Vanhove Mathieu, Launey Sophie
DECOD (Ecosystem Dynamics and Sustainability), INRAE, Institut Agro, IFREMER, Rennes, France.
Mol Ecol Resour. 2025 Jul;25(5):e13778. doi: 10.1111/1755-0998.13778. Epub 2023 Mar 10.
Understanding landscape connectivity has become a global priority for mitigating the impact of landscape fragmentation on biodiversity. Connectivity methods that use link-based methods traditionally rely on relating pairwise genetic distance between individuals or demes to their landscape distance (e.g., geographic distance, cost distance). In this study, we present an alternative to conventional statistical approaches to refine cost surfaces by adapting the gradient forest approach to produce a resistance surface. Used in community ecology, gradient forest is an extension of random forest, and has been implemented in genomic studies to model species genetic offset under future climatic scenarios. By design, this adapted method, resGF, has the ability to handle multiple environmental predicators and is not subjected to traditional assumptions of linear models such as independence, normality and linearity. Using genetic simulations, resistance Gradient Forest (resGF) performance was compared to other published methods (maximum likelihood population effects model, random forest-based least-cost transect analysis and species distribution model). In univariate scenarios, resGF was able to distinguish the true surface contributing to genetic diversity among competing surfaces better than the compared methods. In multivariate scenarios, the gradient forest approach performed similarly to the other random forest-based approach using least-cost transect analysis but outperformed MLPE-based methods. Additionally, two worked examples are provided using two previously published data sets. This machine learning algorithm has the potential to improve our understanding of landscape connectivity and inform long-term biodiversity conservation strategies.
理解景观连通性已成为减轻景观破碎化对生物多样性影响的全球优先事项。传统上,使用基于链接方法的连通性方法依赖于将个体或种群之间的成对遗传距离与其景观距离(如地理距离、成本距离)相关联。在本研究中,我们提出了一种替代传统统计方法的方法,即通过采用梯度森林方法来生成阻力面,从而优化成本表面。梯度森林在群落生态学中使用,是随机森林的扩展,已在基因组研究中用于模拟未来气候情景下的物种遗传偏移。通过设计,这种改进的方法resGF能够处理多个环境预测因子,并且不受线性模型的传统假设(如独立性、正态性和线性)的限制。通过遗传模拟,将抗性梯度森林(resGF)的性能与其他已发表的方法(最大似然种群效应模型、基于随机森林的最小成本样带分析和物种分布模型)进行了比较。在单变量情景中,resGF比其他比较方法能够更好地在竞争表面中区分对遗传多样性有贡献的真实表面。在多变量情景中,梯度森林方法的表现与基于随机森林的最小成本样带分析的其他方法类似,但优于基于最大似然种群效应的方法。此外,还使用两个先前发表的数据集提供了两个实例。这种机器学习算法有潜力增进我们对景观连通性的理解,并为长期生物多样性保护策略提供信息。