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A Guide for the Design of Evolve and Resequencing Studies

机译:进化和重测序研究设计指南

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摘要

Standing genetic variation provides a rich reservoir of potentially useful mutations facilitating the adaptation to novel environments. Experimental evolution studies have demonstrated that rapid and strong phenotypic responses to selection can also be obtained in the laboratory. When combined with the next-generation sequencing technology, these experiments promise to identify the individual loci contributing to adaption. Nevertheless, until now, very little is known about the design of such evolve resequencing (ER) studies. Here, we use forward simulations of entire genomes to evaluate different experimental designs that aim to maximize the power to detect selected variants. We show that low linkage disequilibrium in the starting population, population size, duration of the experiment, and the number of replicates are the key factors in determining the power and accuracy of ER studies. Furthermore, replication of ER is more important for detecting the targets of selection than increasing the population size. Using an optimized design, beneficial loci with a selective advantage as low as s = 0.005 can be identified at the nucleotide level. Even when a large number of loci are selected simultaneously, up to 56 can be reliably detected without incurring large numbers of false positives. Our computer simulations suggest that, with an adequate experimental design, ER studies are a powerful tool to identify adaptive mutations from standing genetic variation and thereby provide an excellent means to analyze the trajectories of selected alleles in evolving populations.
机译:常设遗传变异提供了丰富的潜在有用突变库,有助于适应新的环境。实验进化研究表明,在实验室中也可以获得对选择的快速而强烈的表型反应。当与下一代测序技术相结合时,这些实验有望确定有助于适应的单个位点。然而,到目前为止,人们对这种进化和重测序(E&R)研究的设计知之甚少。在这里,我们使用整个基因组的前向模拟来评估不同的实验设计,这些设计旨在最大限度地提高检测选定变异的能力。我们发现,起始种群、种群规模、实验持续时间和重复次数的低连锁不平衡是决定 E&R 研究的功效和准确性的关键因素。此外,E&R的复制对于检测选择靶标比增加种群规模更重要。使用优化设计,可以在核苷酸水平上鉴定出具有低至 s = 0.005 的选择优势的有益位点。即使同时选择大量位点,也可以可靠地检测到高达 56% 的位点,而不会产生大量误报。我们的计算机模拟表明,通过适当的实验设计,E&R研究是一种强大的工具,可以从长期遗传变异中识别适应性突变,从而为分析进化种群中选定等位基因的轨迹提供了极好的手段。

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