What can optimized cost distances based on genetic distances offer? A simulation study on the use and misuse of ResistanceGA.

IF 5.5 1区 生物学 Q1 BIOCHEMISTRY & MOLECULAR BIOLOGY Molecular Ecology Resources Pub Date : 2024-10-17 DOI:10.1111/1755-0998.14024
Alexandrine Daniel, Paul Savary, Jean-Christophe Foltête, Gilles Vuidel, Bruno Faivre, Stéphane Garnier, Aurélie Khimoun
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Abstract

Modelling population connectivity is central to biodiversity conservation and often relies on resistance surfaces reflecting multi-generational gene flow. ResistanceGA (RGA) is a common optimization framework for parameterizing these surfaces by maximizing the fit between genetic distances and cost distances using maximum likelihood population effect models. As the reliability of this framework has rarely been studied, we investigated the conditions maximizing its accuracy for both prediction and interpretation of landscape features' permeability. We ran demo-genetic simulations in contrasted landscapes for species with distinct dispersal capacities and specialization levels, using corresponding reference cost scenarios. We then optimized resistance surfaces from the simulated genetic distances using RGA. First, we evaluated whether RGA identified the drivers of the genetic patterns, that is, distinguished Isolation-by-Resistance (IBR) patterns from either Isolation-by-Distance or patterns unrelated to ecological distances. We then assessed RGA predictive performance using a cross-validation method, and its ability to recover the reference cost scenarios shaping genetic structure in simulations. IBR patterns were well detected and genetic distances were predicted with great accuracy. This performance depended on the strength of the genetic structuring, sampling design and landscape structure. Matching the scale of the genetic pattern by focusing on population pairs connected through gene flow and limiting overfitting through cross-validation further enhanced inference reliability. Yet, the optimized cost values often departed from the reference values, making their interpretation and extrapolation potentially dubious. While demonstrating the value of RGA for predictive modelling, we call for caution and provide additional guidance for its optimal use.

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基于遗传距离的优化成本距离能带来什么?关于使用和滥用 ResistanceGA 的模拟研究。
建立种群连通性模型是生物多样性保护的核心,通常依赖于反映多代基因流动的阻力面。ResistanceGA(RGA)是一种常见的优化框架,它通过最大化遗传距离与成本距离之间的拟合,利用最大似然种群效应模型对这些表面进行参数化。由于很少有人研究过这一框架的可靠性,因此我们研究了在预测和解释地貌特征渗透性时,使其准确性最大化的条件。我们利用相应的参考成本方案,在具有不同扩散能力和专业化水平的物种的对比景观中进行了种群遗传模拟。然后,我们利用 RGA 从模拟遗传距离中优化了阻力面。首先,我们评估了 RGA 是否能识别遗传模式的驱动因素,即是否能将 "因抵抗力而隔离(IBR)"模式与 "因距离而隔离 "模式或与生态距离无关的模式区分开来。然后,我们使用交叉验证法评估了 RGA 的预测性能,以及它在模拟中恢复形成遗传结构的参考成本情景的能力。我们很好地检测到了 IBR 模式,并非常准确地预测了遗传距离。这种性能取决于遗传结构的强度、采样设计和景观结构。通过关注通过基因流连接的种群对来匹配遗传模式的规模,以及通过交叉验证限制过度拟合,进一步提高了推断的可靠性。然而,优化后的成本值往往偏离参考值,使其解释和推断可能存在疑问。在证明 RGA 在预测建模中的价值的同时,我们呼吁谨慎使用 RGA,并为其最佳使用提供更多指导。
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来源期刊
Molecular Ecology Resources
Molecular Ecology Resources 生物-进化生物学
CiteScore
15.60
自引率
5.20%
发文量
170
审稿时长
3 months
期刊介绍: Molecular Ecology Resources promotes the creation of comprehensive resources for the scientific community, encompassing computer programs, statistical and molecular advancements, and a diverse array of molecular tools. Serving as a conduit for disseminating these resources, the journal targets a broad audience of researchers in the fields of evolution, ecology, and conservation. Articles in Molecular Ecology Resources are crafted to support investigations tackling significant questions within these disciplines. In addition to original resource articles, Molecular Ecology Resources features Reviews, Opinions, and Comments relevant to the field. The journal also periodically releases Special Issues focusing on resource development within specific areas.
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