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基于全基因组关联研究中汇总统计数据的适应性多表型关联检验比较。

Comparison of adaptive multiple phenotype association tests using summary statistics in genome-wide association studies.

机构信息

Cardiovascular Health Research Unit, Department of Medicine, University of Washington, Seattle, WA 98101 USA.

Department of Epidemiology, University of North Carolina at Chapel Hill, Chapel Hill, NC 27516 USA.

出版信息

Hum Mol Genet. 2021 Jul 9;30(15):1371-1383. doi: 10.1093/hmg/ddab126.

Abstract

Genome-wide association studies have been successful mapping loci for individual phenotypes, but few studies have comprehensively interrogated evidence of shared genetic effects across multiple phenotypes simultaneously. Statistical methods have been proposed for analyzing multiple phenotypes using summary statistics, which enables studies of shared genetic effects while avoiding challenges associated with individual-level data sharing. Adaptive tests have been developed to maintain power against multiple alternative hypotheses because the most powerful single-alternative test depends on the underlying structure of the associations between the multiple phenotypes and a single nucleotide polymorphism (SNP). Here we compare the performance of six such adaptive tests: two adaptive sum of powered scores (aSPU) tests, the unified score association test (metaUSAT), the adaptive test in a mixed-models framework (mixAda) and two principal-component-based adaptive tests (PCAQ and PCO). Our simulations highlight practical challenges that arise when multivariate distributions of phenotypes do not satisfy assumptions of multivariate normality. Previous reports in this context focus on low minor allele count (MAC) and omit the aSPU test, which relies less than other methods on asymptotic and distributional assumptions. When these assumptions are not satisfied, particularly when MAC is low and/or phenotype covariance matrices are singular or nearly singular, aSPU better preserves type I error, sometimes at the cost of decreased power. We illustrate this trade-off with multiple phenotype analyses of six quantitative electrocardiogram traits in the Population Architecture using Genomics and Epidemiology (PAGE) study.

摘要

全基因组关联研究已经成功地绘制了个体表型的基因座图谱,但很少有研究全面探讨多个表型之间遗传效应的共享证据。已经提出了使用汇总统计数据分析多个表型的统计方法,这使得可以同时研究遗传效应的共享,同时避免与个体水平数据共享相关的挑战。适应性检验已经被开发出来,以保持对多个替代假设的功效,因为最有力的单一替代检验取决于多个表型与单核苷酸多态性(SNP)之间关联的潜在结构。在这里,我们比较了六种这样的适应性检验:两种适应性加和功效评分检验(aSPU)、统一评分关联检验(metaUSAT)、混合模型框架中的适应性检验(mixAda)以及两种基于主成分的适应性检验(PCAQ 和 PCO)。我们的模拟突出了当表型的多元分布不满足多元正态性假设时出现的实际挑战。在这种情况下,之前的报告集中在低次要等位基因计数(MAC)上,并且省略了 aSPU 检验,该检验比其他方法更少依赖于渐近和分布假设。当这些假设不成立时,特别是当 MAC 较低且/或表型协方差矩阵奇异或几乎奇异时,aSPU 更好地保持了 I 型错误,有时以降低功效为代价。我们通过在人群结构中使用基因组学和流行病学(PAGE)研究中对六个定量心电图特征进行的多表型分析来说明这种权衡。

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