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Global Ecology and Biogeography, (Global Ecol. Biogeogr.) (2013) 22, 93–104 bs_bs_banner RESEARCH PA P E R Conservation of phylogeographic lineages under climate change geb_774 93..104 Manuela D’Amen*, Niklaus E. Zimmermann and Peter B. Pearman Landscape Dynamics Unit, Swiss Federal Research Institute, WSL, Zuercherstrasse 111, CH-8903 Birmensdorf, Switzerland ABSTRACT Aim We address the unexplored question of whether the lack of information on intra-specific diversity inherent in species-level niche modelling might bias evaluation of the conservation requirements of species and phylogeographic lineages under changing climates. We test for directional biases that might arise due to these methodological differences in ways of assessing risks from climate change. Location The African continent. Methods We identified from peer-reviewed studies that used both nuclear and plastid markers the distribution of deep phylogeographic divisions within nine species of African mammals and their phylogeographic lineages. We fitted ecological niche models to describe currently suitable, occupied climates and to project the shift of suitable climate to two future time slices. We applied gap analysis to reveal potential changes in the protection of phylogeographic diversity owing to climatic shifts. Results We found that, within species, most phylogeographic lineages differ in the climates they experience and have substantial geographic separation. Models that do not distinguish these subspecific units often fail to identify potential risks of climate change to lineages. Modelled potential effects of climate change on the geographic extent of suitable climate vary in both direction and magnitude. Predictions of the persistence of suitable climate in current protected areas for the resident lineages differ on average by factor of 2 between species and lineage models. Main conclusions Our study develops an original synthetic approach by combining niche modelling, projected climate change, phylogeographic information and gap analysis. We clearly identify the potential benefits of using the new approach to evaluate risks to the conservation of intra-specific genetic diversity that are posed by climate change. Our results suggest that prudent conservation strategies need to incorporate potential differences in climate tolerance among lineages when planning conservation measures for species confronted with environmental change. *Correspondence: Manuela D’Amen, Landscape Dynamics Unit, WSL, Zuercherstrasse 111, CH-8903 Birmensdorf, Switzerland. E-mail: [email protected] Keywords Africa, biodiversity, gap analysis, genetic diversity, global warming, mammals, phylogeography, protected areas, species distribution models. INTRODUCTION The conservation of species is a fundamental goal of national and international programmes that aim to stop the ongoing loss of biodiversity (Ennos et al., 2005). This is because species constitute a recognizable currency for developing and evaluating conservation policy and management activities (Mace, 2004). © 2012 Blackwell Publishing Ltd Nonetheless, the frequent discovery of phylogeographic lineages within species motivates and justifies a reconsideration of strategies for conserving intra-specific diversity (Crandall et al., 2000). Such conservation efforts are crucial for the preservation of the historical components of diversity and to maintain the potential for species to mount adaptive responses to environmental change. The existence of phylogeographic lineages in DOI: 10.1111/j.1466-8238.2012.00774.x http://wileyonlinelibrary.com/journal/geb 93 M. D’Amen et al. widely distributed species has additional implications for conservation planning because of changing global climate. Future changes in climates are likely to affect species ranges, the distribution of biodiversity and the evolutionary history it holds (Thuiller et al., 2011). Empirical evidence demonstrates that ongoing range shifts in response to changing climate are occurring globally (e.g. Parmesan & Yohe, 2003). These shifts can be successfully predicted (Araújo et al., 2005) by ecological niche models (ENMs), which constitute an important tool for projecting potential shifts in the distributions of suitable conditions for species (Guisan & Zimmermann, 2000), under the assumption that the species’ ecological niche does not evolve to meet changing conditions (Peterson, 2011). These statistical distribution models generally focus on species and incorporate no information on the spatial distribution of intra-specific genetic variability. Climate change and its effects on the geographic distribution of suitable climate could challenge the future effectiveness of national parks and other biological reserves as conservation tools for preserving biodiversity (Hannah et al., 2002). While environmental tolerances or local adaptation might allow some species to persist in parts of their current ranges, other species, even if currently protected, will survive only by colonizing newly suitable areas (Araújo et al., 2004). Thus, research needs to evaluate the long-term effectiveness of current protected areas and to establish priorities for providing connectivity of reserve networks. Some studies suggest a reduction of the long-term efficacy of current reserves under climate change (e.g. D’Amen et al., 2011), but these have focused only on the species level and have ignored intra-specific lineage structure. Despite the importance of preserving genetic diversity, no studies have explored how species-level niche modelling could bias evaluation of the conservation requirements of species and intra-specific phylogeographic lineages under conditions of changing climate. The incorporation of the structure of phylogeographic lineages when modelling the impacts of climate change might improve our understanding of the potential risks faced by species exposed to climate change. The omission of phylogeographic structure from niche modelling exercises can lead to some lineages having little representation in the resulting species models (Pearman et al., 2010). This can, on the one hand, lead to underestimation of the climate tolerances of species and overestimation of the effects of climate change on the potential future distribution of species. On the other hand, climate change could threaten particular lineages, but these threats could go undetected. The integration of intra-specific variability into the projection of the potential effects of climate change on species could better identify future conservation needs that are specific to particular lineages in geographically restricted portions of a species’ range. This study arises from the focus in Pearman et al. (2010) on incorporating phylogeographic information in predictive models for species, and aims to assess risks to lineages that are posed by climate change and the resulting implications for conservation planning. Here, we address the unexplored question: 94 do continental-scale assessments of the future effectiveness of protected areas, based on the projection of ENMs that are built with species-level occurrence data, mask risks to particular phylogeographic lineages? We focus on several mammal species in Africa, selected because of the availability of robust phylogeographic information. We fit ENMs for species and their component phylogeographic lineages to project the shift of suitable climate at two future points in time. In particular, we are interested in the geographic distribution of the climate that is currently occupied by lineages and how this distribution will change in the future. We then apply gap analysis to document potential changes in the protection of phylogeographic diversity in the current reserve network owing to climatic shifts (other potential impacts on future species ranges, such as land-use/ land-cover change, are beyond the scope of this paper). We additionally focus on two related issues regarding the estimation of range change and reserve representation: (1) the evaluation at the species level of the implications of modelling approaches that either include or ignore lineage structure; (2) the effect on assessment at the lineage level of projections derived by ENMs that are built with species-level data versus the use of independent niche models for each lineage. To our knowledge no previous study has addressed this fundamental issue for preserving genetic diversity. M AT E R I A L S A N D M E T H O D S Species data We address potential effects of climate change on several species of large mammal inhabiting the African continent. We surveyed published data from multi-genome phylogeographic analyses because the identification of phylogeographic lineages with mitochondrial DNA sequences alone can cause substantial bias when inferring the evolutionary history of species (Ballard & Whitlock, 2004). We excluded from consideration those studies that did not report clear definition of intra-specific divisions, and those that did not consider substantial parts of species ranges in Africa. As a result, we selected 10 phylogeographic studies (Table 1). We used species and infra-specific nomenclature according to the International Union for Conservation of Nature (IUCN). When infra-specific nomenclature did not correspond to documented phylogeographic units or was nonexistent, we named lineages based on their geographic distributions. We derived species ranges from the digital distribution maps of the IUCN Red List of threatened species (IUCN, 2010). These data were available as shapefile polygons and contained the most up to date (October 2010) known range of species. For conservation reasons, the IUCN provided only relevant national boundaries to describe range limits for the black rhinoceros. This lack of detail led us to exclude this species from further analyses. We used the IUCN polygons to select occupied cells in a grid of 1° resolution and encompassing the whole African continent (2642 cells). For each species, we considered as Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd African mammals and global warming occupied all the cells that intersected the relevant polygons. The use of relatively large grid cells probably reduced errors of false presence in the data set. We defined distribution boundaries for the phylogeographic lineages according to the information contained in the IUCN database, when available, otherwise we got this information from relevant publications for the target species (Table 1, see Fig. S1 in Supporting Information). We excluded from the analysis three lineages that occupied ranges of Table 1 Mammals’ species selected on the basis of the existing literature on phylogeographic structure. ID < 20 1° cells because ENMs that are built with small data sets can be unstable to the omission or inclusion of single occurrences (Stockwell & Peterson, 2002). Climatic predictors We obtained current bioclimatic layers at a resolution of 30″ from the WorldClim database, which contains 19 bioclimatic Species Intra-specific lineages IUCN status Reference 1 Acinonyx jubatus Aepyceros melampus 3 Diceros bicornis† 4 Equus zebra 5 Giraffa camelopardalis 6 Hippotragus equinus 7 Kobus ellipsiprymnus 8 Kobus kob 9 Loxodonta africana VU CR – – – LC – – – CR CR VU CR CR VU VU VU LC EN – – – – – EN LC – – LC LC NT LC – – VU – – LC – – – – Charruau et al. (2011) 2 – A. j. venaticus A. j. soemmerringii A. j. raineyi A. j. jubatus – E Africa unit S Africa unit SW Africa unit* – D. b. longipes D. b. bicornis D. b. michaeli D. b. minor – E. z. hartmannae E. z. zebra – G. c. rothschildi G. c. reticulata G. c. tippelskirchi G. c. giraffa G. c. angolensis G. c. antiquorum G. c. peralta* – W Africa unit SE Africa unit – K. e. ellipsiprymnus K. e. defassa – E Africa unit WC Africa unit – L. a. cyclotis L. a. africana – P. a. africanus P. a. sundevallii P. a. massaicus P. a. aeliani* 10 Phacochoerus africanus Lorenzen et al. (2006) Harley et al. (2005) Moodley & Harley (2005) Brown et al. (2007) Alpers et al. (2004) Lorenzen et al. (2006) Lorenzen et al. (2007) Rohland et al. (2010) Muwanika et al. (2003) VU, Vulnerable; CR, Critically Endangered; LC, Least Concern; EN, Endangered; NT, Near Threatened. *Lineages not considered in the analyses due to their restricted distribution (i.e. fewer than 20 occurrence cells). †Species not included in the analyses because of the unavailability of distribution data. Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd 95 M. D’Amen et al. variables that are derived from averaged monthly precipitation and temperature for the period 1950–2000 (Hijmans et al., 2005). Potential values for these variables at two future time points (2050 and 2080) were derived from climatic grids of 10′ resolution from the HadCM3 global circulation model for the SRES A1b emission scenario (Ramirez & Jarvis, 2008). Because of the demonstrative purpose of this work, we use only one of the several available climate models as a case study. In order to match the resolution of the species and lineage distribution grids, we rescaled all climatic layers to 1° resolution by averaging the climate values within each map cell. We avoided the effect of inter-correlation among independent variables by calculating the variance inflation factor (VIF) for the 19 bioclimatic grids. We removed variables until all VIFs were below 5 (Belsley et al., 1980) and, as a result, retained six predictors (Table S1). Ecological niche models We modelled the climatic niche using the generalized boosted model algorithm (GBM; Friedman et al., 2000), a topperforming algorithm for predicting species distributions (Elith et al., 2006). For each species and lineage, we fitted GBMs with the ‘gbm’ library in R 2.12.1 (Ridgeway, 2006; Elith et al., 2008; R Development Core Team, 2010). Model fit was evaluated using 10-fold cross-validated area under the curve (AUC) scores (Fielding & Bell, 1997). We fitted climatic models representing the realized niche of each lineage (ENM-L, ecological niche models for lineage), using as presences the occupied 1° cells that intersected lineage boundaries and all other cells as (assumed) true absences. We built models for species by applying three approaches: The ecological niche models for species (ENM-S) consisted of simply training a GBM model on all cells occupied by the species (i.e. the occurrences pooled across all relevant lineages). A composite model (ENM-C) was developed from the ENM-L predictions to summarize the niche across all the lineages. To build the ENM-C, we first standardized the distribution of average probability of occurrence for each lineage along the environmental gradients considered in the modelling procedure to make the models comparable. Then, we calculated the mean probability of occurrence of at least one of the related lineages for the map cells using the multiplicative probability method described in Pearman et al. (2010). We constructed binary presence–absence maps by implementing a threshold for species presence that maximized the true skill statistic (TSS; Allouche et al., 2006). Finally, we built an aggregated model (ENM-A) that combined binary projections of the ENM-Ls of each species, so that we assigned species presence to each cell that was predicted suitable for at least one lineage (Fig. 1). We predicted changes in the number of climatically suitable cells for species and lineages using each modelling approach. We used these projections to indicate how species and lineage ranges could shift in response to climate change under an assumption of unlimited dispersal. In addition, we calculated the future persistence of climatically suitable conditions within the current geographic ranges of species according to the three approaches to constructing species models. We also estimated the propor96 tion of the current geographic range of lineages that could remain climatically suitable in the future according to projections derived from ENM-Ls (no dispersal for lineages) and from the three species models (i.e. prediction of suitable climate for the species as a whole in the areas currently occupied by the lineages). Reserves data set and gap analysis We obtained data on the location of existing protected areas in Africa from the World Database on Protected Areas 2010 (IUCN and UNEP-WCMC, 2010), which includes data on reserve extent, location and classification of management designation. We calculated the proportion of area protected in each 1° cell. On the basis of this information, we performed a gap analysis by calculating the percentage of current, modelled distribution that intersects the current reserve system for each species and lineage (Jennings, 2000). We then evaluated for 2050 and 2080 the potential change in the proportion of area protected within the areas of modelled suitable climate. We did this for each species and lineage according to projections derived from different models and dispersal assumptions. First, we projected potential future ranges from ENM-Ls, ENM-Ss, ENM-Cs and ENM-As under an unlimited dispersal scenario. Second, we assessed the degree of persistence of climatic suitability for species and lineages within the currently protected portions of their distributions. For species, we based this estimation on projections of the persistence of suitable conditions, as derived from each of the three species models. For lineages, we used both ENM-L projections (i.e. to indicate the proportion of protected area that is projected to remain climatically suitable specifically for the considered lineage) and species models. By basing the analysis of lineage risks to climate change on the species models, we obtained an estimation of currently suitable, protected area that remains so in the future if one does not distinguish for which lineage the climate will actually remain suitable. This allowed us to represent an assumption, which accompanies the use of ecological niche models, of unlimited dispersal of lineages among the remaining areas of suitable climate for the species. R E S U LT S Projected species models We observe that distribution models for both species and lineages display high values of cross-validated AUC, ranging between 0.89 and 0.99 (Table S2). Under an unlimited dispersal scenario, changes in the extent of suitable climatic conditions (i.e. potential range size) as ascertained from species models (ENM-S, ENM-C, ENM-A) are similar in both future time slices, with the exception of Hippotragus equinus (Tables 2 & S3). Generally, the inclusion of lineage information does not significantly affect predictions of change in range size at species level (Wilcoxon matched pairs test, n = 9; Tables 2 & S3). For approximately half of the species, the species models agree in forecasting a substantial reduction in the number of climatically suitable Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd African mammals and global warming Species level Lineages level Species distribution Phylogeographic analysis Lineages distribution GBM calibration ENM-S ENMs-L Current climate 2050 climate 2080 climate Projections ENM-S ENMs-L ENM-C ENM-A Persistence of suitable climate in Unlimited dispersal Persistence of suitable climate in Unlimited dispersal Current range Range change Current range Range change Current protected range Protected range change Current protected range Protected range change (9 species x 3 models x 3 time slices) (9 species x 3 models x 3 time slices) (25 lineages x 4 models x 3 time slices) (25 lineages x 1 model x 3 time slices) Figure 1 Flow chart of the modelling design. ENM, ecological niche model: for lineage (-L), for species (-S), composite (-C), and aggregate (-A). cells, reaching up to -90% for Equus zebra (Tables 2 & S3). Only small changes (< 10%) are projected for three species, but for Kobus kob all species models project a substantial increase in extent of area with suitable climate by 2080 (Table 2). In future time slices ENM-Ss, ENM-Cs and ENM-As agree in projecting the persistence of some areas of suitable climate within the current range of every species (Table S4). eages differ in the magnitude of this variation (Tables 2 & S3). For about one-third of the study lineages, we find that ENM-Ls project the persistence of suitable climatic conditions by 2080 in < 20% of the currently occupied lineage range. In particular, we find that ENM-Ls predict the retention of suitable climate in no cells in the current known range of two giraffe lineages (Table S5). Projected lineage models Model bias The geographic overlap in the distribution of suitable climate for conspecific lineages under the current conditions resulting from ENM-L projections of most species is very small, and mainly limited to distribution borders (Figs 2 & S2). The consistent differences among conspecific lineages in the distribution of suitable climatic conditions may indicate a potential for differential responses of lineages to climate change. Indeed, in future time slices, ENM-L projections of the distribution of suitable climate show contrasting intra-specific responses for more than half of the species (Tables 2 & S3). Even when projections of species and lineage models agree in the sign of the trend in extent of suitable climate conditions, conspecific lin- Consideration of ENM-Ls when projected to future climates reveals a bias of species models in predicting lineage response to climate change (i.e. a discrepancy in terms of over- or underestimation of lineage range change). For six out of nine species (i.e. Acinonyx jubatus, Giraffa camelopardalis, Hippotragus equinus, Kobus ellipsiprymnus, Loxodonta africana, Phacochoerus africanus) ENM-Ls predict trends in the extent of future suitable climate differing in sign and magnitude from those obtained from the projection of the corresponding ENM-Ss (Figs 2 & S2, Tables 2 & S3). Moreover, ENM-Ls predict a median percentage area of persistent suitable conditions within the current geographic range of lineages that is smaller than predicted by the Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd 97 M. D’Amen et al. Table 2 Percentage change (D) in areal extent and in protected area with suitable climatic conditions by 2080 under the assumption of unlimited dispersal. Species models D Areal extent D Protected area ENM-L D Areal extent D Protected area Acinonyx jubatus ENM-S ENM-C ENM-A – -51.48 -38.71 -33.09 – -70.72 -73.50 -71.73 Aepyceros melampus ENM-S ENM-C ENM-A Equus zebra ENM-S ENM-C ENM-A Giraffa camelopardalis ENM-S ENM-C ENM-A – -44.78 -47.95 -45.84 – -93.75 -91.30 -90.18 – -44.84 -52.38 -37.08 – -61.83 -67.05 -62.08 – -94.86 -94.57 -86.70 – -67.13 -75.15 -66.14 – A. j. venaticus A. j. soemmerringii A. j. raineyi A. j. jubatus – E Africa unit S Africa unit – -22.65 9.09 -62.10 -42.65 – -36.16 -49.16 – -59.09 -17.63 -80.53 -80.38 – -44.82 -73.75 – E. z. hartmannae E. z. zebra – -88.33 -92.73 – -84.49 -95.08 – – Hippotragus equinus ENM-S ENM-C ENM-A Kobus ellipsiprymnus ENM-S ENM-C ENM-A Kobus kob ENM-S ENM-C ENM-A Loxodonta africana ENM-S ENM-C ENM-A Phacochoerus africanus ENM-S ENM-C ENM-A – -21.89 10.85 -0.84 – -0.10 -6.41 -8.47 – 64.55 79.75 89.80 – 11.76 8.38 9.86 – 1.00 -2.60 -3.45 – -38.12 -9.45 -18.60 – -9.20 -15.94 -17.00 – 65.08 72.75 78.15 – -8.22 -5.46 -4.35 – -2.11 -8.28 -10.97 – G. c. rothschildi G. c. reticulata G. c. tippelskirchi G. c. giraffa G. c. angolensis G. c. antiquorum – W Africa unit SE Africa unit 36.96 77.01 -4.08 -10.77 -96.47 -59.7 – 206.78 -43.14 20.16 -10.47 -89.85 -78.65 -99.72 -68.57 – 207.03 -58.51 – K. e. defassa K. e. ellipsiprymnus – -21.03 45.36 – – E Africa unit WC Africa unit – 125.86 87.17 – – L. a. cyclotis L. a. africana – -7.71 6.72 – -13.00 -8.76 – P. a. africanus P. a. sundevallii P. a. massaicus – – 72.56 -58.92 -46.24 66.76 -68.23 -49.20 10.92 -21.04 83.95 75.98 ENM-L, ecological niche models for lineages; ENM-S, ecological niche models for species; ENM-C, composite model; ENM-A, aggregated model. corresponding species models by almost a factor of 2 (Fig. 3a). These differences between the predictions of species models and ENM-Ls are statistically significant for both 2050 and 2080 after Bonferroni correction (Table S6). Future climate suitability in protected areas Gap analyses of all species models predict that by the year 2050 all but two species (Kobus kob and L. africana) will experience a decrease in extent of protected area with suitable climatic conditions compared with current levels (Table S3). By the year 98 2080, species models for four species predict a relatively large reduction of protected climatically suitable area (> 60%; Table 2). Only the kob could experience an increase in protected area with suitable climate by 2080 (Table 2). Results from gap analyses of species models indicate that persistence of suitable climate in the current protected areas is < 50% for four species by 2050 (Table S7). We find no evidence of statistical differences for any species in gap analysis of projections from ENM-Ss, ENM-Cs or ENM-As (Wilcoxon matched pairs test, n = 9). Gap analysis results for lineages vary, depending on the modelling approach (Table 2, Fig. 3b). Gap analyses of projections Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd African mammals and global warming Figure 2 Shift of suitable climatic conditions predicted by the ecological niche models for species (ENM-S) and for lineages (ENM-L) for Phacocerus africanus. The black line indicates the current known distribution of P. africanus according to IUCN (2010) (Africa Albers equal area conic projection). Figure 3 Percentage of the current geographic ranges (a) and of the current protected range (b) of lineages that remain climatically suitable by 2080 as predicted by different modelling approaches: ENM-L, ecological niche models for lineages; ENM-S, ecological niche models for species; ENM-C, composite model; ENM-A, aggregated model. Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd 99 M. D’Amen et al. 2050 2080 Persistence (%) ENM-S ENM-C ENM-A ENM-L ENM-S ENM-C ENM-A ENM-L 0–20 21–50 51–80 81–100 3 7 6 9 3 9 4 9 2 9 3 11 3 11 8 3 7 5 7 6 11 3 5 6 7 6 5 7 13 5 4 3 Table 3 Number of phylogeographic lineages showing percentages of protected area within current distributions that retain suitable climate, according to projections from four different modelling approaches. ENM-L, ecological niche models for lineages; ENM-S, ecological niche models for species; ENM-C, composite model; ENM-A, aggregated model. from ENM-Ls of four species (G. camelopardalis, H. equinus, K. ellipsiprymnus and P. africanus) indicate contrasting trends among conspecific lineages in the degree to which suitable climate falls in any protected area in the future, within or outside of current ranges (Tables 2 & S3). Further, we compare the retention of suitable climatic conditions within the current protected distribution of lineages as projected by ENM-Ls and species models (i.e. prediction of suitable climate for the species as a whole in the areas currently occupied by the lineages). Our results show significantly lower persistence of suitable climate in the currently protected distribution of lineages according to ENM-Ls compared with predictions from all species models (Table S8, Fig. 3b). For example, ENM-Ls project that almost twice as many lineages will have < 20% of current protected area remaining climatically suitable as of 2080, compared with projections from ENM-Ss and ENM-As (Table 3). DISCUSSION The means to secure the conservation of phylogeographic lineages under changing climate and environment have been little studied (Pfenninger et al., 2007). We detected considerable among-lineage differences in the distributions of current suitable climate. Such variability leads to divergent projections of the degree of change in future potential distributions. This calls into question the validity of species models that do not account for phylogeographic structure and lineage identity when such structure exists. Our results suggest that no information relevant to differential potential for persistence of lineages can be obtained from existing approaches to modelling the climate occupancy of species and projecting it to the future. In contrast, the projection of single ‘lineage’ models of suitable climate provides an alternative prospective on the potential response of species to climate change. This can, in turn, affect the evaluation of the potential future amount of suitable area falling into reserves, particularly when accounting for dispersal constraints in the modelling implementation. Phylogeographic structure and risks from climate change Genetic variation can be partitioned into two complementary components. One is the selected (or functional) diversity arising directly from adaptive evolution due to natural selection, while 100 the second is the neutral heritage of the population resulting from the effects of neutral evolutionary forces such as genetic drift, mutation or migration (Bonin et al., 2007). Phylogeographic studies are usually undertaken with neutral molecular markers, which allow the detection of the effects of demographic history on patterns of lineage distribution and divergence. Nonetheless, in species with strong phylogeographic structure, lineages can differ in the environmental space they occupy (Murphy & Lovett-Doust, 2007; Pearman et al., 2010). Considering our case study, among-lineage differences in behavioural, life-history and morphological traits exist for at least five out of nine species (E. zebra, Nowak, 1999; Groves & Bell, 2004; G. camelopardalis, Brown et al., 2007; K. ellipsiprymnus, East, 1998; K. kob, Lorenzen et al., 2007; L. africana, Groves & Grubb, 2000; Grubb et al., 2000). Most conspecific phylogeographic lineages in this study differ in the climates they experience and have substantial geographic separation within a single geographic and climate space (i.e. the geographic area and the climate that the whole species occupies; Figs 2 & S2). This differentiation leads to divergent projections of the degree of change in future area of suitable climate for the lineages in six out of the nine study species. These differences go undetected when considering projections by species models. Together, these differences suggest that our lineages diverge in characters additional to the neutral genes used to identify phylogeographic structure and emphasize the importance of accounting for inter-specific lineage structure when planning conservation measures. Overall, our results illustrate the importance of considering multiple levels of biodiversity in the assessment of the potential impacts of climate change on the distribution of suitable conditions for widely distributed species. Understanding the current geographic distributions of suitable climate for phylogeographic lineages and the potential alteration of these distributions due to changing climate could be critical for management for the conservation of biodiversity. Our findings suggest that species-level models are frequently inadequate to provide such conservation information relevant to lineages, and that bias was common in all three species model approaches. The lack of differences among species models that distinguish the contribution of lineages and those that do not is probably due to the uniformity in prevalence among conspecific lineages. Indeed the development of a composite niche model has proven useful when some subspecific taxa are geographically restricted, relative to other related taxa and, thus, contribute Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd African mammals and global warming little to modelled distribution at the level of the species (Pearman et al., 2010). In our case study, the majority of conspecific lineages have comparable geographic extents, thus they contribute equally to the niche occupancy displayed by the species, even under the classical species distribution model technique. All species-level modelling approaches underestimate the risks of loss of suitable climate for some phylogeographic lineages in current protected areas. This probably occurs because species models produce an estimate of the geographic area that under future conditions remains climatically suitable for one or more of the conspecific lineages, but not specifically for the lineage that is originally present. Thus, projecting species models to future climates could predict that a reserve remains climatically suitable. However, whether this suitability refers to the local populations or to populations from another portion of the species range remains unclear. This uncertainty biases assessment of the potential effects of climate change towards underestimation of impacts on reserve adequacy. The alternative approach of projecting single ‘lineage’ models to changed climate conditions can influence the evaluation of the future amount of suitable habitat area falling into reserves. The weight that should be given to this perspective depends on specific conservation goals and other biological considerations. For instance, the incorporation of phylogeographic information could be particularly valuable when dispersal limitation is included in modelling that aims to assess potential, climate-induced range shifts (Meier et al., 2011). The introduction of dispersal constraints could differentially affect the projection of models of species and lineages. Species models reflect the assumption that dispersal constraints act only on displacements that occur outside the initial species boundaries. Under this approach dispersal limitations would not be relevant to members of subspecific units as they colonize areas within the original species range. In contrast, dispersal constraints applied to projections from lineage models reflect the assumption that constraints apply beyond the original limits of the relevant lineage itself. This probably produces more restrictive forecasts of potential distributional shifts for the species as a whole because lineage members are not allowed unlimited dispersal within the part of the species range that remains climatically suitable for the species. Such contrasting assumptions and projections can cause substantial differences in the assessment of the geographic distribution of species in the future and, consequently, in setting conservation priorities. An approach that specifically addresses climate suitability for lineages deserves closer inspection and further development. Data limitation and potential bias The choice of African mammal species for this case study is primarily due to the availability of robust phylogeographic studies for multiple species for a single geographic area. Our focus on tropical species, which might not experience extreme climatic conditions (Araújo & Guisan, 2006), could put in question the ecological importance of the magnitude of modelled climate change that we observed. On the other hand, Rapoport’s rule (Stevens, 1989) suggests that some tropical species are likely to be climate specialists and could be relatively sensitive to climatic variability and trends. Further, climate sensitivity in African tropical forests and savannas might be much higher than in more poleward-situated regions because of relatively higher projected climate change in the tropics (Beaumont et al., 2011). We also recognize that focusing on modelling climate suitability can produce an overestimation of the projected suitable area for species and lineages because we do not take into account other important drivers of mammal distributions, such as land cover/use and inter-specific interactions. Moreover, other approaches, such as an ensemble of different modelling techniques and climatic scenarios (Araújo & New, 2006), can be helpful in obtaining more reliable consensus projections of future species distributions than our illustrative but comparatively simple one-algorithm approach. Finally, our estimates of future protected area with suitable climate assume that protected areas do not increase or decrease in extent (or effectiveness). For these reasons, our results should not be used directly for deriving practical conservation initiatives for African mammals. The results nonetheless indicate the importance of modelling potential intra-specific variation in response to changing climatic and environmental factors. Our choice of data on the current distribution of the mammals in Africa could potentially influence our results. We use the most up-to-date species distribution information. This could potentially result in underestimation of the climate tolerances of species or lineages because, for some species, current ranges are much reduced compared with their historical states due to human pressures. Further, the extent of local adaptation of lineages to the current climates they experience, and maladaptation to climates outside of the current distributions of these species, is both unknown and in need of focused research. Drastic reduction in population numbers for many of these species (Novellie et al., 1992; Fennessy & Brown, 2010), and historical bottlenecks in others (O’Brien et al., 1983; Whitehouse & Harley, 2001), could have caused substantial genetic depletion, which might diminish the breadth of environmental tolerance of lineages. Until sufficient knowledge is available to suggest otherwise, we advise identification and use of the most conservative criterion (i.e. to model both species and lineages on the basis of the actual range) for conservation planning of key taxa, given that the ultimate purpose of such modelling exercises is to improve biodiversity conservation. Climate change and evolutionary response Modelling currently provides the most comprehensive and flexible approach to generating probabilistic projections of changes in biodiversity under future climate scenarios (McMahon et al., 2011). While many species may move to favourable climatic habitats, others will overcome climate variation via plastic changes, or through evolutionary adaptation. New studies can incorporate evolution into distribution modelling (e.g. Kearney et al., 2009), but such studies apply particularly to species with short generation times and large population sizes (Lynch & Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd 101 M. D’Amen et al. Lande, 1993; Hoffmann & Sgrò, 2011; McMahon et al., 2011). This raises the question of whether long-lived organisms, such as large mammal species that are locally depleted in number due to the high human pressure, can evolve to keep up with rapid climate change. Currently there is no fast and inexpensive way to determine whether a lineage will need to shift geographically to track favourable conditions (due to niche conservatism) or has the potential to mount an adaptive response without moving, based upon standing genetic variation. A conservative approach would be to secure the representation of lineages in conservation areas (at least within their current geographic distribution). In this way, one might be more likely to capture the entire distribution of phenotypic, behavioural and physiological variation with which some populations might be able to persist under future climate change. CONCLUSIONS To become effective, programmes for biodiversity conservation need to bring both spatial and temporal perspectives to the forefront of their research agendas. Phylogeography, the study of the geographic distribution of genealogical lineages, can contribute these essential components – time and space – to inform conservation planning. We show that the combination of phylogeographic and modelling approaches can improve our ability to forecast shifts in the potential ranges of lineages under climate change. The approach we demonstrate contributes to a more realistic assessment of the effects of climate change on biodiversity through the inclusion of phylogeographic information. When these forecasts are used to inform gap analysis, we obtain valuable information on risk to (and perhaps in some cases, opportunity for) the future representation of phylogeographic lineages and, thus, to the conservation of the evolutionary potential of species. The early recognition of the elements of biodiversity that are threatened by climate change is crucial for planning effective countermeasures. ACKNOWLEDGEMENTS We thank four anonymous referees and P. Bombi for helpful comments on previous versions of the manuscript. D. Salvi provided valuable advice regarding molecular phylogeographic studies. P.B.P. acknowledges the support of SNF grants CRSII3_125240 ‘SPEED’ and 31003A_122433 ‘ENNIS’. P.B.P. and N.E.Z. acknowledge the support of EU grants GOCECT-2007-036866 ‘ECOCHANGE’ and ENVCT-2009-226544 ‘MOTIVE’. REFERENCES Allouche, O., Tsoar, A. & Kadmon, R. (2006) Assessing the accuracy of species distribution models: prevalence, kappa and the true skill statistic (TSS). 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S U P P O RT I N G I N F O R M AT I O N Additional Supporting Information may be found in the online version of this article: Figure S1 Geographic distribution of phylogeographic lineages according to IUCN information and relevant publications for the target species. Figure S2 Geographic distribution of suitable climatic conditions predicted by lineage distribution models for the years 2000, 2050 and 2080. Table S1 Bioclimatic grids utilized as predictors in generalized boosted algorithm models. Table S2 Number of 1° cells predicted to be climatically suitable under the current climatic conditions for species and intraspecific lineages. Table S3 Percentage change in areal extent and in protected area with suitable climatic conditions by 2050 under the assumption of unlimited dispersal. Table S4 Percentage of persistence of suitable climatic conditions within the current range of every species. Table S5 Degree of persistence of climatically suitable cells in the known geographic ranges of intra-specific lineages. Table S6 Results from the Wilcoxon matched pairs tests conducted to evaluate whether the persistence in the current ranges of lineages differed among model predictions. 104 Table S7 Number of species with different percentages of protected surface that will remain suitable under future climate (persistence), according to different modelling approaches. Table S8 Results from the Wilcoxon matched pairs tests conducted to evaluate whether the potential occupancy in the lineages’ protected areas differed among model predictions under future climate. As a service to our authors and readers, this journal provides supporting information supplied by the authors. Such materials are peer-reviewed and may be re-organized for online delivery, but are not copy-edited or typeset. Technical support issues arising from supporting information (other than missing files) should be addressed to the authors. BIOSKETCHES Manuela D’Amen has a range of interests in spatial ecology and conservation biology. Her recent work has ranged from forecasting the effects of climate change on faunal diversity and conservation to the development of the best methods for spatial analysis of biodiversity data. She is also interested in combining phylogenetic information and niche modelling to provide insight into niche dynamics and to contribute to predicting impacts of climate change. Niklaus E. Zimmermann is an ecologist and head of the research unit in landscape dynamics at the Swiss Federal Research Institute WSL, Birmensdorf, Switzerland. He is interested in macroecology, ecological theory and niche evolution. His research has recently focused on the impacts of climate and land-use change on species, ecosystems and biodiversity at a range of spatial scales, and on evolutionary aspects related to climate patterns and climate change. Peter B. Pearman is interested in how species are distributed along environmental gradients, both biotic and abiotic, which has led him to use both manipulative and correlative approaches. He has contributed to fieldwork on four continents. Many of his earlier publications address aspects of patterns of distribution of amphibians. He is currently interested in questions surrounding the structure of the niche and its evolution. He addresses this with ecological data and data from both phylogeographic and phylogenetic analyses. Author contributions: M.D. and P.B.P. conceived the questions and analysis; M.D. assembled data, conducted analyses and modelling, and assembled all tables and graphics; M.D. and P.B.P. wrote the first draft; M.D., P.B.P. and N.Z. contributed to subsequent revision. Editor: José Alexandre F. Diniz-Filho Global Ecology and Biogeography, 22, 93–104, © 2012 Blackwell Publishing Ltd