Climate Impacts Group, College of the Environment, University of Washington, Seattle, WA, USA.
Computational Ecology Laboratory, Division of Biological Sciences, University of Montana, Missoula, MT, USA.
Mol Ecol Resour. 2018 Jan;18(1):55-67. doi: 10.1111/1755-0998.12709. Epub 2017 Oct 9.
Anthropogenic migration barriers fragment many populations and limit the ability of species to respond to climate-induced biome shifts. Conservation actions designed to conserve habitat connectivity and mitigate barriers are needed to unite fragmented populations into larger, more viable metapopulations, and to allow species to track their climate envelope over time. Landscape genetic analysis provides an empirical means to infer landscape factors influencing gene flow and thereby inform such conservation actions. However, there are currently many methods available for model selection in landscape genetics, and considerable uncertainty as to which provide the greatest accuracy in identifying the true landscape model influencing gene flow among competing alternative hypotheses. In this study, we used population genetic simulations to evaluate the performance of seven regression-based model selection methods on a broad array of landscapes that varied by the number and type of variables contributing to resistance, the magnitude and cohesion of resistance, as well as the functional relationship between variables and resistance. We also assessed the effect of transformations designed to linearize the relationship between genetic and landscape distances. We found that linear mixed effects models had the highest accuracy in every way we evaluated model performance; however, other methods also performed well in many circumstances, particularly when landscape resistance was high and the correlation among competing hypotheses was limited. Our results provide guidance for which regression-based model selection methods provide the most accurate inferences in landscape genetic analysis and thereby best inform connectivity conservation actions.
人为迁徙障碍使许多种群破碎化,并限制了物种应对气候引起的生物群落转移的能力。需要采取旨在保护生境连通性和减轻障碍的保护行动,将破碎化的种群重新组合成更大、更具生命力的复合种群,并使物种能够随着时间的推移追踪其气候包络。景观遗传分析为推断影响基因流动的景观因素提供了一种经验方法,从而为这些保护行动提供信息。然而,目前在景观遗传学中存在许多模型选择方法,并且在确定影响基因流动的真实景观模型方面存在很大的不确定性,这些模型是在竞争替代假设中。在这项研究中,我们使用种群遗传模拟来评估七种基于回归的模型选择方法在广泛的景观中的表现,这些景观因影响阻力的变量的数量和类型、阻力的大小和凝聚力以及变量和阻力之间的功能关系而有所不同。我们还评估了旨在使遗传和景观距离之间的关系线性化的变换的效果。我们发现,线性混合效应模型在我们评估模型性能的所有方面都具有最高的准确性;然而,在许多情况下,其他方法也表现良好,特别是当景观阻力较高且竞争假设之间的相关性有限时。我们的研究结果为基于回归的模型选择方法在景观遗传分析中提供最准确推断提供了指导,从而为连通性保护行动提供了最佳信息。