mikania micrantha Mimulus guttatus Oxalis pes-caprae Senecio jacobaea Spartina alternifolia Bromus inermis Elymus athericus Hedychium gardnerianum Rhamnus cathartica Solidago canadensis Agropyron repens Arundo donax Carpobrotus edulis Fraxinus uhdei Hymenachne amplexicaulis Melilotus alba Melilotus officinalis Orbea variegata Pennisetum polystachion Phragmites communis Pinus sylvestris Schizachyrium condensahtm Agrostis stolonifera Bromus japonicus Cenchrus ciliaris Fallopia ×bohemica Lupinus polyphyllus Populus tremuloides Brassica nigra Carex kobomugi Centaurea diffusa Cinchona pubescens Lespedeza cuneata Lolium multiflorum Lonicera japonica Lupinus arboreus Morella cerifera Phalaris arundinacea Pinus caribaea Prosopis glandulosa Taraxacum officinale Agave americana Euphorbiaceae Asteraceae Poaceae Asteraceae Asteraceae Fabaceae Poaceae Poaceae Berberidaceae Asteraceae Scrophulariaceae s. l. Oxalidaceae Asteraceae Poaceae Poaceae Poaceae Zingiberaceae Rhamnaceae Asteraceae Poaceae Poaceae Aizoaceae Oleaceae Poaceae Fabaceae Fabaceae Asclepiadaceae Poaceae Poaceae Pinaceae Poaceae Poaceae Poaceae Poaceae Polygonaceae Fabaceae Salicaceae Brassicaceae Cyperaceae Asteraceae Rubiaceae Fabaceae Poaceae Caprifoliaceae Fabaceae Myricaceae Poaceae Pinaceae Fabaceae Asteraceae Agavaceae tree shr per per vine shr an an per shr per per per per per per per per shr per per per per tree per an bi an bi per an per per tree per per an per per per tree an per an tree per an per shr vine shr shr tree per tree shr per shr 11 10 10 9 9 9 9 9 8 8 8 8 8 8 7 7 7 7 7 6 6 6 6 6 6 6 6 6 6 6 6 5 5 5 5 5 5 4 4 4 4 4 4 4 4 4 4 4 4 4 3 9 7 8 9 6 2 8 8 6 6 3 5 1 7 7 6 2 4 3 4 6 6 6 3 4 4 4 5 5 3 5 5 4 5 5 2 3 4 3 0 4 4 3 4 1 4 2 4 4 2 2 2 3 2 0 3 7 1 1 2 2 5 3 7 1 0 1 5 3 4 2 0 0 0 3 2 2 2 1 1 3 1 0 1 0 0 3 2 0 1 4 0 0 1 0 3 0 2 0 0 2 1 Page 54 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Andropogon virginicus Juniperus pinchotii Koelreuteria elegans Lavatera arborea Lonicera tatarica Panicum maximum Pinus contorta Plantago lanceolata Rhamnus frangula Ulex europaeus Ammophila arenaria Andropogon guayanus Aster novi-belgii Bromus diandrus Bromus madritensis Bromus rubens Carpinus betulus Carpobrotus affine Castanea crenata Centaurea solstitialis Cinnamomum verum Cortaderia jubata Eragrostis lehmanniana Festuca arundinacea Hedera helix Helianthus tuberosus Hordeum marinum gussonearum Imperata cylindrica Imperatoria ostruthium Leucaena leucocephala Ligustrum lucidum Ligustrum sinense Opuntia stricta Pittosporum undulatum Prosopis velutina Pyracantha angustifolia Quercus acutissima Rosa mutliflora Rubus discolor Rudbeckia laciniata Rumex alpinus Salix x rubens Schinus molle Schismus barbatus Urochloa mutica Anthoxanthum odoratum Anthriscus caucalis Asparagus asparagoides Avena barbata Azorella monatha Brachiaria mutica Poaceae Juniperaceae Sapindaceae Malvaceae Caprifoliaceae Poaceae Pinaceae Plantaginaceae Rhamnaceae Fabaceae Poaceae Poaceae Asteraceae Poaceae Poaceae Poaceae Fagaceae Aizoaceae Fagaceae Asteraceae Lauraceae Poaceae Poaceae Poaceae Araliaceae Asteraceae Poaceae Poaceae Apiaceae Mimosaceae Oleaceae Oleaceae Cactaceae Pittosporaceae Fabaceae Rosaceae Fagaceae Rosaceae Rosaceae Asteraceae Polygonaceae Salicaceae Anacardiaceae Poaceae Poaceae Poaceae Apiaceae Liliaceae Poaceae Apiaceae Poaceae per shr tree tree shr shr per tree per shr shr per per per an an an tree per tree an shr tree per per per shr vine per an per per tree shr tree tree shr shr tree tree shr tree tree shr shr per per shr tree tree an per shr an shr an shr per 3 3 3 3 3 3 3 3 3 3 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 2 1 1 1 1 1 1 3 3 2 3 2 3 1 3 1 3 2 2 1 2 2 2 2 1 1 1 1 2 2 2 0 1 2 2 1 2 2 0 1 2 2 0 1 1 2 1 2 2 2 2 0 1 1 1 1 0 1 0 0 1 0 1 0 2 0 2 0 0 0 1 0 0 0 0 1 1 1 1 0 0 0 2 1 0 0 1 0 0 2 1 0 0 2 1 1 0 1 0 0 0 0 2 0 0 0 0 1 0 Page 55 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Bromus hordeaceus Carduus nutans Centaurea melitensis Cryptomeria japonica Cynara cardunculus Dipsacus sylvestris Erodium cicutarium Hakea sericea Holcus lanatus Hypochoeris glabra Lolium perenne Medicago polymorpha Myriophyllum spicatum Pennisetum clandestinum Phacelia tanacetifolia Pinus halepensis Poa annua Psidium catleianum Salsola kali Schinus terebinthifolius Stachytartheta jamaicensis Tainiatherum asperum Teline monspessulana Trifolium pratense Vincetoxicum rossicum Poaceae Asteraceae Asteraceae Taxodiaceae Asteraceae Dipsacaceae Geraniaceae Proteaceae Poaceae Asteraceae Poaceae Fabaceae Haloragaceae Poaceae Hydrophyllaceae Pinaceae Poaceae Myrtaceae Chenopodiaceae Anacardiaceae Verbenaceae Poaceae Fabaceae Fabaceae Asclepiadaceae an bi an tree per bi an shr per per per an per per an tree an per shr tree an shr tree shr an shr per per 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 1 0 1 1 1 1 1 1 1 1 1 1 1 1 1 0 1 1 1 1 1 1 0 0 0 0 1 0 0 0 0 0 0 0 0 0 0 0 0 0 1 0 0 0 0 0 0 Page 56 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ North America (721) 5% 3% Europe (327) Pacific islands (140) 7% Australasia (126) Africa (107) 8% South and Central America (77) Asia (53) 9% 47% 21% Fig. 1. Geographical distribution of primary studies addressing the impact of invasive plants. Number of cases (referring to test of impact on individual characteristics, with multiple characteristics all considered; total n = 1551) is given in parentheses. Page 57 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 120 Significant 100 Percentage of cases Non-significant 80 60 40 20 0 A. Plants B. Animals C. Soil D. Disturbance Fig. 2. Frequency of significant and non-significant impacts as recorded in studies focused on the impact of invasive plants on (A) native plants and vegetation, (B) native animals associated with invaded vegetation, (C) soil characteristics and (D) disturbance regime. Page 58 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Typha x glauca Eleagnus umbellata Lepidium latifolium Aegilops triuncialis Acer platanoides Acacia longifolia Hieracium pilosella Cytisus scoparius Lonicera maackii Myrica faya Lantana camara Falcataria molluccana Sapium sebiferum Cortaderia selloana Acacia cyclops Melaleuca quinquenervia Phragmites australis Hyparrhenia rufa Ageratina adenophora Pseudotsuga menziesii Bromus tectorum Elymus junceus Centaurea maculosa Alliaria petiolata Solidago gigantea Andropogon bladhii Ailanthus altissima Pinus radiata Acacia saligna Tamarix ramosissima Melinis minutiflora Fallopia sachalinensis Tradescantia fluminensis Robinia pseudoacacia Agropyron cristatum Euphorbia esula Ehrharta calycina Lythrum salicaria 0,0 10,0 20,0 30,0 40,0 50,0 60,0 70,0 80,0 90,0 Percentage of cases with significant impact Page 59 of 80 100,0 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Fig. 3. Species with the highest proportions of significant impacts recorded among all cases in which the impact of a given species was studied. Only species with at least 10 cases were considered (see Table 2 for complete data). Page 60 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ significant 73.1 n.s. 26.9 N = 1551 40 1.0 0.9 35 0.8 30 0.7 25 0.6 20 0.5 0.4 15 0.3 10 0.2 5 0.1 0 Commelinidae Dilleniidae Hamamelidae Liliidae Magnoliidae Pinopsida Terminal node 1 Class % significant 92.4 n.s. 7.6 N = 306 subtrop temperate tropical BIOME INVADED Class % mediteranean Terminal node 2 Class % significant 73.9 n.s. 26.1 N = 512 LIFE FORM Class % shrub significant 88.5 n.s. 11.5 N = 93 Cross-validation relative error IMPACT TYPE 2 Class % abundance diversity fecundity mineral moisture mortality/survival nutrients pH richness Frequency of tree activity of animals plant cover establishment frequency of fires litter decomposition biomass production 0.0 1 2 5 7 10 Size of tree SUBCLASS Class % significant 62.8 n.s. 37.2 N = 1245 Asteridae Caryophyllidae Rosidae Zingiberidae PLANT HEIGHT Class % annual grass perennial grass annual herb perrenial herb vine tree significant 69.1 n.s. 30.9 N = 419 <= 4.8 m Terminal node 5 Class % significant 45.8 n.s. 54.2 N = 564 Terminal node 3 Class % Terminal node 4 Class % significant 88.2 n.s. 11.8 N = 41 significant 63.8 n.s. 36.2 N = 378 > 4.8 m significant 54.7 n.s. 45.3 N = 733 PLANT HEIGHT Class % <= 13.3 m significant 75.4 n.s. 24.6 N = 179 > 13.3 m Terminal node 6 Class % Terminal node 7 Class % significant 94.4 n.s. 5.6 N= 64 significant 60.4 n.s. 39.6 N = 115 Fig. 4. Classification tree analysis of the common probability of significant ■ or nonsignificant □ impacts on plants, animals, soil and disturbance. Each node (polygonal table with splitting variable name) and terminal node with node number shows table with columns for the type of impact (significant or non-significant), the number of cases weighted by the number of records of each species in the analysis and % of these cases for each class. Below the table is the total number of cases (N, unweighted) and graphical representation of the percentage of significant and nonsignificant cases in each class (horizontal bar based on weighted numbers). Except the root node standing for undivided data at the top, there is splitting variable name and split criterion above each node. Vertical depth of each node is proportional to its improvement value that corresponds to explained variance at the node. Overall misclassification rate of the optimal tree is 30.4%, compared to 50% for the null model; specificity (ability to predict that the impact is not significant when it is not) = 0.772; sensitivity (ability to predict that the impact is significant when it is) = 0.61. Inset: Cross-validation processes for the selection of the optimal regression tree. The line shows a single representative 10-fold cross-validation of the most frequent (modal) optimal tree with standard error (SE) estimate of each tree size. Bar charts are the numbers of the optimal trees of each size (Frequency of tree) selected from a series of 50 cross-validations based on the 1–SE rule which minimizes the crossvalidated error within one standard error of the minimum. The most frequent (modal) tree has 7 terminal nodes. Page 61 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Pathogens Introduction Relating traits to invasion success has been an important and much debated issue in invasion ecology, with many studies dealing with plants and animals (Hayes & Barry 2008). The underlying hypothesis is that each invasion is not idiosyncratic, resulting from the complex interactions of the invading species, the recipient community, the environment and historic factors, but that some general patterns can be found. This scientific approach could find useful applications in risk analyses and management by focusing efforts on the most threatening species and the most vulnerable communities. However, this question has not yet been explored for plant pathogens in general and fungi in particular. As emphasised by Hayes & Barry (2008), very few studies have quantitatively correlated invasion success through accidental introductions because unbiased reports of successful and unsuccessful alien species, necessary for statistical analysis, are generally unavailable. Our study focused on pathogenic fungi (and pseudo-fungi) of forest trees in Europe. Our aim was (i) to identify the traits that most accurately explained the invasiveness, from entry to spread and impact; (ii) to identify the traits of the invasive species with high impact and (iii) to study our capabilities to predict the success of invasion and high impact from these traits. Only direct ecological impacts (i.e. effects of pathogen species on the growth and mortality host plants) were considered in detail in this study because the economic impact of invasive pathogen species also depends on the economic and social significance of host plants and thus cannot be so easily related to species traits. Material and Methods 1. Data set a. Species Comparing the traits of native versus invasive species is of limited interest since differences are likely to be attributable to biogeography and not only to invasion ecology. The use of native species as a control group is even less relevant for plant Page 62 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ pathogens than for other groups because, in this case, the invasion process, and especially impact, is affected by intertrophic interactions (host-parasite) rather than competitive interactions with species at the same trophic level. For this reason, only alien species to Europe showing varying degrees of invasion success were included in our analyses. This inevitably led to a rather small data set, including missing data. The data set previously built in DAISIE provided a first list of exotic forest pathogenic fungi and pseudo-fungi (Desprez-Loustau 2009, Desprez-Loustau et al 2009). However, most of the species in this list had a relatively high invasion success. The difficulty was to complete this list and select a control group of non invasive species with a sufficient sample size. We explored several different sources (EPPO, especially interception data sets, Plant Protection services, literature data bases) to try to obtain the most complete set of species that are alien to Europe and have been reported at least once. This made a total of 47 species, 40 true fungi (i.e. belonging to the Eumycota kingdom) and 7 Phytophthora species (belonging to Oomycota, in the Stramenopila kingdom). The latter were included although Oomycota are not closely related to Eumycota in the phylogenetic tree (cf Figure 1), since Phytophthora were long considered as fungi because of strong morphological, biological and ecological convergence (filamentous mycelium, production of spores, pathogenicity to plants, etc…). 1.2 Variables 1.2.1 Response variables We first defined two groups: invasive vs. non invasive. Since this depends on the interpretation of the term “invasive”, we used the following approach. Invasion success can be viewed as the successful transition between successive stages, from introduction, to establishment, spread and impact. The extent of spread of the different species was assessed from data collected in Daisie (number of countries in Europe, number of regions in France) and completed by new data. The level of ecological and economic impacts were estimated by two independent experts, with five and four levels of classification, respectively (cf table 1). Seven different classes related to the invasion stages were then defined and we ranked the 47 species with this Page 63 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ classification (Table 2). Finally, “non invasive species” were defined as those in classes 1 and 2, i.e. not established in natural habitats (20 species). “Invasive species” were considered to be those in classes 3 to 7. Table 1: Assessment of impacts 0 1 2 3 4 0 1 2 3 Ecological impact no impact: species only intercepted very low impact: species not in natural habitat and not found on indigenous tree species low impact: pathogenic on indigenous tree species but mainly affecting growth high impact: infection leading to mortality of indigenous species very high impact: high mortality of indigenous tree species, affecting population structure nb species 5 8 24 9 1 Economic impact No impact negligible impact low or medium impact: low estimated production losses high impact: high estimated losses due to host mortality or growth loss, justifying costly control measures (e.g. chemical or biological control) 5 22 12 8 Table 2: Classification of fungal pathogenic species into stages of invasion Class Invasion stage 1 2 Introduced, non established (interceptions) Introduced, no established populations in natural habitats (only anthropogenic habitats such as nurseries) Introduced, established locally, significant local ecological impact introduced, widely spread, low ecological impact Introduced, widely spread, low ecological but significant economic impact Introduced, widely spread, high ecological and medium to high economic impact Cryptogenic (alien or emerging) species, spread and with high ecological impact 3 4 5 6 7 Impact (ecol. – econ.) 0;0 1-2 ; 1-2 nb Status species 5 Non invasive 15 2; 1-3 3 2;1 8 2;2-3 6 3-4;2-3 8 3;2-3 2 Invasive with high impact Page 64 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ A second division was made according to impact. “Species with high ecological impact” were those in classes 6 and 7 in table 2, i.e. in classes 3-4 of ecological impact in table 2. They were compared to species with no or low impact, i.e. in classes 1 to 5 in table 2. Economic impact was very difficult to assess in the absence of available data on crop losses, cost analyses, etc. In addition, economic impact is strongly related to the economic importance of the host species, i.e. high economic impacts were estimated for pathogen species having medium to high ecological impacts and affecting host species of high economic value, such as pines, oaks, chestnut and poplars. Conversely, some pathogen species with high ecological impact were rated with only medium economic impact because their host species were considered less economically important (e.g. ash, cypress). For these reasons, the analysis of fungal traits related to economic impact per se was not considered as relevant. But economic impact is partly taken into account by considering ecological impact since half of species rated with high ecological impact were also rated with high economic impact, and the second half with medium economic impact. More generally, there is a significant association between ecological and economic impact (Chi2= 16.53, df=2, proba= 0.0003; Table 3) Table 3: Co-distribution of ecological and economic impact for the 47 alien pathogen species Ecological impact 0 1 2 3 4 Economic impact 0 1 5 7 15 2 3 1 6 4 3 5 1 Page 65 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 1.2.2 Species traits and other explanatory variables Species traits that might be involved in the successful completion of each stage in the invasion process were considered as potential explanatory variables and documented as far as possible according to available data (CABI databases, especially the Crop Protection Compendium (CABI, 2009), Viennot-Bourgin 1949, Lanier et al 1976, Sinclair and Lyon 2005). These traits relate to spore characteristics (affecting dispersal and survival), mode of dispersal, reproduction, life-cycle, parasitic strategy and abiotic constraints (19 variables, table 4). Only the life-cycle and abiotic constraints, which affect the capacity for population growth, and parasitic strategy, which affects the severity of disease, were considered as factors contributing to the likelihood of high impacts being caused (10 variables). Previous analyses of species correlates for invasive success have shown that several factors can potentially be important sources of bias, especially phylogeny, residence time and propagule pressure (Hayes and Barry 2008). Phylogeny did not bias our sample, since invasive species (belonging to classes 3-7) and non invasive species (in classes 1-2) were equally represented in most taxonomical groups (Figure 1). Residence time was accounted for by using the date of first observation (as a proxy for the date of introduction) of each species in Europe as an adjustment variable. No data were available for propagule pressure, but in the case of unintentional introductions, such as pathogens, propagule pressure could generally be explained by historic and economic factors (the amount and type of commodities introduced, duration of travel, etc) which are partly accounted for by the date of introduction. Page 66 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 4: Explanatory variables for the probability of being invasive Traits Variables Type mitospore characteristics medium size = volume between 250 and 2500 L3 class (yes/no) Small size = volume <250 L3 shape: L/l mitospore ratio <3 mitospore coloured class (yes/no) class (yes/no) class (yes/no) class (yes/no) pluri cellular Nb missing data 0 0 0 0 Références Transport and deposition of spores, like any other particle, is Niklas KJ controlled by size, weight, shape and surface morphology"; small spores could be an advantage for dispersal (e.g. number of spores carried by rain drops) but with a reduced survival : possible trade-off for spore size Cf previous statement ; smaller spores could be favoured if dispersal is the predominant process for active ejection of ascopospores, an optimal value < 3 was Roper et al 2008 demonstrated coloured spores would have better survival due to resistance to UV radiation diploid class 0 (yes/no) pluri-cellular spores would have a better fitness, with one cell possibly surviving while the other has died (e.g. survival to radiations) general assumption of a positive correlation between fitness and ploidy level dispersal existence of a mode of long-distance dispersal class 0 (yes/no) spores can be dispersed either over a short distance (rain-splashing) or long-distance (air, insects, rivers); the latter is more favourable to spread sexual reproduction existing class 0 (yes/no) class 10 (yes/no) quantita 5 tive favouring evolutive potential selfing possible life-cycle parasitic strategy latency duration 0 Biological hypothesis polycyclic class 3 (yes/no) Non biotroph class 0 (yes/no) class 0 (yes/no) class 0 (yes/no) Non heteroxenic generalist (host range including several families) infection of perennial class 0 tissues (bark-wood) vs. (yes/no) only expendable parts (leaves and twigs) infection of seeds class 0 (yes/no) endophytism class 4 (yes/no) Abiotic constraints Confounding variables Fairand 2001, Sommer et al 1964 Nuismer & Otto 2004 favours sexual reproduction the latency corresponds to the generation duration = time from spore Pringle & Taylor infection to the production of secondary spores; the shortest, the 2002 highest the multiplication rate and population growth species completing several cycles within a year ; cf closely related previous variable biotroph pathogens need a living host throughout their cycle; this may be a constraint for establishment and survival heteroxenic pathogens need two different host species to complete their life-cycle (only in Pucciniales = rust fungi); this may be a constraint for establishment and survival generalists are generally considered as better candidates for Marvier et al 2004 invasion than specialists, because of more opportunities of a favourable habitat; this applies mainly for establishment; however generalist species might be less competitive than specialist ones this will affect many processes: transport (plants, wood), dispersal, Sinclair et al 2005 survival, etc… could favour transport (non symptomatic infected material) as seeds (endophytic pathogen develop asymtomatically in host tissues) optimal temperature growth comprised between 20 and 25°C class 12 (yes/no) species with optimal growth temperature in this range would find favourable condiitons in the major part of Europe; while cooler or warmer optima would correspond to sub-boreal and Mediterranean species with a narrower potential geographic range temperate climate in the area of origin class 14 (yes/no) climate-matching between europe and the area of origin could favour establishment date of introduction quantita 0 tive the earlier the introduction, the longer the time for establishment and spreading surface occupied by host species (> 200 000 Ha in France) class 0 (yes/no) higher host occurrence would favour establishment and transmission Caley et al 2008 Page 67 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Figure 1 : Location of the species studied in the phylogenetic tree of fungi and pseudo-fungi (Stramenopiles) (from James et al 2006). Invasive species with high ecological impact are indicated in red. The category “non-invasive” includes those species that have yet to become clearly invasive. "Invasive" "Non invasive" Discula destructiva, Phomopsis juniperivora, Stegophora ulmea Hypocreales Apiognomonia veneta, Cryphonectria parasitica , Gnomonia leptostyla Seiridium cardinale , Entoleuca mammata Gibberella circinata Microascales Ceratocystis platani Ophiostomatales Ophiostoma novo-ulmi , Ophiostoma ulmi Erysiphe alphitoides , Erysiphe flexuosa, Erysiphe platani, Erysiphe vanbruntiana var. sambuci-racemosae Ceratocystis populicola, Ceratocystis virescens, Chalara populi Diaporthales Sordariomycetes Leotiomycetes Xylariales Erysiphales Eutypella parasitica Erysiphe arcuata Blumeriella jaapii, Chalara fraxinea , Drepanopeziza punctiformis, Rhabdocline pseudotsugae Didymascella thujina, Neofabraea populi, Septotis podophyllina Botryosphaeriales Diplodia pinea Dothideales Phaeocryptopus gaeumannii Diplodia scrobiculata, Lasiodiplodia theobromae Kabatina thujae Capnodiales Dothistroma pini, Mycosphaerella pini, Mycosphaerella dearnessii Helotiales Lecanomycetes Eurotiomycetes Lichinomycetes ASCOMYCOTA Dothideomycetes Phloeospora robiniae Sphaceloma murrayae Myriangiales Arthoniomycetes Pezizomycetes Orbiliomycetes Saccharomycotina Taphrinomycotina BASIDIOMYCOTA Agaromycotina Ustilagomycotina Pucciniomycotina FUNGI Pucciniales Cronartium ribicola, Melampsoridium hiratsukanum Gymnosporangium asiaticum, Melampsora medusae Peronosporales Phytophthora alni , Phytophthora cambivora , Phytophthora cinnamomi, Phytophthora citricola Phytophthora kernoviae, Phytophthora lateralis, Phytophthora ramorum Glomeromycota Zygomycota Chytridiomycota Metazoa Stramenopiles Rhodophyta Viridiplantae Page 68 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 2. Statistical analyses The general principle employed was to estimate how the probability of invasion success or high ecological impact responds in relation to the explanatory variables. Several different statistical techniques are available to treat this question, but their appropriateness depends on the dataset characteristics, the most important, in our case, being the number of observations and the missing data. General linear models (GLM) have been widely used to identify relevant species traits, especially logistic regression. They allow all variables (including confounding variables) to be modelled jointly and to provide results that can be clearly interpreted. However, they cannot cope with missing data, are not well adapted to analyze a large number of categorical explanatory variables. In addition, the complexity of models has to be controlled to avoid over fitting in the case of small data sets, precluding in our case the inclusion of interactions between variables. In this study, two types of logistic regression models were implemented: models using procedures of variable selection and models using mixing techniques. In the first case, explanatory variables were selected using two criteria, namely AIC or BIC. In the second case, all possible models were fitted to the data, weighted, and then mixed. Two model mixing methods were used, Bayesian Model Averaging (Raftery and al., 1997) and AIC-based mixing (Burnham and Anderson, 2002). Regression tree techniques do not have the same limitations as GLM and can map the response surface more flexibly with respect to the explanatory variables, especially taking interactions into account (Hayes & Barry 2008). CART (Breiman et al., 1984) has been the most widely used regression tree technique in ecology. A CART tree is built by the following process: first the single variable is found which best splits the data into two groups, possibly using different criteria (here, the Gini criterion). The data are then separated, and this process is applied separately to each sub-group, and so on recursively until no improvement can be made. The second stage of the procedure consists of using cross-validation to trim back the full tree (Therneau and Atkinson, 1997). CART trees provide an easy-to-interpret diagram showing the Page 69 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ splitting rules associated with the selected predictors. However, the robustness of CART trees can be put into question, especially with small samples. In this study, a more recent technique named Random Forest (RF) (Breiman, 1996, 2001) was implemented to deal with this issue. RF includes re-sampling steps of both variables and observations, therefore allowing more robust results. With RF, the best split is determined using a subset of randomly chosen predictors and a bootstrap sample of data (Liaw and Wiener, 2002). In this study, CART and RF were used to identify and rank the traits associated with invasiveness and high impact from the full dataset including missing data. The three methods (GLM, CART and RF) were then compared for their predictive performance, using three criteria: overall error of prediction, specificity (i.e. the ability of a model to predict that a species is not invasive when it is not), and sensitivity (i.e. the ability of a model to predict that a species is invasive when it is). All analyses were performed on the complete data set (Eumycota and Oomycota) and on the Eumycota alone. Results 1. Correlates of invasive success and ecological impact from RF and CART analyses 1.1 Invasive success Results are given in table 5 and figure 2. For the complete data set (Eumycota + Phytophthora spp), the importance of the two confounding variables was confirmed, especially for the date of introduction which was ranked first. However, the results in the analyses with or without confounding variables were highly consistent, with a correlation coefficient of 0.80 for the ranks of variables, with no major discrepancy. In the two analyses, the most important species trait involved in the classification of invasive vs. non invasive species was related to long distance dispersal. Other traits such as generalist vs. specialist, sexual reproduction, the mono or pluricellular content of mitospores and the duration of the latency period were also selected. Page 70 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Table 4: Rank of importance of explanatory variables for the classification of invasive vs. non invasive species in the Random Forest analysis Eumycota + Oomycota Eumycota + Oomycota Eumycota Eumycota without confounding variables without confounding variables 4 18 10 9 3 with confounding variables 1 2 5 6 8 3 4 11 9 13 10 7 13 12 3 4 with confounding variables 1 2 3 4 5 6 7 8 9 10 11 7 13 7 14 8 10 12 13 12 16 14 16 15 17 9 17 14 14 15 16 8 19 15 11 17 12 19 20 18 21 11 18 16 15 19 17 18 19 20 21 Introduction date Long distance Dispersal Sexual reproduction Pluricellular mitospore Mitospore latency Host area Large host range Endophytism Small mitospores Optimal temperature Mitospore shape Medium size mitospores Coloured mitospores Infection of perennial organs Non biotroph Polycyclism Temperate climate in area of origin Seed infection No alternate host diploid Self crossing 1 6 2 5 5 1 2 6 Results when Phytophthora species were excluded were not very different (r=0.85 and 0.92 without and with confounding variables, respectively). Two main differences were found (a) in the analyses without confounding variables where long distance dispersal and sexual reproduction replaced each other at the first and fifth ranks in the two analyses, and (b) a much better ranking of optimal temperature (3rd) in the analysis without Phytophthora spp. Page 71 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Figure 2: Rank of importance of explanatory variables (including confounding variables) for the classification of invasive vs. non invasive species in the Random Forest analysis: Eumycota and Oomycota (left) or Eumycota only (right) In the CART analyses that included confounding variables, the date of introduction was the only variable kept in the trimmed trees. The splitting rule was as expected, i.e. the earliest introductions (before 1959) were associated with invasion success (Figure 3). When no confounding variables were included, the CART tree for the whole dataset only selected the long distance dispersal variable, again the expected splitting rule. In the case of Eumycota only, the CART tree was more complex, with three variables including those identified by RF. The splitting rules were consistent with biological hypotheses except for the host range: invasion success was associated with specialist pathogens. Page 72 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Figure 3: CART trees showing the splitting rules associated with invasion success 1.2 High impact The date of introduction was also the most important variable explaining high impact. The main species traits involved were the infection of perennial organs (vs. expendable parts), optimum temperature and latency period (table 5 and figure 4). These three variables were also the first ones in the analyses without confounding variables and without Phytophthora spp. Page 73 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Figure 4: Rank of importance of explanatory variables (including confounding variables) for the classification of invasive species with high vs. low ecological impact in the Random Forest analysis: Eumycota and Oomycota (left) or Eumycota only (right) Table 5: Rank of importance of explanatory variables for the classification of invasive species with high vs. low ecological impact in the Random Forest analysis Introduction date Optimal temperature Infection of perennial organs Mitospore latency Host area Endophytism Non biotroph Generalist Seed infection Polycyclism Eumycota + Oomycota Eumycota + Oomycota Eumycota Eumycota without confounding variables with confounding variables without confounding variables 1 3 with confounding variables 1 2 2 4 5 6 8 7 10 9 3 4 5 6 7 8 9 10 1 1 3 2 3 2 5 6 7 8 4 4 7 5 8 6 CART trees could only be produced with the whole data set (i.e. Eumycota and Phytophthora). When no confounding variable was introduced, the duration of the latency period was the only splitting variable, with a threshold value of 4 days, in the Page 74 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ expected trend. When confounding variables were included, the single splitting variable was the date of introduction, again with the expected splitting rule, with a threshold value of 1852 (results not shown). 2 Predictive performances of the models Only models including traits as explanatory variables without confounding variables are considered here since the date of introduction could be used as a prediction. 2.1 Invasion success The overall error was quite high (30-40%) for all models. GLM techniques tended to perform better for Eumycota+Phytophtora whereas CART and RF were more accurate for Eumycota only (Table 6). However, when considering sensitivity, i.e. the ability of predicting that a species is invasive when it is, the main objective of PRA, CART and RF performed better than GLM and with high values: CART had a sensitivity of 89% when all species were considered and RF 87% for Eumycota only. Table 6: Comparison of the model predictive performances for the invasive status. Total error rate, sensitivity and specifity were computed for Eumycota alone and for Eumycota+Phytophthora. Eumycota + Phytophthora Eumycota Error (%) RF CART step aic step bic mix bma 40,43 29,79 27,66 27,66 27,66 29,79 35,00 27,66 35,00 35,00 42,50 42,50 Specificity (%) RF CART step aic step bic mix bma 45,00 45,00 65,00 65,00 65,00 65,00 35,29 90,00 52,94 52,94 82,35 82,35 Page 75 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Sensitivity (%) RF CART step aic step bic mix bma 70,37 88,89 77,78 77,78 77,78 74,07 86,96 59,26 73,91 73,91 39,13 39,13 2.2 High impact RF performed better than CART and GLM whatever the criterion. Low overall errors (10%) were obtained with this classification technique (table 7). However, this high level of accuracy was mainly due to a very high specificity (100%) while sensitivity was moderate (40-50%). Table 7: Comparison of the model predictive performances for the ecological impact level. Total error rate, sensitivity and specifity were computed for Eumycota alone and for Eumycota+Phytophthora. Eumycota + Phytophthora Eumycota Error (%) RF CART step aic step bic mix bma 10,64 21,28 23,40 21,28 23,40 23,40 10,00 20.00 20.00 17.50 20.00 20.0 Specificity (%) RF CART step aic step bic mix bma 100,00 100,00 97,30 100,00 97,30 97,30 100,00 93.94 96.97 100.00 96.97 96.97 Sensitivity (%) RF CART step aic step bic mix bma 50,00 0,00 0,00 0,00 0,00 0,00 43.00 14.29 0.00 0.00 0.00 0.00 Page 76 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Discussion - Conclusions 1. Our study provides good evidence that invasion success in forest pathogenic fungi, including the severity of impacts, can be partly explained by specific traits, as already demonstrated in other taxonomic groups (Hayes and Barry 2008). This provides a scientifically based support for the inclusion of such traits in a PRA. 2. Based on the results of our analyses, the most important traits are: -for invasiveness: the existence of a (natural) mode of long distance dispersal, sexual reproduction, particular spore characteristics (pluri-cellularity, shape), the duration of latency host range - for high impact: the optimal growth temperature, infection of perennial organs latency. The relative ranking of these traits was slightly affected when confounding variables, especially the date of introduction, were included or when the analyses did or did not include Phytophthora species. 3. Most of these traits are, at least implicitly, already included in the EPPO PRA scheme. However, our results could lead to the modification of some of the EPPO scheme questions. For example, sexual reproduction was selected in addition to long distance dispersal which suggests that the existence of sexual reproduction not only favours dispersal (ascospores are assumed to be dispersed at longer distances than conidia in many ascomycetes) but also directly increases the risk of invasion. Questions 1.25 and 1.27 in the EPPO PRA scheme, related to reproductive strategy and adaptability, should thus explicitly mention sexual reproduction for fungi. Conversely, “self-crossing” (included in the note of question 1.25) was not influential in our analyses. Page 77 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ 4. Some traits were selected at a much higher rank than expected, or with an unanticipated splitting rule. The high ranking given to the optimal growth temperature for predicting high impact was not expected and this result shows that this trait should also be considered as important. The effect of pluricellular mitospores on the risk of invasiveness was also unpredicted. In addition, the classification rule defined by CART which gives a higher risk of invasiveness to specialist pathogens is contradictory to the general assumption that generalists should be more invasive because they can establish in a wider range of habitats and on a wider range of hosts (Marvier et al 2004). Question 1.15 in the EPPO PRA scheme (and the ranking of answers) implicitly assumes that host range width and the probability of establishment are positively correlated. Based on our results, this assumption might be revised in the case of pathogens. The existence of at least one host plant species in the PRA area (question 14 in pest categorization) as a risk factor is itself questionable, at least for pathogens of non cultivated plants. In the case of forest pathogenic fungi, most invasive species had no known host species in the invaded area and were able to perform a “host jump” (see Slippers et al 2005). For “specialist” pathogens, it seems that this host jump mostly occurred within the same genus, e.g. Cryphonectria parasitica from Asian chestnuts (Castanea mollissima and C. crenata) to European (C. sativa) or American (C. dentata) species. 5. The results of the model assessment showed that methods based on a “machine learning approach” (CART and Random Forest) were well adapted to the type of available data. Although the dataset included missing values, CART and RF showed high sensitivity in predicting invasiveness (85-90%). The sensitivity was lower in predicting high impact (40-50%), but this may be due to the structure of the dataset (which included a small number of species with high impact) since the overall error rate was low (10%). 6. Although the EPPO PRA scheme has been adapted to the revised ISPM11 to improve the assessment of environmental impacts, our study showed that some additions to the explanatory notes for certain question could improved its Page 78 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ ability to assess potentially invasive species pathogenic on non crop plants, such as forest trees. Literature Breiman, L. (1996). Bagging predictors. Machine Learning 24 (2): 123-140. Breiman, L. 2001. Random forests. Machine Learning 45: 15-32. Breiman, L., J. Friedman, R. Olshen, and C. Stone.1984. Classification and regression trees. Chapman and Hall. Burnham, K. and D. Anderson. 2002. Model selection and multimodel inference : A Pratical Information-Theoric Approach (2 ed.). Springer. CAB 2009. http://www.cabicompendium.org/cpc/home.asp Desprez-Loustau ML, Courtecuisse R, Robin C, Husson C, Moreau PA, Blancard D, Selosse MA, Lung-Escarmant B, Piou D, Sache I. 2009. Species diversity and drivers of spread of alien fungi (sensu lato) in Europe with a particular focus on France. Biological Invasions (accepté) Desprez-Loustau M-L 2009. The alien fungi of Europe. In: DAISIE Handbook of alien species in Europe Springer, Dordrecht. 15–28 Efron, B. and R. Tibshirani (1993). An Introduction to the Bootstrap. New York, USA : Chapman and Hall. Hayes KR, Barry SC. 2008. Are there consistent predictors of invasion success? Biol Invas. 10:483–506. James T.Y. et al. 2006 - Reconstructing the early evolution of Fungi using a six-gene phylogeny. Nature 443 : 818-822 Lanier L , Joly P , Bondoux P , Bellemère A . 1976. Mycologie et Pathologie forestière. Paris, Masson Editeur.Tome 2, 478 p. Liaw, A. and M. Wiener. 2002. Classification and regression by random forest. R News 2 (3) : 18-22. Marvier M, Kareiva P, Neubert M G. 2004. Habitat destruction, fragmentation, and disturbance promote invasion by habitat generalists in a multispecies metapopulation. Risk analysis 24(4): 869-878 Page 79 of 80 PRATIQUE No. 212459 Deliverable number: 2.2 Date: 09/05/2017 _____________________________________________________________________ Raftery, A., D. Madigan, and J. Hoeting. 1997. Bayesian model averaging for linear regression models. Journal of the American Statistical Association 92: 179-191. Sinclair, W.A., H.H. Lyon, and W.T. Johnson. 2005. Diseases of Trees and Shrubs. Cornell University Press, Ithaca, NY. Therneau, T. and E. Atkinson. 1997. An introduction to recursive partitioning using the rpart routine. Technical Report 61, Mayo Clinic, Section of Statistics. Viennot-Bourgin G (1949) Les champignons parasites des plantes cultivées. Masson, Paris, France Page 80 of 80