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Quantifying Selection Acting on a Complex Trait Using Allele Frequency Time Series Data

机译:使用等位基因频率时间序列数据量化针对复杂性状的选择

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摘要

When selection is acting on a large genetically diverse population, beneficial alleles increase in frequency. This fact can be used to map quantitative trait loci by sequencing the pooled DNA from the population at consecutive time points and observing allele frequency changes. Here, we present a population genetic method to analyze time series data of allele frequencies from such an experiment. Beginning with a range of proposed evolutionary scenarios, the method measures the consistency of each with the observed frequency changes. Evolutionary theory is utilized to formulate equations of motion for the allele frequencies, following which likelihoods for having observed the sequencing data under each scenario are derived. Comparison of these likelihoods gives an insight into the prevailing dynamics of the system under study. We illustrate the method by quantifying selective effects from an experiment, in which two phenotypically different yeast strains were first crossed and then propagated under heat stress (Parts L, Cubillos FA, Warringer J, et al. [14 co-authors]. 2011. Revealing the genetic structure of a trait by sequencing a population under selection. Genome Res). From these data, we discover that about 6% of polymorphic sites evolve nonneutrally under heat stress conditions, either because of their linkage to beneficial (driver) alleles or because they are drivers themselves. We further identify 44 genomic regions containing one or more candidate driver alleles, quantify their apparent selective advantage, obtain estimates of recombination rates within the regions, and show that the dynamics of the drivers display a strong signature of selection going beyond additive models. Our approach is applicable to study adaptation in a range of systems under different evolutionary pressures.
机译:当选择作用于大量的遗传多样性种群时,有益的等位基因频率会增加。通过在连续的时间点对来自群体的合并DNA进行测序并观察等位基因频率变化,可以将此事实用于绘制定量性状基因座。在这里,我们提出了一种群体遗传方法来分析来自此类实验的等位基因频率的时间序列数据。从一系列提出的进化方案开始,该方法测量每个与观察到的频率变化的一致性。利用进化理论为等位基因频率制定运动方程,然后推导在每种情况下观察到测序数据的可能性。比较这些可能性可以深入了解正在研究的系统的主要动力。我们通过量化实验的选择性效应来说明该方法,在该实验中,首先将两个表型不同的酵母菌株杂交,然后在热胁迫下繁殖(Part L,Cubillos FA,Warringer J等人[14合著者]。2011年。通过对所选种群进行测序来揭示性状的遗传结构(基因组研究)。从这些数据中,我们发现在热应激条件下约有6%的多态性位点是非中性进化的,要么是由于它们与有益的(驱动)等位基因连锁,要么是因为它们本身就是驱动基因。我们进一步确定包含一个或多个候选驱动程序等位基因的44个基因组区域,量化其明显的选择优势,获得区域内重组率的估计值,并显示驱动程序的动力学表现出超越加性模型的强大选择标志。我们的方法适用于研究不同进化压力下一系列系统的适应性。

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