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Detecting Rare Variant Effects Using Extreme Phenotype Sampling in Sequencing Association Studies

机译:在序列关联研究中使用极端表型抽样检测稀有变异效应

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In the increasing number of sequencing studies aimed at identifying rare variants associated with complex traits, the power of the test can be improved by guided sampling procedures. We confirm both analytically and numerically that sampling individuals with extreme phenotypes can enrich the presence of causal rare variants and can therefore lead to an increase in power compared to random sampling. Although application of traditional rare variant association tests to these extreme phenotype samples requires dichotomizing the continuous phenotypes before analysis, the dichotomization procedure can decrease the power by reducing the information in the phenotypes. To avoid this, we propose a novel statistical method based on the optimal Sequence Kernel Association Test that allows us to test for rare variant effects using continuous phenotypes in the analysis of extreme phenotype samples. The increase in power of this method is demonstrated through simulation of a wide range of scenarios as well as in the triglyceride data of the Dallas Heart Study.
机译:旨在鉴定与复杂性状相关的稀有变异的测序研究越来越多,可以通过指导性的采样程序来提高检测能力。我们在分析和数值上都确认,对具有极端表型的个体进行抽样可以丰富因果稀有变异的存在,因此与随机抽样相比,可以导致功效增加。尽管将传统的稀有变异关联测试应用于这些极端表型样本时需要在分析之前将连续表型二等分,但二分类程序可以通过减少表型中的信息来降低功效。为避免这种情况,我们提出了一种基于最佳序列核关联测试的新颖统计方法,该方法允许我们在分析极端表型样品时使用连续表型测试罕见的变异效应。通过对各种情况的仿真以及达拉斯心脏研究的甘油三酸酯数据,证明了该方法功能的增强。

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