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A Journal of Conservation Biogeography Diversity and Distributions, (Diversity Distrib.) (2014) 1–13 BIODIVERSITY RESEARCH Land use patterns skew sex ratios, decrease genetic diversity and trump the effects of recent climate change in an endangered turtle Brendan N. Reid* and M. Z. Peery Department of Forest and Wildlife Ecology, University of Wisconsin-Madison, Madison, WI, USA ABSTRACT Aim Changes in both land use and climate can cause population declines and species extinctions, but the relative effects of these two stressors are often dependent on species-specific life histories. Turtles are highly threatened as a taxonomic group and are particularly sensitive to environmental change due to their life history, habitat preferences and physiology. We used both sex data and genetic diversity across a landscape-scale gradient in land use intensity and recent climate change to characterize the relative effects of these factors on three turtle species (including the endangered Blanding’s turtle, Emydoidea blandingii) with different life histories and thus different vulnerabilities to environmental change. Location Wisconsin, USA. Diversity and Distributions Methods Turtles were captured and sampled for genetic analyses at 18 sites. Sampled individuals were genotyped for species-specific sets of microsatellite markers, and population-level genetic diversity was assessed using rarefied allelic richness and heterozygosity. The relative effects of road density, public land area and recent climate change on genetic diversity and sex ratio were evaluated using regression methods and model-selection criteria. Results Increased land use intensity was associated with male-skewed sex ratios and decreased genetic diversity in E. blandingii but not co-occurring species. Recent climate change did not explain variability in either sex ratio or genetic diversity for any of the three species examined. *Correspondence: Brendan N. Reid, Department of Forest and Wildlife Ecology, University of Wisconsin-Madison 1630 Linden Drive, Madison, WI 53706, USA. E-mail: [email protected] Main conclusions Changing land use has multiple impacts on turtle populations that are modulated by species-specific life history traits. Extensive terrestrial movements associated with nesting in E. blandingii increase female vulnerability to road mortality, which in turn has led to declines in genetic diversity. The predicted effects of recent climate change may have been dampened by behavioural plasticity. We suggest that the disproportionate effect of land use on E. blandingii warrants greater legal protection for this species. Keywords Climate change, genetic diversity, land use, sex ratios, temperature-dependent sex determination, turtles. Ongoing changes in land use and climate are projected to cause shifts in species’ geographic ranges and increase extinction rates (Hansen et al., 2001; Thomas et al., 2004; Jetz et al., 2007). Currently, the impacts of land use on geographic ranges and community composition are more apparent than the effects of climate change, but analyses that control for the effects of land use show a clear signature of the impact of contemporary temperature increases across a range of taxa (Parmesan & Yohe, 2003). The relative effects of land use and climate will vary among species due to ª 2014 John Wiley & Sons Ltd DOI: 10.1111/ddi.12243 http://wileyonlinelibrary.com/journal/ddi INTRODUCTION 1 B. N. Reid and M. Z. Peery differences in life history strategies (Hoehn et al., 2007; Callens et al. 2007, Perry et al., 2005; Jiguet et al., 2007). Thus, effective conservation planning will require accurate assessments of the relative effects of climate change and land use, as well as an understanding of how these effects are modulated by interspecific differences (Pressey et al., 2007; Nelson et al., 2009; Hof et al., 2011). Turtles (Order Chelonia) are one of the most threatened animal taxa globally (Buhlmann et al., 2009), as well as one of the most endangered groups of reptiles (B€ ohm et al., 2013). Land use change, particularly the expansion of road systems and urban areas, has been implicated as a potential cause for declines in turtles (Gibbs & Shriver, 2002). Roads reduce population size and genetic diversity in many species, with amphibians and reptiles particularly vulnerable to these effects (Fahrig & Rytwinski, 2009; Holderegger & Di Giulio, 2010; Jackson & Fahrig, 2011). Additionally, in aquatic turtle species, females must travel overland to find nest sites and roads thus are likely to cause female-biased mortality and male-biased adult sex ratios (Steen et al., 2006). Skewed sex ratios can in turn reduce population growth rates through Allee effects (Stephens et al., 1999) and increase the rate at which genetic variation is lost via reductions in effective population size (Frankham, 1995). The population-level effects of road mortality are likely to be modulated by species-level characteristics, and larger or more terrestrial species are more likely to experience declines due to roads (Gibbs & Shriver, 2002). Climate change may also distort sex ratios in turtles as most species exhibit temperature-dependent sex determination (TSD; Janzen, 1994a; Mitchell & Janzen, 2010). For many turtle species with TSD, changes in incubation temperature of only 1–2°C around the pivotal sex-determining threshold temperature are sufficient to cause nearly 100% shifts in clutch sex ratio (Ewert et al. 1994). Plasticity in nesting behaviour or physiological adaptation will likely mitigate climate change impacts on turtles to some degree (Tucker et al., 2008; Refsnider & Janzen, 2012). However, few empirical studies have been conducted examining the effects of ongoing climate change on sex ratio, and our understanding of the potential effects of climate change in species with TSD relies mainly on modelling of nest temperatures under different climate change scenarios. For loggerhead sea turtles (Caretta caretta) nesting in North Carolina, a 2°C increase in air temperature led to change in the predicted hatchling sex ratio of more than 20% (Hawkes et al., 2007). In the painted turtle (Chrysemys picta), modelling predicts a persistent change in adult sex ratios of a similar magnitude following a 1°C change in air temperature even after accounting for potential adaptive response (Morjan, 2003a). In this study, we characterized the relative impacts of recent, regional-scale changes in climate and land use patterns on three species with different life history strategies in Wisconsin, USA. The effects of variability in nest microclimate and yearly climate on clutch and cohort sex ratios are well documented (Janzen, 1994b; Weisrock & Janzen, 1999; 2 Juliana et al., 2004; Schwanz et al., 2010). Our intent in this study was to ascertain whether recent trends in macroclimate have sufficiently altered nest microclimate to produce changes in population sex ratio. Furthermore, past research on the effects of roads has often focused on small-scale variability in road density (i.e. within urban areas; Patrick & Gibbs, 2010) or on situations where individual roads are likely to dominate other factors that may affect the population (i.e. populations adjacent to highways; Steen & Gibbs, 2004). Thus, these studies have excluded the effects of landscape-level change in land use and the potential additive or interactive effects of climate. Recent warming in Wisconsin has been spatially heterogeneous (Kucharik et al., 2010), meaning that climate-induced changes in sex ratio could mask the effects of sex-biased adult mortality in some areas. This heterogeneity, however, also provides an opportunity to simultaneously test the effects of landscape-scale variation in climate change and land use. We used population sex ratio and genetic diversity as metrics to examine the impacts of land use and climate change on turtles with the expectation that effects would vary among species due to life history. We expected that sex ratio should be sensitive to both climate-related changes in hatchling sex ratio and female-biased road mortality in adults. We expected that genetic diversity should be mainly sensitive to population reductions caused by increased road mortality, but could also be impacted by reduction in effective population size resulting from biased sex ratios associated with either climate change or sex-biased adult mortality. We examined three co-occurring species: the globally endangered (van Dijk & Rhodin, 2010), semi-aquatic Blanding’s turtle (Emydoidea blandingii) as well as two more common aquatic species, the painted turtle (Chrysemys picta) and snapping turtle (Chelydra serpentina). We predicted that sex ratios would be male-biased and genetic diversity would be lower at sites with higher land use intensity and that land use would have a greater impact on E. blandingii due to long overland nesting movements in this species (Beaudry et al., 2010; Steen et al., 2012). Summer temperatures in portions of Wisconsin have increased approximately 1°C while remaining stable in other parts of the state (Wisconsin Initiative on Climate Change Impacts (WICCI) 2001), and simulations predict a roughly 20% shift towards more femalebiased population sex ratios in C. picta after a 1°C increase in July air temperature (Morjan, 2003a). While simulations of the effects of climate on hatchling sex ratio have not been conducted for all species, the male-female transitional range of temperatures is similar for C. picta (Bull et al., 1982) and C. serpentina (Ewert et al., 2005) at northern latitudes as well as E. blandingii (Gutzke & Packard, 1987), and as such a similar relationship between summer temperature and sex should hold in all three species. We predicted that shifts in hatchling sex ratio caused by recent climate change are most likely to manifest as changes in population-level sex ratio for C. picta, which has shorter generation times and higher population turnover rates than E. blandingii (Congdon et al., Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd Land use, climate change, and turtles Table 1 Average landscape and climate characteristics, capture sex ratio and genetic diversity statistics for all sites. Road density is given in km/km2, public land in km2 and temperature change in °C Site code Road density Public land area (A) Emydoidea blandingii BR 0.46 71.13 CL 2.96 0.38 CM* 0.86 45.28 EC 1.33 28.58 FT 0.90 67.76 GP† 4.98 0.34 KM 1.62 17.46 MC 1.94 12.55 MN† 3.07 2.31 MU 1.12 13.51 MZ 0.76 15.67 NV 0.77 47.39 RB† 1.63 17.86 SH 0.61 39.87 0.98 11.77 TB† (B) Chrysemys picta BR 0.46 71.18 CH 0.93 24.20 CL 2.96 0.38 EC 1.70 19.20 FT 1.14 69.40 KM 1.68 12.06 MC 2.05 12.38 MN 4.93 1.34 MR 1.00 2.87 MU 1.08 13.52 MZ 0.73 15.55 NV 0.66 42.89 SH 0.62 37.78 TB 0.88 17.75 WR 0.90 20.00 (C) Chelydra serpentina BR 0.45 71.13 CH 0.91 30.47 CL† 2.96 0.38 EC 1.46 22.86 FT* 1.14 69.40 KM 1.65 10.84 MN* 4.93 1.34 MR 1.04 2.84 MU 1.12 13.03 MZ* 0.73 15.55 SH 0.59 40.12 TB 0.87 19.86 WR 0.79 28.99 Temperature change Adults trapped Proportion male Genetic samples Allelic richness Observed heterozygosity 0.38 0.15 1.04 0.40 0.29 0.96 0.01 1.13 0.19 0.28 0.06 0.15 0.20 0.67 0.23 7 4 – 11 6 5 11 12 15 8 7 7 11 67 2 0.57 0.75 – 0.45 0.17 0.80 0.64 0.75 0.87 0.38 0.71 0.86 0.55 0.60 0.50 7 9 15 11 15 – 11 15 – 32 7 8 – 241 – 4.14 3.43 4.37 4.01 4.23 – 4.49 3.7 – 4.12 3.86 4.42 – 4.26 – 0.66 0.50 0.68 0.59 0.64 – 0.62 0.59 – 0.62 0.64 0.71 – 0.60 – 0.38 0.51 0.15 0.45 0.28 0.00 1.13 0.17 0.16 0.27 0.06 0.15 0.67 0.23 0.31 30 23 19 112 9 107 37 47 15 70 12 21 268 57 74 0.73 0.78 0.58 0.70 0.89 0.72 0.81 0.79 0.20 0.84 1.00 0.81 0.68 0.74 0.81 32 24 23 33 13 54 40 33 17 34 13 23 60 30 32 5.72 5.72 6.01 5.4 5.25 6.18 6 5.92 5.01 5.39 5.94 5.69 5.67 5.79 6.27 0.69 0.73 0.75 0.74 0.69 0.74 0.72 0.73 0.70 0.63 0.67 0.74 0.72 0.70 0.77 0.38 0.57 0.15 0.42 0.28 0.01 0.17 0.16 0.24 0.06 0.67 0.23 0.33 9 7 2 17 – 33 – 5 8 – 47 17 24 0.89 0.86 0.5 0.53 – 0.67 – 1.00 0.63 – 0.64 0.53 0.88 9 9 4.85 5.22 – 5.24 5.22 5.19 4.86 4.11 5.17 4.67 5.25 5.04 4.85 0.61 0.71 – 0.70 0.76 0.67 0.69 0.73 0.65 0.64 0.68 0.62 0.63 – 23 7 45 15 13 8 7 27 18 27 *Sex ratio data were not available for a site. Genetic data were not available for a site (as the number of genetic samples was below the cut-off of 7). † Dependent variables considered were allelic richness and observed heterozygosity. Heterozygosity data were arcsinesquare-root-transformed (FitzSimmons et al., 1995). Means of landscape or climate data over all individuals from a site Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd were used as the independent variables in genetic diversity models. We evaluated models incorporating each additive combination of explanatory variables, as well as models incorporating two-way interactions between each land use variable and 5 B. N. Reid and M. Z. Peery Jetz, W., Wilcove, D.S. & Dobson, A.P. (2007) Projected impacts of climate and land-use change on the global diversity of birds. PLoS Biology, 5, e157. Jiguet, F., Gadot, A.-S., Julliard, R., Newson, S.E. & Couvet, D. (2007) Climate envelope, life history traits and the resilience of birds facing global change. 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Perry, A.L., Low, P.J., Ellis, J.R. & Reynolds, J.D. (2005) Climate change and distribution shifts in marine fishes. Science, 308, 1912–1915. Pressey, R.L., Cabeza, M., Watts, M.E., Cowling, R.M. & Wilson, K.A. (2007) Conservation planning in a changing world. Trends in Ecology & Evolution, 22, 583–592. R Core Team (2012) R: a language and environment for statistical computing. R Foundation for Statistical Computing, Vienna, Austria. ISBN 3-900051-07-0. Available from http://www.R-project.org/. Refsnider, J.M. & Janzen, F.J. (2012) Behavioural plasticity may compensate for climate change in a long-lived reptile with temperature-dependent sex determination. Biological Conservation, 152, 90–95. Refsnider, J.M., Bodensteiner, B.L., Reneker, J.L. & Janzen, F.J. (2013) Nest depth may not compensate for sex ratio skews caused by climate change in turtles. Animal Conservation, 16, 481–490. Refsnider, J.M., Milne-Zelman, C., Warner, D.A. & Janzen, F.J. (2014) Population sex ratios under differing local climates in a reptile with environmental sex determination. Evolutionary Ecology, (DOI: 10.1007/s10682-014-9710-2). Schwanz, L.E., Spencer, R.-J., Bowden, R.M. & Janzen, F.J. (2010) Climate and predation dominate juvenile and adult recruitment in a turtle with temperature-dependent sex determination. Ecology, 91, 3016–3026. Sethuraman, A., McGaugh, S.E., Becker, M.L., Chandler, C.H., Christiansen, J.L., Hayden, S., LeClere, A., MonsonMiller, J., Myers, E.M., Paitz, R.T., Refsnider, J.M., VanDeWalle, T.J. & Janzen, F.J. (2013) Population genetics of Blanding’s turtle (Emys blandingii) in the midwestern United States. Conservation Genetics, 15, 1–13. Smith, G.R. & Iverson, J.B. (2002) Sex ratio of common musk turtles (Sternotherus odoratus) in a north-central Indiana lake: a long-term study. The American Midland Naturalist, 148, 185–189. Steen, D.A. & Gibbs, J.P. (2004) Effects of roads on the structure of freshwater turtle populations. Conservation Biology, 18, 1143–1148. Steen, D.A., Aresco, M.J., Beilke, S.G., Compton, B.W., Condon, E.P., Dodd, J., Forrester, H., Gibbons, J.W., Greene, J.L., Johnson, G., Langen, T.A., Oldham, M.J., Oxier, D.N., Saumure, R.A., Schueler, F.W., Sleeman, J.M., Smith, L.L., Tucker, J.K. & Gibb, J.P. (2006) Relative vulnerability of female turtles to road mortality. Animal Conservation, 9, 269–273. Steen, D.A., Gibbs, J.P., Buhlmann, K.A., Carr, J.L., Compton, B.W., Congdon, J.D., Doody, J.S., Godwin, J.C., Holcomb, K.L., Jackson, D.R., Janzen, F.J., Johnson, G., Jones, M.T., Lamer, J.T., Langen, T.A., Plummer, M.V., Rowe, Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd Land use, climate change, and turtles Table 1 Average landscape and climate characteristics, capture sex ratio and genetic diversity statistics for all sites. Road density is given in km/km2, public land in km2 and temperature change in °C Site code Road density Public land area (A) Emydoidea blandingii BR 0.46 71.13 CL 2.96 0.38 CM* 0.86 45.28 EC 1.33 28.58 FT 0.90 67.76 GP† 4.98 0.34 KM 1.62 17.46 MC 1.94 12.55 MN† 3.07 2.31 MU 1.12 13.51 MZ 0.76 15.67 NV 0.77 47.39 RB† 1.63 17.86 SH 0.61 39.87 0.98 11.77 TB† (B) Chrysemys picta BR 0.46 71.18 CH 0.93 24.20 CL 2.96 0.38 EC 1.70 19.20 FT 1.14 69.40 KM 1.68 12.06 MC 2.05 12.38 MN 4.93 1.34 MR 1.00 2.87 MU 1.08 13.52 MZ 0.73 15.55 NV 0.66 42.89 SH 0.62 37.78 TB 0.88 17.75 WR 0.90 20.00 (C) Chelydra serpentina BR 0.45 71.13 CH 0.91 30.47 CL† 2.96 0.38 EC 1.46 22.86 FT* 1.14 69.40 KM 1.65 10.84 MN* 4.93 1.34 MR 1.04 2.84 MU 1.12 13.03 MZ* 0.73 15.55 SH 0.59 40.12 TB 0.87 19.86 WR 0.79 28.99 Temperature change Adults trapped Proportion male Genetic samples Allelic richness Observed heterozygosity 0.38 0.15 1.04 0.40 0.29 0.96 0.01 1.13 0.19 0.28 0.06 0.15 0.20 0.67 0.23 7 4 – 11 6 5 11 12 15 8 7 7 11 67 2 0.57 0.75 – 0.45 0.17 0.80 0.64 0.75 0.87 0.38 0.71 0.86 0.55 0.60 0.50 7 9 15 11 15 – 11 15 – 32 7 8 – 241 – 4.14 3.43 4.37 4.01 4.23 – 4.49 3.7 – 4.12 3.86 4.42 – 4.26 – 0.66 0.50 0.68 0.59 0.64 – 0.62 0.59 – 0.62 0.64 0.71 – 0.60 – 0.38 0.51 0.15 0.45 0.28 0.00 1.13 0.17 0.16 0.27 0.06 0.15 0.67 0.23 0.31 30 23 19 112 9 107 37 47 15 70 12 21 268 57 74 0.73 0.78 0.58 0.70 0.89 0.72 0.81 0.79 0.20 0.84 1.00 0.81 0.68 0.74 0.81 32 24 23 33 13 54 40 33 17 34 13 23 60 30 32 5.72 5.72 6.01 5.4 5.25 6.18 6 5.92 5.01 5.39 5.94 5.69 5.67 5.79 6.27 0.69 0.73 0.75 0.74 0.69 0.74 0.72 0.73 0.70 0.63 0.67 0.74 0.72 0.70 0.77 0.38 0.57 0.15 0.42 0.28 0.01 0.17 0.16 0.24 0.06 0.67 0.23 0.33 9 7 2 17 – 33 – 5 8 – 47 17 24 0.89 0.86 0.5 0.53 – 0.67 – 1.00 0.63 – 0.64 0.53 0.88 9 9 4.85 5.22 – 5.24 5.22 5.19 4.86 4.11 5.17 4.67 5.25 5.04 4.85 0.61 0.71 – 0.70 0.76 0.67 0.69 0.73 0.65 0.64 0.68 0.62 0.63 – 23 7 45 15 13 8 7 27 18 27 *Sex ratio data were not available for a site. Genetic data were not available for a site (as the number of genetic samples was below the cut-off of 7). † Dependent variables considered were allelic richness and observed heterozygosity. Heterozygosity data were arcsinesquare-root-transformed (FitzSimmons et al., 1995). Means of landscape or climate data over all individuals from a site Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd were used as the independent variables in genetic diversity models. We evaluated models incorporating each additive combination of explanatory variables, as well as models incorporating two-way interactions between each land use variable and 5 B. N. Reid and M. Z. Peery the climate variable. Relative support for each model was determined using Akaike’s information criterion corrected for small sample size (AICc; Burnham & Anderson, 2002). AICc was calculated using the R package AICcmodavg version 1.35 (Mazerolle, 2013). We considered all candidate models that were ranked higher than the base model (containing either the intercept only or, for the logistic regression model, the intercept and the random site effect only) to be relatively well-supported alternate explanations of the data. RESULTS After excluding individuals below the size and age cut-offs, 1244 total capture records were included in the final analyses. Capture data were not available from all sites for all three species (C. picta: 15 sites; E. blandingii: 14 sites; C. serpentina: 11 sites; Table 1). Captures were male-biased for all three species, and the overall proportion of males was 0.73 for C. picta (n = 901), 0.70 for C. serpentina (n = 170) and 0.62 for E. blandingii (n = 173). For genetic analyses, 15 sites had ≥7 samples for C. picta (n = 467), 11 sites had ≥7 samples for E. blandingii (n = 372) and 12 sites had ≥7 samples for C. serpentina (n = 203). Sex ratio analysis There was considerable variation in average daily high temperatures (25.89 to 27.92°C; mean 26.93°C) and in the magnitude of recent change in summer temperature ( 0.33 to +1.13°C; mean +0.66°C) across the sites we sampled. The proportion of adults hatched within the time windows used for climate data was approximately half for E. blandingii (51%) and C. serpentina (44%) over the shorter interval, over 80% for these two species over the longer interval, and nearly 100% of C. picta adults over both intervals (Table S4). Based on Schwanz et al. (2010), we calculated an expected 20% difference in average cohort sex ratio between sites with the highest and lowest changes in average temperature change. Road densities and public land across the two spatial scales were highly positively correlated (r = 0.77 and 0.69, respectively) and average temperature and temperature trend were highly negatively correlated (r = 0.72) (Table S5). We retained temperature change and 5-km scale land use variables for use in regression modelling. Logistic regression of sex against Julian day of capture was not significant (a = 0.05) for any species, indicating that sampled sex ratios were not an artefact of sampling date. For E. blandingii, the two best models for sex ratio contained either public land area or road density and the random effect (Table 2). These models were 1.2 and 1.5 AICc lower and were approximately twice as likely compared to the base model according to AICc weights (Table 2). Regression coefficients were positive for road density (bRoad = 0.31; 95% confidence interval (CI) = 0.04 to 0.66) and negative for public area (bPublic = 0.015; 95% CI 0.0005 to 0.03). Thus, our results suggest that the proportion of males 6 increases with road density and decreases with the public land area (Fig. 2), although CIs slightly overlapped 0 in both cases. An additive model containing both road density and public land also performed slightly better than the base model. For C. picta, models containing public land area alone plus the random effect or the random effect alone had roughly equal levels of support. The probability of catching a male, however, was slightly higher in areas with more public land (bPublic = 0.008; 95% CI 0.006 to 0.019), contrary to expectations of decreased female mortality with increasing public land. For C. serpentina, the model containing only a random effect of site had the lowest AICc, indicating that road density, public land area and temperature change were not strong predictors of sex ratios in this species. Genetic diversity After sequential Bonferroni correction for multiple comparisons, no markers or pairs of markers exhibited significant deviation from Hardy–Weinberg equilibrium or significant linkage disequilibrium in more than one population. Allelic richness per locus was lower and more variable across sites in E. blandingii (mean = 4.09, range 3.43 to 4.49, coefficient of variation (CV) = 0.079) compared with C. serpentina (mean = 4.97, range 4.11–5.25, CV = 0.068) and C. picta (mean = 5.73, range 5.01–6.27, CV = 0.061). Heterozygosity followed the same pattern, with lowest average heterozygosity in E. blandingii (mean = 0.623, range 0.495–0.714, CV = 0.09) compared with C. serpentina (mean = 0.675, range 0.605–0.762, CV = 0.069) and C. picta (mean = 0.716, range 0.626–0.771, CV = 0.051). Models containing road density performed best in explaining both measures of genetic diversity for E. blandingii (Table 2). For allelic richness and heterozygosity, the road density model ranked 3 AICc and 8.6 AICc higher (respectively) than the base model and was 4.5 and 82 times more likely (respectively) than the base model. Both allelic richness (bRoad = 0.303, 95% CI 0.539 to 0.067) and heterozygosity (bRoad = 0.062, 95% CI 0.092 to 0.033) declined with increasing road density. For C. picta and C. serpentina, the base model performed best for both diversity metrics (Fig. 3). DISCUSSION Species-specific effects of land use change In this study, we present genetic and demographic evidence for an effect of land use on the endangered Blanding’s turtle, but not for the more common painted and snapping turtles. Previous studies conducted across species with varying life histories have shown more severe effects of contemporary habitat fragmentation in less mobile species (Hoehn et al., 2007; Callens et al., 2011), and more mobile species are often better equipped to deal with the effects of global change (Warren et al., 2001). For the species examined here, Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd Land use, climate change, and turtles Table 2 Levels of support for all models evaluated. Statistics for all models with higher AICc values than the base model are shown in grey, and the model with the most support for each species and dependent variable is shown in bold Sex Allelic Richness Heterozygosity (A) E. blandingii Model k AICc ΔAICc w AICc ΔAICc w Base Road Public Temp Road + Public Road + Temp Public + Temp Road 9 Temp Public 9 Temp Road + Public + Temp 1 2 2 2 3 3 3 4 4 4 234.0 232.8 232.5 236.0 233.9 234.7 234.1 236.7 236.1 235.7 1.5 0.3 0.0 3.5 1.4 2.2 1.6 4.2 3.6 3.2 0.11 0.20 0.24 0.04 0.11 0.08 0.10 0.03 0.04 0.05 10.8 7.9 10.4 14.6 12.8 12.8 14.9 19.3 21.8 19.7 3.0 0.0 2.6 6.7 5.0 4.9 7.1 11.5 13.9 11.9 0.13 0.58 0.16 0.02 0.05 0.05 0.02 0.00 0.00 0.00 Sex Allelic Richness 26.8 35.4 28.8 22.9 30.4 30.3 24.2 26.0 17.0 23.3 ΔAICc w 8.6 0.0 6.6 12.5 5.0 5.1 11.2 11.0 18.4 12.1 0.01 0.82 0.03 0.00 0.07 0.06 0.00 0.00 0.00 0.00 Heterozygosity (B) C. picta Model k AICc ΔAICc w AIC ΔAIC w Base Road Public Temp Road + Public Road + Temp Public + Temp Road 9 Temp Public 9 Temp Road + Public + Temp 1 2 2 2 3 3 3 4 4 4 1053.6 1054.7 1053.5 1055.5 1055.3 1056.7 1055.4 1057.8 1057.0 1057.2 0.1 1.2 0.0 2.0 1.8 3.2 1.9 4.3 3.5 3.7 0.22 0.13 0.23 0.09 0.09 0.05 0.09 0.03 0.04 0.04 15.0 17.1 17.2 17.1 20.6 19.9 19.5 24.4 22.9 23.9 0.0 2.1 2.2 2.1 5.6 4.9 4.5 9.4 8.0 8.9 0.43 0.15 0.14 0.15 0.03 0.04 0.05 0.00 0.01 0.00 Sex AICc Allelic Richness AIC 49.9 48.1 47.2 48.0 44.3 45.6 45.0 41.3 41.8 41.0 ΔAIC w 0.0 1.8 2.7 1.9 5.6 4.4 4.9 8.6 8.2 8.9 0.43 0.17 0.11 0.16 0.03 0.05 0.04 0.01 0.01 0.00 Heterozygosity (C) C. serpentina Model k AICc ΔAICc w AIC ΔAIC w Base Road Public Temp Road + Public Road + Temp Public + Temp Road 9 Temp Public 9 Temp Road + Public + Temp 1 2 2 2 3 3 3 4 4 4 214.4 215.7 214.6 216.4 216.6 217.1 215.1 219.1 216.9 217.1 0.0 1.3 0.2 2.0 2.2 2.7 0.7 4.7 2.5 2.7 0.21 0.11 0.20 0.08 0.07 0.05 0.15 0.02 0.06 0.05 12.2 15.8 14.4 12.6 18.8 17.3 17.2 23.5 21.6 23.3 0.0 3.7 2.2 0.5 6.7 5.1 5.0 11.4 9.4 11.2 0.40 0.06 0.13 0.32 0.01 0.03 0.03 0.00 0.00 0.00 AIC 33.6 30.4 29.9 29.9 25.9 25.7 25.2 20.2 19.0 19.6 ΔAIC w 0.0 3.2 3.7 3.7 7.7 7.8 8.4 13.3 14.6 13.9 0.63 0.13 0.10 0.10 0.01 0.01 0.00 0.00 0.00 0.00 k = number of parameters; ΔAICc = difference in AICc between a particular model and best supported model for the given variable; w = model weight. however, increased terrestrial movement tendencies in E. blandingii have the paradoxical effect of increasing the genetic and demographic impacts of fragmentation. As mobility in E. blandingii is associated with seasonal use of multiple terrestrial and aquatic habitats (Beaudry et al., 2009), disruption of the complex habitat networks used by this species may increase its vulnerability to the detrimental effects of land use change relative to the less mobile C. picta and C. serpentina. Management actions aimed at mitigating the effects of environmental change are likely to be more efficient and successful when complex habitat requirements, Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd such as those demonstrated by Emydoidea, are taken into account during conservation planning (Baldwin et al., 2006). Our analysis identified both road density and public land area as potential factors impacting sex ratios in E. blandingii. The relative effects of habitat protection and road density, however, are difficult to disentangle. Public land area was somewhat negatively correlated with road density (r = 0.56), and sites with high road density (>2 km/km2) had uniformly low public land area (<10 km2). Public land area alone performed slightly better in explaining variability 7 B. N. Reid and M. Z. Peery (a) (b) (c) Figure 2 Proportion male captured per site plotted against average site road density and public land for each species. Fitted relationships from the best models for Emydoidea blandingii are shown. in sex ratio than the model containing road density alone, possibly indicating that variability in public land area accounted better for variability in sex ratios among sites with low road densities (Fig. 2). Roads within or around protected areas may have lower traffic volumes or speed limits, which could result in less frequent sex-biased road mortality. Alternately, protected areas may have higher levels of recruitment due to decreased predation on nests or offspring, which could increase the population turnover rate and dampen the effect of increased mortality of adult females. As poor recruitment has been observed for E. blandingii even within protected areas (Congdon et al., 1993; Browne & Hecnar, 2007); however, this explanation is unlikely to apply broadly across E. blandingii populations. For both genetic diversity metrics, on the other hand, roads were a better predictor of variability than public land area, with models containing only road density weighted 3 times higher (for allelic richness) or 27 times higher (for heterozygosity) than models containing public land area alone. While a number of studies have assessed microsatellite genetic variability at regional scales in E. blandingii (Mock- 8 ford et al., 2007; Davy et al., 2013; Sethuraman et al., 2013), none have explicitly examined the effects of land use on genetic diversity. Continuing loss of individuals of either sex causes loss of genetic diversity over time (Jackson & Fahrig, 2011) and additional effects of habitat fragmentation (such as reduced gene flow) will likely compound this effect (Keyghobadi 2007), meaning that genetic diversity may be more sensitive to persistent low levels of road mortality than sex ratio. While no increasing bias towards males was detected in this study for C. picta and C. serpentina with higher road densities or lower public land area, sex ratio biases correlated with land use have been detected for one or both of these species by several others (Marchand & Litvaitis, 2004; Steen & Gibbs, 2004; Patrick & Gibbs, 2010). These previous studies examined the effects of roads on a smaller scale (within 100–1000 m of the resident wetland) than we have used here. However, in separate regression analyses conducted using a 1-km buffer distance, we did not detect a significant increase in proportion male associated with either increased road density or decreased public land area (data not shown), Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd Land use, climate change, and turtles (a) (b) (c) Figure 3 Rarefied allelic richness and average observed heterozygosity plotted against average site road density for each species. Fitted relationships from the best models for Emydoidea blandingii are shown. suggesting that our results are robust across a range of spatial scales. Studies examining the effects of roads on genetic diversity in these species are sparse; however, Laporte et al. (2013) recently detected decreased mitochondrial (but not nuclear) genetic diversity and higher variance in reproductive success associated with increased roads for C. picta in Quebec. Our surveys focused on areas where E. blandingii was known or suspected to occur, a factor that likely led to selection of sites where traffic volume was relatively low. Steen & Gibbs (2004), for example, chose wetlands close to the New York State Thruway as their ‘high road density’ sites, whereas all of our capture sites were >1 km from major multilane arteries. Further research comparing C. picta and C. serpentina populations among sites where E. blandingii either persists or has been extirpated could be used to determine whether the continued presence of E. blandingii corresponds with decreased impact of land use on co-occurring species. Climate change and potential for adaptation We found little evidence for an effect of temperature change on sex ratio or genetic diversity in any of the three species examined here. No effect was evident despite a predicted 20% change in the sex ratios of C. picta across the observed Diversity and Distributions, 1–13, ª 2014 John Wiley & Sons Ltd gradient of climate change. This effect size was similar to the change in sex ratio associated with land use that we detected in E. blandingii with much smaller sample sizes and similar to observed changes in C. picta sex ratios due to variation in land use patterns detected by Steen & Gibbs (2004). Furthermore, there was no evidence that climate effects masked sexbiased mortality in C. picta and C. serpentina (or vice versa in E. blandingii), and models incorporating climate variables alone or climate and land use together tended to perform worse than models containing only land use variables in these species. These findings are consistent with the metaanalysis of Gibbs and Steen (2005), in which changes in observed sex ratios over the past century were more consistent with the effects of growth of road networks than changes in climate over the same period. Characterizing the effects of climate change on turtle sex ratios in Wisconsin is complicated by the fact that areas traditionally experiencing cooler summer temperatures have warmed much faster than traditionally warm areas. If turtles were not locally adapted (via differences in developmental physiology or behaviour) to past climate regimes, this pattern of climate change might be expected to equalize sex ratios between traditionally cooler and warmer areas rather than produce an increase in females in areas with more 9 B. N. Reid and M. Z. Peery warming. Because average climate and climate change were highly correlated, we could not evaluate this possibility statistically. In separate regression analyses, however, we found no significant effect of average temperature on sex ratio in any of the three species (data not shown). Local adaption to a much wider range of climate conditions than those within our study area has been shown in the widely distributed C. picta, in which nest temperatures (Morjan, 2003b) and adult sex ratios (Refsnider et al., 2014) are similar across a broad latitudinal gradient. Latitudinal variability in the pivotal sex-determining threshold temperature has also been shown in both C. picta and C. serpentina (Bull et al., 1982; Ewert et al., 2005). E. blandingii inhabits a narrower latitudinal range and may be more sensitive to climate change than C. picta and C. serpentina (Herman & Scott, 1994). A number of factors may account for the observed lack of an effect of climate on sex ratios. Long maturation and generation times may provide a temporary buffer against the effects of gradual climate change, especially in C. serpentina and E. blandingii. Plasticity or evolutionary change may also be a sufficient to mitigate the limited degree of change observed here. Multiple studies have indicated female choice of nest depth as a possible means of compensation for variability in climate in both C. picta (Refsnider & Janzen, 2012) and in other reptile species with TSD (Doody, 2009; Telemeco et al., 2009). Examining nest depths across the spatial gradient of climate change examined here would be a promising avenue for future research. However, changes in nesting behaviour are unlikely to fully compensate for the present effects of climate change (Telemeco et al., 2009; Refsnider et al., 2013), and the total potential for adaptation is not likely to be sufficient to compensate for most projected climate change scenarios (Morjan, 2003a). Implications for conservation Emydoidea blandingii was recently assessed as globally endangered (van Dijk & Rhodin, 2013) and has been submitted as a candidate for the US Endangered Species Act (Giese et al., 2012). In Wisconsin, E. blandingii was recently removed from the threatened species list despite continuing declines throughout the state (Wisconsin Department of Natural Resources, 2012). The data presented here suggest that ongoing land use change disproportionally impacts E. blandingii compared with co-occurring species. Stage-based life history analysis has shown that population growth is sensitive to changes in adult survival in this species and that small decreases in survival can result in negative demographic trends (Congdon et al., 1993). Other factors related to land use, such as changes in abundance of nest predators, can also impact population structure in this species by essentially eliminating recruitment (Congdon et al., 1993; Browne & Hecnar, 2007), and the interaction of these two effects may have synergistic impacts that act to speed declines. To prevent or reverse declines in E. blandingii, all of these threats will likely need to be addressed. Thus, we recommend stron- 10 ger legal protection for this species to prevent further population declines. ACKNOWLEDGEMENTS Funding was provided by a USDA Hatch Act Formula Grant (to M.Z. Peery) and an EPA-STAR Fellowship (to B.N. Reid). This work was conducted under Endangered and Threatened Resources (#681) and Scientific Collector’s (#135) permits issued by the Wisconsin DNR and approved by UWMadison’s Animal Care and Use Committee (approval # A3368-01). Additional trapping data for E. blandingii were provided by S. Foster, M. Linton, A. Thompson and S. 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Table S4. Proportion hatched within climate data windows for each species. Table S5. Matrix of correlations among potential predictor variables. BIOSKETCHES The Peery Conservation Biology Lab uses cutting edge ecological, genetic and population modelling approaches to provide managers and policymakers with information needed to make sound decisions about the conservation of species at risk of extinction. The laboratory focuses on providing pragmatic solutions to challenging problem in conservation. Further information can be found at http://labs.russell.wisc.edu/ peery/. Authors’ contributions: Both authors were engaged in study planning and manuscript development. B.N. Reid conducted field and laboratory work as well as analyses. Editor: Jeremy Austin 13