Creech Tyler G, Epps Clinton W, Landguth Erin L, Wehausen John D, Crowhurst Rachel S, Holton Brandon, Monello Ryan J
Department of Fisheries and Wildlife, Oregon State University, Corvallis, Oregon, United States of America.
Computational Ecology Laboratory, Division of Biological Sciences, University of Montana, Missoula, Montana, United States of America.
PLoS One. 2017 May 2;12(5):e0176960. doi: 10.1371/journal.pone.0176960. eCollection 2017.
Landscape genetic studies based on neutral genetic markers have contributed to our understanding of the influence of landscape composition and configuration on gene flow and genetic variation. However, the potential for species to adapt to changing landscapes will depend on how natural selection influences adaptive genetic variation. We demonstrate how landscape resistance models can be combined with genetic simulations incorporating natural selection to explore how the spread of adaptive variation is affected by landscape characteristics, using desert bighorn sheep (Ovis canadensis nelsoni) in three differing regions of the southwestern United States as an example. We conducted genetic sampling and least-cost path modeling to optimize landscape resistance models independently for each region, and then simulated the spread of an adaptive allele favored by selection across each region. Optimized landscape resistance models differed between regions with respect to landscape variables included and their relationships to resistance, but the slope of terrain and the presence of water barriers and major roads had the greatest impacts on gene flow. Genetic simulations showed that differences among landscapes strongly influenced spread of adaptive genetic variation, with faster spread (1) in landscapes with more continuously distributed habitat and (2) when a pre-existing allele (i.e., standing genetic variation) rather than a novel allele (i.e., mutation) served as the source of adaptive genetic variation. The combination of landscape resistance models and genetic simulations has broad conservation applications and can facilitate comparisons of adaptive potential within and between landscapes.
基于中性遗传标记的景观遗传学研究有助于我们理解景观组成和格局对基因流动和遗传变异的影响。然而,物种适应不断变化的景观的潜力将取决于自然选择如何影响适应性遗传变异。我们以美国西南部三个不同地区的沙漠大角羊(Ovis canadensis nelsoni)为例,展示了如何将景观抗性模型与纳入自然选择的遗传模拟相结合,以探索适应性变异的传播如何受到景观特征的影响。我们进行了基因采样和成本最低路径建模,以便为每个地区独立优化景观抗性模型,然后模拟了受选择青睐的适应性等位基因在每个地区的传播。不同地区的优化景观抗性模型在纳入的景观变量及其与抗性的关系方面存在差异,但地形坡度、水障碍和主要道路的存在对基因流动的影响最大。遗传模拟表明,景观之间存在的差异强烈影响适应性遗传变异的传播,适应性遗传变异在(1)栖息地分布更连续的景观中以及(2)当一个预先存在的等位基因(即现存遗传变异)而非一个新的等位基因(即突变)作为适应性遗传变异的来源时传播得更快。景观抗性模型和遗传模拟的结合具有广泛的保护应用,并有助于比较景观内部和景观之间的适应潜力。