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USAT: A Unified Score-Based Association Test for Multiple Phenotype-Genotype Analysis

机译:USAT:用于多种表型-基因型分析的基于评分的统一关联测试

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Genome-wide association studies (GWASs) for complex diseases often collect data on multiple correlated endo-phenotypes. Multivariate analysis of these correlated phenotypes can improve the power to detect genetic variants. Multivariate analysis of variance (MANOVA) can perform such association analysis at a GWAS level, but the behavior of MANOVA under different trait models has not been carefully investigated. In this paper, we show that MANOVA is generally very powerful for detecting association but there are situations, such as when a genetic variant is associated with all the traits, where MANOVA may not have any detection power. In these situations, marginal model based methods, however, perform much better than multivariate methods. We investigate the behavior of MANOVA, both theoretically and using simulations, and derive the conditions where MANOVA loses power. Based on our findings, we propose a unified score-based test statistic USAT that can perform better than MANOVA in such situations and nearly as well as MANOVA elsewhere. Our proposed test reports an approximate asymptotic P-value for association and is computationally very efficient to implement at a GWAS level. We have studied through extensive simulations the performance of USAT, MANOVA, and other existing approaches and demonstrated the advantage of using the USAT approach to detect association between a genetic variant and multivariate phenotypes. We applied USAT to data from three correlated traits collected on 5, 816 Caucasian individuals from the Atherosclerosis Risk in Communities (ARIC, The ARIC Investigators []) Study and detected some interesting associations. (C) 2015 Wiley Periodicals, Inc.
机译:复杂疾病的全基因组关联研究(GWAS)通常收集有关多个相关内表型的数据。这些相关表型的多变量分析可以提高检测遗传变异的能力。多变量方差分析(MANOVA)可以在GWAS级别上执行这种关联分析,但是尚未仔细研究MANOVA在不同特征模型下的行为。在本文中,我们表明MANOVA通常对于检测关联具有非常强大的功能,但是在某些情况下,例如当遗传变异与所有性状相关时,MANOVA可能没有任何检测能力。但是,在这些情况下,基于边际模型的方法的性能要比多元方法好得多。我们在理论上和使用仿真方法研究MANOVA的行为,并得出MANOVA掉电的条件。根据我们的发现,我们提出了一个基于分数的统一测试统计量USAT,在这种情况下,其性能要比MANOVA更好,在其他情况下,其性能也几乎可以达到MANOVA。我们提出的测试报告了一个近似的渐近P值用于关联,并且在GWAS级别上实现计算效率很高。我们已经通过广泛的模拟研究了USAT,MANOVA和其他现有方法的性能,并证明了使用USAT方法检测遗传变异与多变量表型之间关联的优势。我们将USAT应用于来自社区动脉粥样硬化风险(ARIC,ARIC研究者[])研究的5 816名白人个体的三个相关性状的数据,并发现了一些有趣的关联。 (C)2015年Wiley Periodicals,Inc.

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