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Marine Ecology. ISSN 0173-9565 ORIGINAL ARTICLE Beta diversity of tropical marine benthic assemblages in the Spermonde Archipelago, Indonesia Leontine E. Becking1, Daniel F. R. Cleary1,2, Nicole J. de Voogd1,2, Willem Renema2, Manon de Beer2, Rob W. M. van Soest1 & Bert W. Hoeksema2 1 Institute for Biodiversity and Ecosystem Dynamics, University of Amsterdam, Amsterdam, The Netherlands 2 National Museum of Natural History, Leiden, The Netherlands Keywords Corals; environmental predictors; foraminifera; sea urchins; sponges; Sulawesi; tropical marine assemblages; variance partitioning. Correspondence Leontine E. Becking, Institute for Biodiversity and Ecosystem Dynamics, University of Amsterdam, PO Box 94766, 1090 GT Amsterdam, The Netherlands. E-mail: [email protected] or [email protected] Accepted: 12 July 2005 doi:10.1111/j.1439-0485.2005.00051.x Abstract In order to preserve diversity it is essential to understand how assemblages change across space. Despite this fact, we still know very little about how marine diversity is spatially distributed, especially among lesser-studied invertebrate taxa. In the present study beta-diversity patterns of sea urchins, sponges, mushroom corals and larger foraminifera were assessed in the Spermonde Archipelago (Indonesia). Using ordinations we showed that the inshore zone (<5 km offshore), midshore zone (5 < x < 30 km offshore) and distance offshore zone (>30 km offshore) all contained distinct assemblages of sponges and corals, while only foraminifera assemblages from the inshore (<5 km offshore) zone were distinct. There was a significant spatial pattern of community similarity for all taxa surveyed, but this pattern proved to be wholly related to environmental variables for sponges and foraminifera, and primarily for mushroom corals and sea urchins. The lack of a pure spatial component suggests that these taxa may not be dispersal limited within the spatial scales of this study (c. 1600 km2). The analyses of the corals and foraminifera were additionally tested at two spatial scales of sampling. Both taxa were primarily associated with local-scale environmental variables at the local scale and larger-scale variables at the larger scale. Mean inter-plot similarity was also higher and variation lower at the larger scale. The results suggest that substantial variation in similarity can be predicted using simple locally assessed environmental variables combined with remotely sensed parameters. Problem The biodiversity of marine ecosystems is declining on a global scale (Gaston 2000; Roberts et al. 2002; Pandolfi et al. 2003). A frequently advocated way to protect the marine environment is through the establishment of marine reserves (Allison et al. 1998; Lubchenco et al. 2003). In order to generate effective conservation schemes and guidelines for the sustainable exploitation of natural resources, the dynamics of the distribution and abundance of organisms in relation to environmental, spatial and temporal processes needs to be well understood (Gas76 ton 2000; Lubchenco et al. 2003; Tuomisto et al. 2003). In contrast to terrestrial systems, there have been relatively few studies that have assessed patterns of biodiversity and related these to environmental and spatial processes that are thought to regulate marine biodiversity (but see Clarke & Lidgard 2000; Ellingsen & Gray 2002; Ellingsen 2002), despite the severe threats to marine ecosystems (Olsen et al. 2002; Roberts et al. 2002). The Convention on Biological Diversity, furthermore, requires biodiversity inventories from signatory nations to monitor changes and has a major focus on marine biodiversity conservation (Gray 2000; Anonymous 2004). Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema A key component of any biodiversity survey is the assessment of beta diversity. Beta diversity is the change in species composition of assemblages between sites (Gray 2000; Purvis & Hector 2000). Beta diversity can provide information on marine area relationships or connectivity, reflecting the processes operating in those areas, and is considered to be essential in environmental and conservation-based censuses and the establishment of nature reserves (Purvis & Hector 2000; Cleary 2003; Tuomisto et al. 2003). Beta-diversity patterns may be the result of dispersal limiting factors or the spatial arrangement of environmental conditions. Similar assemblages in adjacent habitats may be due to either or both of these conditions. Separating the contribution of space and the contribution of environment to patterns of community similarity is therefore necessary for understanding the mechanisms that influence community structure across landscapes (Spencer et al. 2002). In marine and terrestrial environments, dispersal limitation is thought to be an important structuring force in many communities (Hubbell 1997). The dispersal of sedentary benthic reef organisms is usually limited to the larval phase, which can span a time scale from minutes to months (Reed et al. 2000; Miller & Mundy 2003; Shanks et al. 2003; Siegel et al. 2003). The general contention is that the longer the planktonic duration, the further the larvae can disperse, which means that dispersal propagules of certain species can potentially cover enormous distances and that barriers to dispersal are much weaker than for terrestrial organisms (Gee & Warwick 1996; Reed et al. 2000; Shanks et al. 2003; Siegel et al. 2003). Recent work, however, has indicated that larval exchange rates and dispersal distances are not necessarily unlimited and that they may have been over-estimated for many coral reef organisms. First of all, dispersal should be viewed within the context of local currents, which may be highly variable (Cowen et al. 2000; Reed et al. 2000; Largier 2003; Siegel et al. 2003). Nearshore waters, for example, have a retention zone along the shoreline and shelf, referred to as the coastal boundary layer, which can be particularly ‘sticky’ for larvae (Largier 2003 and references therein). Recent human-induced phenomena such as pollution from rivers and harbours could generate novel barriers that inhibit larval dispersal (Nystrøm et al. 2000). In addition, research and models on the dispersal of broadcast spawning individuals (e.g. corals) have shown that their dispersal distances may not be as great as has been previously suggested (Cowen et al. 2000; Miller & Mundy 2003). Furthermore, sessile organisms such as corals may undergo asexual reproduction by fragmentation and budding, which can cause dense stands of only a few species within a relatively large area because the propagules disperse and overgrow the substratum at the cost of other Beta diversity of tropical marine benthic assemblages species (Hoeksema 1988; Hoeksema & Moka 1989; Nishihira & Poung-In 1989; Hoeksema 1991a; Littler et al. 1997; Hoeksema 2004). The limited dispersal distance compared to that suggested by the length of the larval period has also been demonstrated in studies of genetic connectivity between certain crustacean populations (Barber et al. 2002; Palumbi 2003). In addition to dispersal, environmental factors can structure assemblages. Environmental variables explained significant amounts of variation in the community composition of various taxa in tropical rainforests (Duivenvoorden et al. 2002; Tuomisto et al. 2003; Cleary et al. 2004). A similar result has been found in Norwegian benthos, where changes in environmental variables had a stronger effect on beta diversity than the distance between sample sites (Ellingsen & Gray 2002; Ellingsen 2002). In marine environments, depth and substrate may, for example, significantly influence the distribution of marine organisms. This can include the size and spacing of suitable substrate for settlement and the height and inclination of reef walls, which can influence water movement, light penetration and sedimentation (Davis et al. 2003). Selective mortality and survival (e.g. due to coral bleaching) also play a role in structuring communities (Hoeksema 1991b; Feingold 1996). The scale of assessment influences the degree to which assemblages are structured by environmental processes. Previous studies have shown that the resolution and spatial scale of assessment can have a profound influence on the observed patterns of beta-diversity (Levin 1992; Clarke & Lidgard 2000; Ellingsen 2002; Ellingsen & Gray 2002; Willis & Whittaker 2002; Cleary 2003; Cleary et al. 2004). The ecological importance of scale is related to the fact that different processes can influence species diversity at different spatial and temporal scales. Regional scale diversity of corals, for example, appears to be affected by variables that are strongly related to the organisms’ energy supply, dispersal distance, geography, climate and history (Fraser & Currie 1996; Karlson & Cornell 1998, 2002). The patterns of beta diversity can differ among taxa, due to community-wide differences in dispersal ability and other taxon-specific factors (Flather et al. 1997; Gaston 2000; Reyers et al. 2000; Ellingsen & Gray 2002). In contrast to the terrestrial biome (e.g. Howard et al. 1998; Lawton et al. 1998; Cleary et al. 2004; Su et al. 2004), very few studies (but see Adjeroud 1997) have assessed multitaxon diversity patterns in coral reef systems, despite the fact that this can provide important insights into the general dynamics structuring reef community composition. In general, most studies have focused on corals and fish, but we need information on a diverse array of taxa in order to set up high-quality conservation strategies. Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd 77 Beta diversity of tropical marine benthic assemblages Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema In the present study we assessed patterns of beta diversity within four taxonomic groups residing in tropical coral reef environments of the Spermonde Archipelago, Indonesia, namely, sea urchins, sponges, mushroom corals and foraminifera. The four groups represent a diverse array of benthic-dwelling taxa with different life-history strategies. We determined if the spatial variation in beta diversity is related to distance and/or environment using various environmental variables (e.g. depth, reef type, exposure and substrate) and the distance between sample sites. Where appropriate, the analyses were performed at both local and larger spatial sampling scales so that processes acting at different scales may be revealed. Material and Methods Study area All sampling took place in reefs of the Spermonde Archipelago, southwest Sulawesi, Indonesia (Fig. 1). The Spermonde Archipelago is very suitable for biodiversity studies, because it is a well documented carbonate coastal shelf, approximately 40 km across, with several vectorial environmental influences that vary along an on-to-offshore gradient. These influences are related to sewage seepage and pollution from the harbour city of Makassar and fluvial discharge from the river Jene Berang (to the south) and to a lesser extent the river Maros and other smaller rivers to the north of the study area. The Jene Berang contains both land-based sediments as well as waste from the Makassar sewer system, a city that is inhabited by more than 1 million people (Hoeksema 1989; Renema & Troelstra 2001). Additional disturbances over the whole area of the Spermonde reef stem from storms during the monsoon season and from destructive fishing practices (e.g. blast-fishing) (Edinger et al. 1998). Fig. 1. Map of the Spermonde Archipelago in which various reefs were sampled. Isobaths are shown. Inset in upper left hand corner shows the location of the Spermonde archipelago in relation to the island of Sulawesi, Indonesia. The reefs sampled include Badi (Bad: two sites), Bone Baku (Bak: two sites), Barang Barangan (Bar: three sites), Bone Batang (Bat: five sites), Barang Caddi (Cad: five sites), Gusung Trabanasu (GuT: four sites), Gusung Panyoa (GuP: two sites), Kapodosang (Kap: two sites), Karangan (Kar: two sites), Karang Krassi (Kas: one site), Kudingareng Keke (Kud: eight sites), Lae Lae (Lae: three sites), Lae Lae Kecil (LaK: two sites), Lankai (Lan: four sites), Langyukung (Lgy: four sites), Lankadea (Lnk: two sites), Bone Lola (Lol: one site), Barang Lompo (Lom: one site), Lumulumu (Lum: two sites), Polewali (Pol: two sites), Samalona (Sam: five sites) and Bone Tambung (Tam: five sites). Data collection Four taxa (sea urchins, sponges, mushroom corals and larger symbiont-bearing foraminifera) were quantitatively sampled during field surveys in the Spermonde archipelago. Plots were sampled within sites at varying depths. Multiple sites with differing degrees of exposure to the predominant Spermonde current were sampled in each reef. Sea urchins were sampled from March to July 1989 within a total of 12 50 m2 (25 · 2 m) plots over the study area; plots were laid parallel to the coast and identifications were carried out with the aid of a key by Clark & Rowe (1971). Sponges were sampled in 1997 and 2000 within a total of 34 100 m2 (100 · 1 m) plots over the study area. Smaller (cryptic, boring, and thinly encrusting) specimens were excluded. Species were visually iden78 tified in the field, and fragments of unrecognized species were collected for closer examination. Mushroom corals were sampled between 1984 and 1986 within a total of 231 50 m2 (50 · 1 m) plots over the study area. All individual corals were identified to species within the boundaries of the plot; this enabled an accurate abundance quantification including the smallest corals, which are often missed by line transect methods. This is important for mushroom corals because most individuals are small in comparison to other reef corals. The larger symbiontbearing foraminifera (size >0.5 mm) were quantitatively sampled from a total of 180 circular 1000 cm2 plots over the study area. The micro-substrate on which each sample was found was noted and fell within the following five Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema categories: (1) sand; (2) sand with seagrass; (3) sand with coral rubble; (4) coral rubble; (5) reef rock. Samples were sun-dried after which the foraminifera were detached from their substrate. These were then sieved over a 0.5 mm sieve before sorting. Sea urchins and sponges were sampled from reef flats and slopes (depth range: 3–15 m), whereas corals and foraminifera were collected from reef flats, slopes and bases (depth range: 0.5–42 m). Voucher specimens of all taxa from the expeditions have been deposited at the National Museum of Natural History ‘Naturalis’, Leiden and at the Zoological Museum of the University of Amsterdam in the Netherlands. A list of the species sampled and their distribution within the Spermonde Archipelago is available upon request. A summary list is presented in Appendix I. Visually assessed (micro-substrate, exposure, visibility) and remotely sensed environmental variables were noted for each site. Remotely sensed environmental variables were calculated with the use of a GIS image based on automatic and supervised classification processes applied to a SPOT-XS satellite image, K-J/Sat: 320-370/3, recorded on 30 August 1995. Verification by field surveys was completed in December 1995. Additional records and corrections were provided by a BCEOM (Le Bureau Central d’Etudes pour les Equipements d’Outre-Mer) consultant in August 1996. The data were collected as part of the Marine Resource & Education Project and are presently managed by BAKOSURTANAL (Badan Koordinasi Survei dan Pemetaan Nasional), Indonesia. The following remotely sensed environmental classes that were assumed to influence the distribution of taxa were identified and assessed over a 2500 m2 (500 · 500 m) area surrounding each sample site: (1) sedimentary material (sand, coral rubble etc. >60% of each pixel); (2) coral formations (live coral cover >60% of each pixel); (3) sparse coral formations (live coral cover from 40% to 60% of each pixel); (4) dense hard substratum (dead coral, reef rock >60% of each pixel); (5) scattered hard substratum (40–60% of each pixel) and (6) area of human settlement. Analyses For the echinoderms and sponges, analyses were performed at the local scale only. For the corals and foraminifera, analyses were performed at two spatial sampling scales, i.e. at the local scale (plot-level) by using all plot level data at various depths and at the larger scale (site-level) by pooling all plots from different depths within a given site. For all analyses (with the exception of the echinoderms) plots/sites were excluded where <40 individuals were sampled. For the echinoderms only two plots contained <40 individuals (n ¼ 18 and 36). For the coral analyses, two highly impoverished marginal sites were also excluded with very large Beta diversity of tropical marine benthic assemblages densities of the corals Fungia sinensis and F. fragilis, which reproduce asexually by fragmentation (Hoeksema 1989). Ordination Within Primer 5 (Primer-E Ltd, Plymouth, UK), log10 transformed abundance values of species within plots were used to generate a measure of the community similarity between plots using the Bray–Curtis similarity index (Bray & Curtis 1957), an index frequently used for ecological ordinations (Legendre & Gallagher 2001; Cleary 2003) and ranked among the best of coefficients tested by Faith et al. (1987). Again using Primer 5, a two-dimensional ordination of the matrix was generated using non-metric multidimensional scaling (MDS). MDS has been shown to be a robust technique for ordinating species abundance data, and it does not have such stringent model assumptions as the alternative Correspondence Analysis, which assumes unimodal responses of species abundance along environmental gradients (Beck et al. 2002). Association of similarity with environmental and spatial variables Within PRIMER-5 environmental and spatial data were used to generate measures of differences in environmental conditions between plots using Euclidean distances. These included measures of the distance between sites, depth, offshore distance, the remotely sensed area of sedimentary materials, coral formations, sparse coral formations, dense hard substratum, scattered hard substratum and human settlement, micro-substrate (1. sand, 2. rubble and 3. coral for echinoderms and corals and 1. sand, 2. sand with seagrass, 3. sand with coral rubble, 4. coral rubble and 5. reef rock for foraminifera), slope (1: 0–15, 2: 15–30, 3: 30– 45, 4: 45–60), exposure (0: sheltered and 1: exposed) and visibility. Akaike’s information criterion (AIC using Statistica for Windows 6.1, Statsoft, Tulsa, OK, USA) and multiple matrix regression (using PERMUTE! 3.4.9 (Casgrain 2001) were used to assess to what extent community similarity depends upon environmental and/or spatial datasets. In PERMUTE!, options for 999 permutations and Bonferroni-corrected P-to-enter value of 0.10 were selected. The input file for AIC analysis and PERMUTE! consisted of unfolded upper-triangular matrices, read by rows, in a vertical format. Each column in the input file represented an unfolded, upper-triangular matrix-variable, i.e. a single variable for similarity based on the Bray–Curtis similarity index and a single variable for each of the environmental and distance variables (see Casgrain 2001 for a detailed description of the procedure). Akaike’s information criterion is an information-theoretic alternative to standard hypothesis testing statistical Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd 79 Beta diversity of tropical marine benthic assemblages approaches such as multiple regression. Akaike’s information criterion (Akaike 1973) uses an entropy maximization principle as a theoretic basis for the selection of models. Akaike (1973) found a simple relationship between Fisher’s maximized log-likelihood function and the Kullback–Liebler distance (Burnham & Anderson 1998) thereby providing a simple and effective method for selecting the most parsimonious model for the analysis of empirical data. AIC ¼ )2 log(Lh) + 2K, where Lh is the maximized loglikelihood, a function of the unknown parameters h, given the data and the model. K is the number of estimable parameters in the model. AIC is computed for each of the models; the model that minimizes AIC is estimated to be best in the sense of K-L information loss (Burnham & Anderson 2002). Note that the AIC approach does not generate a-significance values, but instead focuses on strength of evidence and generates a measure of uncertainty for each model. In contrast to standard hypothesis tests, such as stepwise multiple regression, which often yield different results depending on the order in which the models are computed, the AIC yields consistent results and is independent of the order of computation. For a detailed description of the AIC approach see Burnham & Anderson (1998, 2001, 2002). Finally, a quantitative variance partitioning technique described in Borcard et al. (1992) was used on results of multiple matrix regressions. This enabled the variation in community composition explained by geographic distance alone, environmental variables alone, and spatial and environmental variables combined to be quantified. Briefly, the procedure was as follows: first, the community similarity matrix was regressed against the total set of environmental and distance matrices to obtain the variance explained by all ¼ RT. Next, the community similarity matrix was regressed against the environmental matrices to obtain RE, and the community similarity matrix was regressed against the distance matrix to obtain RS. It was then possible to calculate the purely environmental fraction RPE ¼ RT ) RS, the purely spatial fraction RPS ¼ RT ) RE, the spatially structured environmental fraction RSE ¼ RE + RS ) RT, and the unexplained variation RUN ¼ 1 ) RT. Results We recorded 9 sea urchin (n ¼ 4025 individuals), 150 sponge (n ¼ 15842), 32 mushroom coral (n ¼ 28935) and 24 foraminifera (n ¼ 76659) species in the Spermonde Archipelago. Multidimensional scaling revealed two main patterns: (1) for sponges and corals a gradient from on-to-offshore with distinct clusters for sites (a) <5 km from the coast, (b) between 5 and 30 km from the coast and (c) more than 30 km from the coast; (2) for foraminifera (large-scale) a clear distinction between 80 Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema exposed and sheltered sites and sites <5 km from the coast and more than 5 km from the coast (Fig. 2). Localscale patterns of corals and foraminifera were predominantly related to variation in depth. The total variation explained by spatial and environmental predictors varied from 24% to 48% (Table 1). The environmental predictors, which explained the greatest proportion of variation in similarity, included distance, depth, exposure and the remotely sensed area of sparse coral formations, offshore distance and to a lesser extent micro-substrate and the remotely sensed area of human settlement (Table 2). Significant but marginal (<1% of variation in similarity explained) environmental predictors included slope, the remotely sensed areas of coral formations, sedimentary areas and scattered and dense hard substrata (Table 2). There was a significant association between distance and sea urchin similarity (b ¼ )0.489, R2 ¼ 0.239, P ¼ 0.007), sponge similarity (b ¼ )0.401, R2 ¼ 0.160, P < 0.001), local-scale coral similarity (b ¼ )0.057, R2 ¼ 0.017, P < 0.001), large-scale coral similarity (b ¼ )0.480, R2 ¼ 0.230, P < 0.001), local-scale foraminifera similarity (b ¼ )0.090, R2 ¼ 0.008, P < 0.001) and large-scale foraminifera similarity (b ¼ )0.160, R2 ¼ 0.026, P < 0.001) (Fig. 3). The purely spatial component, however, explained 0% of variation in all groups except corals at the local scale (0.17% of total variation explained) and sea urchins (2.68% of total variation explained). The environmental component (pure and spatially structured), however, explained more variation in similarity for all taxa (Table 1). Discussion In the present study we quantitatively show that coral reef assemblages are spatially heterogeneous and that this heterogeneity is strongly related to deterministic (environmental) processes. Each taxon responded to different sets of environmental conditions. Coral reef communities observed over yearly to decadal time scales demonstrated that species composition fluctuates greatly when the environment changes (Bak & Nieuwland 1995; Connell et al. 1997; Pandolfi 2002; Connell et al. 2004). Therefore, we cannot make strict comparisons between the four taxa because the data of this study were collected from different time periods, but we can tentatively summarize some qualitative congruencies that were observed. Environmental variables, for example, influenced community similarity significantly in all taxa. Human settlement in particular was significantly associated with variation in the community composition of sponges and foraminifera, but not in sea urchins or mushroom corals. Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema Beta diversity of tropical marine benthic assemblages Fig. 2. Multi-dimensional scaling ordination of (a) sea urchins (b) sponges, (c) corals [localscale], (d) corals [large-scale], (e) foraminfera [local-scale] and (f) foraminifera [large-scale]. Closer points indicate more similar assemblages. Ex05: exposed sites within 5 km of the coast, Ex15: exposed sites 5 < x < 15 km off the coast, Ex30: exposed sites 15 < x < 30 km off the coast, Ex >30: exposed sites >30 km off the coast, Sh05: sheltered sites within 5 km of the coast, Sh15: sheltered sites 5 < x < 15 km off the coast, Sh30: sheltered sites 15 < x < 30 km off the coast, Sh >30: sheltered sites >30 km off the coast. For species that have limited dispersal abilities, distance or a spatial component are expected to be important structuring factors in community similarity, which would result in assemblages from sites close together being more similar than assemblages further apart. Distance between sites can, however, also be a function of differences in spatially explicit environmental variables (Borcard et al. 1992; Harrison et al. 1992; Ohmann & Spies 1998). This may hold true for the Spermonde, where there is a cross-shelf vectorial gradient of decreasing land-based influence and increasing depth and photic zone (Hoeksema 1989; Edinger et al. 1998; Renema 2002). Therefore, we differentiated between purely spatial components, spatially structured and purely environmental components. Although we found a significant association between distance and community similarity in all four taxa, this was weak, with the exception of the sea urchins. When we differentiated distance, our results showed that environmental components explained more of the variation in community similarity than the purely spatial component (Table 1). The purely spatial component in fact explained none of the variation in community similarity of sponges and foraminifera (at both local and large scale), and little of the variation of corals at the local scale. The lack of a relationship between distance and community similarity in sponges and foraminifera suggests that dispersal limitation is unimportant in structuring these assemblages across the Spermonde Archipelago. Many sponge species are widespread in the Spermonde Archipelago, an indication of high connectivity of the individual reefs across the shelf. Dispersal limitation may be more pronounced at larger spatial scales where major barriers to dispersal become apparent (Barber et al. 2002). The spatial component had a greater influence on the sea urchin community than any of the other taxa observed in this study. Possibly, dispersal limitation governs the community structure of this taxon to a greater degree than the other taxa. This may, however, be a result of the limited number of sample sites for sea urchins. The larvae of most sea urchin species have an obligate period of planktonic development (from weeks to months), which should enable their larvae to Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd 81 Beta diversity of tropical marine benthic assemblages Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema Table 1. Results of AIC and matrix regression analyses. group model AIC sea urchins best model environment distance best model environment distance best model environment distance best model environment distance best model environment distance best model environment distance 566 582 566 4178 4178 4396 109106 109109 115308 6855 6855 7003 227691 227691 237338 3601 3601 3881 sponges corals – local corals – large foraminifera – local foraminifera – large DAIC 17 0 0 218 0 6200 0 148 0 9647 0 280 R2 PS SSE 0.239 0.213 0.239 0.429 0.429 0.157 0.402 0.402 0.014 0.352 0.352 0.230 0.297 0.297 0.016 0.484 0.484 0.022 2.68 21.25 0.00 23.94 0.00 15.74 27.14 42.88 0.03 1.41 38.80 40.24 0.00 23.03 12.13 35.16 0.00 1.59 28.09 29.68 0.00 2.17 46.19 48.35 PE total DAIC, difference in AIC value between given model or variable and the best overall model; PS, purely spatial component; SSE, spatially structured environmental component; PE, purely environmental component; Total, total variance explained by best model; AIC, Akaike’s information criterion. Table 2. Environmental variables selected with the AIC analyses. group environmental variables sea urchins sponges corals – local distance (offshore distance) depth, coral formations, sparse coral formations, human settlement, transparency distance, dense substratum, depth, slope, sparse coral formations, sedimentary materials, micro-substrate, exposure, offshore distance coral formations, sedimentary materials, sparse coral formations, exposure, offshore distance depth, human settlement, coral formations, sparse coral formations, micro-substrate, exposure, transparency coral formations, sparse coral formations, exposure, transparency corals – large foraminifera – local foraminifera – large AIC, Akaike’s information criterion. disperse greater distances in ocean currents (Hart 2002; Shanks et al. 2003; Siegel et al. 2003). Furthermore, sea urchins, in contrast to sponges, corals and foraminifera, are frequently collected by people at reef flats for consumption, which undoubtedly has strong effects on the distribution (W. Renema, personal observations). The association with distance itself may also be due to an unmeasured but strongly distance-dependent environmental variable. In a multi-taxon study (corals, sponges, echinoderms, macro algae and molluscs) in French Polynesia, Adjeroud (1997) found that environmental variables explained far less of the variation in community similarity of echinoderms than other taxa (e.g. 29.6% for echinoderms versus 65% for sponges). The distribution of echinoderms in French Polynesia was 82 primarily influenced by the concentration of carbonates, a factor we did not measure. Sea urchins were also found to be more restricted in their distribution than other organisms measured in a study of Norwegian macrobenthos and additionally the beta-diversity of echinoderms had the weakest association with environmental variables of all the taxa observed (Ellingsen & Gray 2002). Sponge composition was significantly associated with depth, visibility, the area of sparse coral formations and human settlement. Two major changes to the local environment, as a result of human settlement, include increased sedimentation and increased eutrophication. Both of these have been shown to affect sponges (Aerts & van Soest 1997; Bell & Barnes 2000; Holmes 2000). Adjeroud (1997) Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema Beta diversity of tropical marine benthic assemblages Fig. 3. Relationship between community similarity based on the Bray–Curtis similarity index and distance from the coast for (a) sea urchins (b) sponges, (c) corals [local-scale], (d) corals [large-scale], (e) foraminfera [localscale] and (f) foraminifera [large-scale]. found that sponge communities in French Polynesia were significantly associated with depth, sand, abundance of echinoids, C/N, silicates, distance from coastline and carbohydrates. At the local scale mushroom coral composition was primarily related to a number of environmental variables including depth, exposure, micro-substrate, slope and remotely sensed habitat classes. At the larger scale, coral composition was related to offshore distance and the remotely sensed area of sparse coral formations and coral formations surrounding the sample site. Micro-substrate, exposure and slope are closely inter-related because the eastern (leeward) side of reefs in the Spermonde have a lower slope and are sheltered, which results in higher rubble and sand cover at these locations (Hoeksema 1989; Renema 2002). In contrast to attached corals, free-living mushroom corals can live on various substrata and actually act as if they are part of the rubble, depending on their size (Hoeksema 1988, 1991a). However, this is usually the case for species that dwell on reef flats and slopes and not for species that live on the sandy substrata of the deeper reef bases (Hoeksema 1989). In the Flores Sea, bottom inclination, water turbulence and substratum type appeared to be important environmental factors controlling fungiid coral species composition (Hoeksema & Moka 1989). At the local scale, foraminifera similarity was related to depth, human settlement, micro-substrate, exposure, transparency and the remotely sensed area of coral formations and sparse coral formations. At the large scale, foraminifera composition was related to exposure, transparency and the remotely sensed area of sparse coral formations, and coral formations. The reef-slope foraminifera fauna can be differentiated into exposed and sheltered assemblages (Renema & Troelstra 2001). The exposed slope is characterized by high coral cover with sparse patches of coral rubble and high hydronamic energy. Foraminifera living at the exposed site are either characterized by being able to attach strongly to the substratum (Calcarina spengleri, Heterostegina depressa, Amphisorus spp.) or live sheltered between the rubble (Amphistegina radiata). Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd 83 Beta diversity of tropical marine benthic assemblages Taken together, the predictor matrices explained between 24% and 48% of the variation in community similarity of the four taxa over the Spermonde shelf. A large amount of variation of the taxa we studied thus remained unexplained, which is often the case in studies of tropical assemblages. The percentage of variation explained in this study falls within the range of similar studies for plants, birds, insects and fish (Borcard et al. 1992; Adjeroud 1997; Duivenvoorden et al. 2002; Githaiga-Mwicigi et al. 2002; Tuomisto et al. 2003; Cleary et al. 2004). Unexplained variation may be due to large regional-scale processes (e.g. geography, oceanic transport and climate), historical factors (e.g. sporadic events such as heavy storms), rare species (singletons), biotic factors (competition and other elements related to species life history and demography may influence distribution patterns), and/or unmeasured environmental factors (Borcard et al. 1992; Karlson & Cornell 1998). Environmental factors (pure and spatially structured) explained the observed variation in community similarity to a greater degree than distance in all taxa. This would imply that the community structure of the marine benthic taxa is more deterministically than stochastically governed. Analogous results of the stronger effect of environmental as opposed to spatial variables on community similarity have been reported in studies of flora and fauna in tropical forests and marine macrofauna in European marine sediments (Condit et al. 2002; Duivenvoorden et al. 2002; Ellingsen 2002; Ellingsen & Gray 2002; Cleary et al. 2004). At the local scale, depth was strongly correlated with the distribution of all taxa except sea urchins. Key environmental variables change with depth; each vertical depth zone, for example, has a different degree of light regime, temperature and wave energy, so different species are adapted to such a set of variables thereby leading to different community structures. Many of the species in these tropical taxa contain photosynthesizing endosymbionts (Wilkinson & Trott 1985; Hoeksema 1989; Wilkinson & Cheshire 1989; Renema 2002). Light intensity diminishes rapidly with increased depth thereby representing a limiting factor for photosensitive species. Depth has been previously recorded as an important factor in the distribution of sponges, mushroom corals and foraminifera (Hooper & Kennedy 2002; Renema 2002; Langer & Lipps 2003). Ellingsen (2002) found that the beta diversity of Norwegian macrobenthic taxa was strongly related to environmental variables, particularly depth and habitat structure (e.g. grain size). Depth may be less of a limiting factor for sea urchins, because they generally do not contain photosynthesizing endosymbionts, although they are mobile grazers and thus can be indirectly influenced by light. 84 Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema The results of this study suggest that substantial variation in similarity can be predicted using simple locally assessed environmental variables combined with remotely sensed parameters. Acknowledgements We are grateful to Prof. Dr Alfian Noor and the rector of Hasanuddin University for support given in Makassar, Indonesia. 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(2002) Species diversity – scale matters. Science, 295, 1245–1248. See Appendix I overleaf Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd 87 Beta diversity of tropical marine benthic assemblages Becking, Cleary, de Voogd, Renema, de Beer, van Soest & Hoeksema Appendix I. List of species sampled in the Spermonde Archipelago and their abundance (total number of individuals per sample). Note that only common (n ‡ 40 individuals) sponge species are shown. The full list of species and their distribution within the Spermonde Archipelago is available upon request. mushroom corals n foraminifera n sea urchins n Ctenactis albitentaculata Hoeksema Ctenactis crassa (Dana) Ctenactis echinata (Pallas) Fungia concinna Verrill Fungia costulata Ortmann Fungia cyclolites Lamarck Fungia fragilis (Alcock) Fungia fralinae Nemenzo Fungia fungites (Linnaeus) Fungia granulosa Klunzinger Fungia gravis Nemenzo Fungia horrida Dana Fungia moluccensis van der Horst Fungia paumotensis Stutchbury Fungia repanda Dana Fungia scabra Doderlein Fungia scruposa Klunzinger Fungia scutaria Lamarck Fungia sinensis (Milne Edwards & Haime) Fungia somervillei Gardiner Fungia tenuis Dana Fungia vaughani Boschma Halomitra pileus (Linnaeus) Heliofungia actiniformis (Quoy & Gaimard) Herpolitha limax (Esper) Lithophyllon mokai Hoeksema Lithophyllon undulatum Rehberg Podabacia crustacea (Pallas) Polyphyllia talpina (Lamarck) Sandalolitha dentata Quelch Sandalolitha robusta (Quelch) Zoopilus echinatus Dana 65 156 1463 2897 977 14 376 623 3602 824 247 1228 1229 1850 6517 506 1249 314 425 25 873 35 154 325 1330 249 139 146 308 59 497 7 Alveolinella quoyii (d’ Orbigny) Amphisorus cf. sauronensis Lee Amphisorus spec2 Amphistegina lessonii d’ Orbigny Amphistegina lobifera Larsen Amphistegina papillosa Said Amphistegina radiata (Fichtel & Moll) Baculogypsinoides spinosus Yabe & Hanzawa Calcarina gaimardi d’ Orbigny Calcarina mayori Cushman Calcarina quoyii d’ Orbigny Calcarina spengleri (Gmelin) Celanthus craticulatum (Fichtel & Moll) Dendritina ambigua (Fichtel & Moll) Heterostegina depressa d’ Orbigny Laevipeneroplis malayensis Hofker Neorotalia calcar (d’ Orbigny) Operculina ammonoides (Gronovius) Operculina complanata (Defrance) Palaeonummulites venosus (Fichtel & Moll) ‘Parasorites’ spec2 Peneroplis pertusus (Forskal) Peneroplis planatus (Fichtel & Moll) Sorites orbiculus (Forskal) 233 1945 478 24485 7005 1524 7583 766 111 807 4209 3367 5009 414 3803 15 2502 9032 6 644 461 95 1903 78 Diadema savignyi (Adouin) Diadema setosum (Leske) Echinometra mathaei (de Blainville) Echinostrephus molaris (de Blainville) Echinothrix calamaris (Pallas) Echinothrix diadema (Linnaeus) Mespilia globulus (Linnaeus) Toxopneustes pileolus (Lamarck) Tripneustes gratilla (Linnaeus) 20 3694 75 43 53 2 2 10 126 sponges n sponges n Aaptos suberitoides (Brøndsted) Acanthella cavernosa Dendy Acanthodendrilla sp. ‘‘black‘‘ Acanthostrongylophora ingens (Thiele) Amphimedon paraviridis Fromont Axinyssa sp. ‘‘yellow‘‘ Biemna triraphis (Topsent) Callyspongia aerizusa Desqueyroux-Faúndez Callyspongia aff.pseudofibrosa Callyspongia aff. subarmigera Callyspongia biru de Voogd Callyspongia sp. ‘‘brown‘‘ Chalinula hooperi Nishiyama & Bakus Cinachyrella australiensis Carter Clathria basilana Lévi Clathria cervicornis (Thiele) Clathria mixta Hentschel Clathria reinwardti (Vosmaer) Coelocarteria singaporense Carter Coscinoderma aff. matthewsi Dactylospongia elegans Thiele Dasychalina fragilis Dysidea arenaria Bergquist Echinodictyum flabelliforme (Keller) Gelliodes callista de Laubenfels Gelliodes fibulata Carter Haliclona amboinensis Lévi Haliclona fascigera Hentschel Haliclona sp. ‘‘blue‘‘ Haliclona sp. ‘‘brown’’ Haliclona sp. ‘‘pink’’ Hyrtios erectus Keller 727 81 105 364 1895 52 98 166 213 237 373 158 439 89 109 491 171 1593 63 47 55 57 54 61 51 213 207 105 602 197 76 896 Hyrtios reticulatus (Thiele) Iotrochota baculifera Ridley Iotrochota purpurea Bowerbank Ircinia ramosa Keller Ircinia sp. ‘‘pink’’ Ircinia sp. ‘‘red’’ Jaspis splendens de Laubenfels Lamellodysidea herbacea Keller Liosina paradoxa Thiele Melophlus sarassinorum Thiele Neopetrosia carbonaria (Lamarck) Neopetrosia exigua Kirkpatrick Niphates olemda de Laubenfels Oceanapia sagittaria (Sollas) Oceanapia sp. ‘‘white’’ Paratetilla bacca (Selenka) Penares sollasi Thiele Pericharax heteroraphis (Poléjaeff) Petrosia hoeksemai de Voogd & van Soest Petrosia nigricans Lindgren Phyllospongia papyracea (Esper) Placospongia melobesioides Gray Pseudoceratina arabica (Keller) Spheciospongia congenera (Ridley ) Stylissa carteri (Dendy) Theonella swinhoei Gray Ulosa sp. Xestospongia aff. mammillata Xestospongia mammillata Pulitzer-Finali Xestospongia sp. ‘‘pink‘‘ Xestospongia testudinaria Lamarck Xestospongia vansoesti Nishiyama & Bakus 113 217 82 111 67 49 76 764 66 144 52 146 111 40 81 72 147 44 459 283 139 53 165 232 561 78 63 47 68 58 70 52 88 Marine Ecology 27 (2006) 76–88 ª 2006 The Authors. Journal compilation ª 2006 Blackwell Publishing Ltd