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The Effects of Quantitative Trait Architecture on Detection Power in Short-Term Artificial Selection Experiments

机译:定量特质架构对短期人工选择实验中检测力的影响

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摘要

Evolve and resequence (E&R) experiments, in which artificial selection is imposed on organisms in a controlled environment, are becoming an increasingly accessible tool for studying the genetic basis of adaptation. Previous work has assessed how different experimental design parameters affect the power to detect the quantitative trait loci (QTL) that underlie adaptive responses in such experiments, but so far there has been little exploration of how this power varies with the genetic architecture of the evolving traits. In this study, we use forward simulation to build a more realistic model of an E&R experiment in which a quantitative polygenic trait experiences a short, but strong, episode of truncation selection. We study the expected power for QTL detection in such an experiment and how this power is influenced by different aspects of trait architecture, including the number of QTL affecting the trait, their starting frequencies, effect sizes, clustering along a chromosome, dominance, and epistasis patterns. We show that all of these parameters can affect allele frequency dynamics at the QTL and linked loci in complex and often unintuitive ways, and thus influence our power to detect them. One consequence of this is that existing detection methods based on models of independent selective sweeps at individual QTL often have lower detection power than a simple measurement of allele frequency differences before and after selection. Our findings highlight the importance of taking trait architecture into account when designing and interpreting studies of molecular adaptation with temporal data. We provide a customizable modeling framework that will enable researchers to easily simulate E&R experiments with different trait architectures and parameters tuned to their specific study system, allowing for assessment of expected detection power and optimization of experimental design.
机译:进化和重新升级(E&R)实验,其中对受控环境中的生物体施加人工选择,正在成为研究适应遗传基础的越来越多的工具。以前的工作已经评估了不同的实验设计参数如何影响检测在此类实验中的适应性响应的定量性状基因座(QTL)的权力,但到目前为止,这几乎没有探索这种功率如何随着不断发展的特征的遗传架构而变化。在这项研究中,我们使用前向模拟来构建一个更现实的E&R实验模型,其中定量的多基因特性经历了短暂但强大的截断选择的事件。我们研究了这种实验中的QTL检测的预期力量,以及这种功率如何受特质建筑的不同方面的影响,包括影响特征的QTL的数量,它们的起始频率,效果大小,沿染色体,占主导地位和外观的聚类。模式。我们表明所有这些参数都可以影响QTL的等位基因频率动态,并以复杂的和通常不行的方式连接到基因座,从而影响我们的权力来检测它们。其中的一个结果是,基于独立选择性扫描模型的现有检测方法在单个QTL上的检测力较低,比在选择之前和之后的等位基因频率差异的简单测量。我们的调查结果突出了在使用时间数据的设计和解释分子适应的研究时考虑到特质建筑的重要性。我们提供可定制的建模框架,使研究人员能够轻松地模拟具有不同特征架构和参数调整到其特定研究系统的E&R实验,允许评估预期的检测功率和实验设计的优化。

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