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An information-theoretic approach to estimating the composite genetic effects contributing to variation among generation means: Moving beyond the joint-scaling test for line cross analysis

机译:信息理论方法来估计导致世代变异的复合遗传效应:超越联合定标检验进行线交叉分析

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摘要

The pace and direction of evolution in response to selection, drift, and mutation are governed by the genetic architecture that underlies trait variation. Consequently, much of evolutionary theory is predicated on assumptions about whether genes can be considered to act in isolation, or in the context of their genetic background. Evolutionary biologists have disagreed, sometimes heatedly, over which assumptions best describe evolution in nature. Methods for estimating genetic architectures that favor simpler (i.e., additive) models contribute to this debate. Here we address one important source of bias, model selection in line cross analysis (LCA). LCA estimates genetic parameters conditional on the best model chosen from a vast model space using relatively few line means. Current LCA approaches often favor simple models and ignore uncertainty in model choice. To address these issues we introduce Software for Analysis of Genetic Architecture (SAGA), which comprehensively assesses the potential model space, quantifies model selection uncertainty, and uses model weighted averaging to accurately estimate composite genetic effects. Using simulated data and previously published LCA studies, we demonstrate the utility of SAGA to more accurately define the components of complex genetic architectures, and show that traditional approaches have underestimated the importance of epistasis.
机译:响应选择,漂移和突变的进化速度和方向受性状变异基础的遗传结构控制。因此,许多进化论都基于这样的假设,即是否可以考虑基因是单独起作用还是在其遗传背景下起作用。进化生物学家不同意(有时是激烈的),在这些假设上最能描述自然界的进化。估计偏爱简单模型(即加性模型)的遗传结构的方法引起了这一争论。在这里,我们解决了偏差的一个重要来源,即线性交叉分析(LCA)中的模型选择。 LCA使用相对较少的线均值,就可以根据从巨大模型空间中选择的最佳模型来估计遗传参数。当前的LCA方法通常倾向于简单模型,而忽略了模型选择的不确定性。为了解决这些问题,我们引入了遗传结构分析软件(SAGA),该软件可以全面评估潜在的模型空间,量化模型选择的不确定性,并使用模型加权平均来准确估计复合遗传效应。利用模拟数据和先前发表的LCA研究,我们证明了SAGA可以更准确地定义复杂遗传结构的组成部分,并表明传统方法低估了上位性的重要性。

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