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Comparison of different genetic distances to test isolation by distance between populations

机译:比较不同遗传距离以通过种群之间的距离测试隔离度

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摘要

Studying isolation by distance can provide useful demographic information. To analyze isolation by distance from molecular data, one can use some kind of genetic distance or coalescent simulations. Molecular markers can often display technical caveats, such as PCR-based amplification failures (null alleles, allelic dropouts). These problems can alter population parameter inferences that can be extracted from molecular data. In this simulation study, we analyze the behavior of different genetic distances in Island (null hypothesis) and stepping stone models displaying varying neighborhood sizes. Impact of null alleles of increasing frequency is also studied. In stepping stone models without null alleles, the best statistic to detect isolation by distance in most situations is the chord distance DCSE. Nevertheless, for markers with genetic diversities HS<0.4–0.5, all statistics tend to display the same statistical power. Marginal sub-populations behave as smaller neighborhoods. Metapopulations composed of small sub-population numbers thus display smaller neighborhood sizes. When null alleles are introduced, the power of detection of isolation by distance is significantly reduced and DCSE remains the most powerful genetic distance. We also show that the proportion of null allelic states interact with the slope of the regression of FST/(1−FST) as a function of geographic distance. This can have important consequences on inferences that can be made from such data. Nevertheless, Chapuis and Estoup’s FreeNA correction for null alleles provides very good results in most situations. We finally use our conclusions for reanalyzing and reinterpreting some published data sets.
机译:研究按距离隔离可以提供有用的人口统计信息。要根据分子数据的距离分析隔离度,可以使用某种遗传距离或合并模拟。分子标记通常可以显示技术上的警告,例如基于PCR的扩增失败(无效等位基因,等位基因缺失)。这些问题可能会改变可从分子数据中提取的总体参数推论。在此模拟研究中,我们分析了岛屿(零假设)中不同遗传距离的行为以及显示不同邻域大小的垫脚石模型的行为。还研究了频率升高的无效等位基因的影响。在没有无效等位基因的垫脚石模型中,在大多数情况下按距离检测隔离度的最佳统计数据是和弦距离DCSE。但是,对于具有遗传多样性HS <0.4-0.5的标记,所有统计数据倾向于显示相同的统计功效。边缘亚人群表现为较小的社区。因此,由较小的亚种群数组成的亚种群显示较小的邻域大小。当引入无效等位基因时,通过距离检测隔离的能力会大大降低,DCSE仍是最有力的遗传距离。我们还显示,无效等位基因状态的比例与FST /(1-FST)的回归斜率相互作用,这是地理距离的函数。这可能会对从此类数据得出的推论产生重要影响。尽管如此,Chapuis和Estoup的FreeNA对无效等位基因的校正在大多数情况下都提供了很好的结果。最后,我们使用我们的结论来重新分析和重新解释一些已发布的数据集。

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