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首页> 外文期刊>Genetics: A Periodical Record of Investigations Bearing on Heredity and Variation >Multivariate QST-FST comparisons: a neutrality test for the evolution of the g matrix in structured populations.
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Multivariate QST-FST comparisons: a neutrality test for the evolution of the g matrix in structured populations.

机译:多元QST-FST比较:中性测试,用于结构化总体中g矩阵的演化。

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Neutrality tests in quantitative genetics provide a statistical framework for the detection of selection on polygenic traits in wild populations. However, the existing method based on comparisons of divergence at neutral markers and quantitative traits (Q(st)-F(st)) suffers from several limitations that hinder a clear interpretation of the results with typical empirical designs. In this article, we propose a multivariate extension of this neutrality test based on empirical estimates of the among-populations (D) and within-populations (G) covariance matrices by MANOVA. A simple pattern is expected under neutrality: D = 2F(st)/(1 - F(st))G, so that neutrality implies both proportionality of the two matrices and a specific value of the proportionality coefficient. This pattern is tested using Flury's framework for matrix comparison [common principal-component (CPC) analysis], a well-known tool in G matrix evolution studies. We show the importance of using a Bartlett adjustment of the test for the small sample sizes typically found in empirical studies. We propose a dual test: (i) that the proportionality coefficient is not different from its neutral expectation [2F(st)/(1 - F(st))] and (ii) that the MANOVA estimates of mean square matrices between and among populations are proportional. These two tests combined provide a more stringent test for neutrality than the classic Q(st)-F(st) comparison and avoid several statistical problems. Extensive simulations of realistic empirical designs suggest that these tests correctly detect the expected pattern under neutrality and have enough power to efficiently detect mild to strong selection (homogeneous, heterogeneous, or mixed) when it is occurring on a set of traits. This method also provides a rigorous and quantitative framework for disentangling the effects of different selection regimes and of drift on the evolution of the G matrix. We discuss practical requirements for the proper application of our test in empirical studies and potential extensions.
机译:定量遗传学中的中性检验为检测野生种群中多基因性状的选择提供了一个统计框架。但是,基于比较中性标记和定量特征(Q(st)-F(st))的现有方法存在一些局限性,这些局限性阻碍了典型经验设计对结果的清晰解释。在本文中,我们基于MANOVA对种群之间(D)和种群内部(G)协方差矩阵的经验估计,提出了此中立性测试的多元扩展。在中性的情况下,期望有一个简单的模式:D = 2F(st)/(1- F(st))G,因此中性既包含两个矩阵的比例,也包含比例系数的特定值。使用Flury的矩阵比较框架[通用主成分(CPC)分析](在G矩阵演化研究中众所周知的工具)对该模式进行了测试。我们展示了对经验研究中通常存在的小样本量使用巴特利特调整测试的重要性。我们提出双重检验:(i)比例系数与其中立期望[2F(st)/(1- F(st))]相同,并且(ii)MANOVA估计之间和之间的均方矩阵人口是成比例的。与经典的Q(st)-F(st)比较相比,这两个测试的结合提供了更严格的中立性测试,并且避免了一些统计问题。现实的经验设计的大量模拟表明,这些测试可以正确地检测中性条件下的预期模式,并且具有足够的能力有效地检测发生在一组性状上的轻度到强烈选择(均质,异质或混合)。该方法还提供了一个严格而定量的框架,以解开不同选择机制和漂移对G矩阵演化的影响。我们讨论了在经验研究和潜在扩展中正确应用测试的实际要求。

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