Department of Crop Science, University of Goettingen, Goettingen 37075, Germany.
Center for Integrated Breeding Research, University of Goettingen, Goettingen 37075, Germany.
G3 (Bethesda). 2023 Feb 9;13(2). doi: 10.1093/g3journal/jkac319.
Identifying selection on polygenic complex traits in crops and livestock is important for understanding evolution and helps prioritize important characteristics for breeding. Quantitative trait loci (QTL) that contribute to polygenic trait variation often exhibit small or infinitesimal effects. This hinders the ability to detect QTL-controlling polygenic traits because enormously high statistical power is needed for their detection. Recently, we circumvented this challenge by introducing a method to identify selection on complex traits by evaluating the relationship between genome-wide changes in allele frequency and estimates of effect size. The approach involves calculating a composite statistic across all markers that capture this relationship, followed by implementing a linkage disequilibrium-aware permutation test to evaluate if the observed pattern differs from that expected due to drift during evolution and population stratification. In this manuscript, we describe "Ghat," an R package developed to implement this method to test for selection on polygenic traits. We demonstrate the package by applying it to test for polygenic selection on 15 published European wheat traits including yield, biomass, quality, morphological characteristics, and disease resistance traits. Moreover, we applied Ghat to different simulated populations with different breeding histories and genetic architectures. The results highlight the power of Ghat to identify selection on complex traits. The Ghat package is accessible on CRAN, the Comprehensive R Archival Network, and on GitHub.
鉴定作物和家畜多基因复杂性状的选择对于理解进化很重要,并有助于确定育种的重要特征。对多基因性状变异有贡献的数量性状位点(QTL)通常表现出较小或无穷小的效应。这阻碍了检测控制多基因性状的 QTL 的能力,因为需要极高的统计能力来检测它们。最近,我们通过引入一种方法来解决这个挑战,该方法通过评估全基因组等位基因频率变化与效应大小估计之间的关系来鉴定复杂性状的选择。该方法涉及计算所有捕获这种关系的标记的综合统计量,然后实施连锁不平衡感知的置换检验,以评估观察到的模式是否由于进化和群体分层过程中的漂变而与预期模式不同。在本文中,我们描述了“Ghat”,这是一个 R 包,用于实现该方法来检验多基因性状的选择。我们通过应用它来检验 15 个已发表的欧洲小麦性状的多基因选择,包括产量、生物量、质量、形态特征和抗病性性状,来演示该包。此外,我们还将 Ghat 应用于具有不同育种历史和遗传结构的不同模拟群体。结果突出了 Ghat 识别复杂性状选择的能力。Ghat 包可在综合 R 档案网络(CRAN)和 GitHub 上获得。