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Meta-analysis of Gene-Level Associations for Rare Variants Based on Single-Variant Statistics

机译:基于单变量统计的稀有变异基因水平关联性的荟萃分析

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摘要

Meta-analysis of genome-wide association studies (GWASs) has led to the discoveries of many common variants associated with complex human diseases. There is a growing recognition that identifying "causal" rare variants also requires large-scale meta-analysis. The fact that association tests with rare variants are performed at the gene level rather than at the variant level poses unprecedented challenges in the meta-analysis. First, different studies may adopt different gene-level tests, so the results are not compatible. Second, gene-level tests require multivariate statistics (i.e., components of the test statistic and their covariance matrix), which are difficult to obtain. To overcome these challenges, we propose to perform gene-level tests for rare variants by combining the results of single-variant analysis (i.e., p values of association tests and effect estimates) from participating studies. This simple strategy is possible because of an insight that multivariate statistics can be recovered from single-variant statistics, together with the correlation matrix of the single-variant test statistics, which can be estimated from one of the participating studies or from a publicly available database. We show both theoretically and numerically that the proposed meta-analysis approach provides accurate control of the type I error and is as powerful as joint analysis of individual participant data. This approach accommodates any disease phenotype and any study design and produces all commonly used gene-level tests. An application to the GWAS summary results of the Genetic Investigation of ANthropometric Traits (GIANT) consortium reveals rare and low-frequency variants associated with human height. The relevant software is freely available. © 2013 The American Society of Human Genetics.
机译:对全基因组关联研究(GWAS)的荟萃分析已导致发现许多与复杂人类疾病相关的常见变异。人们越来越认识到,识别“因果”稀有变体也需要进行大规模的荟萃分析。与罕见变异体的关联测试是在基因水平而不是变异体水平上进行的事实,在荟萃分析中提出了前所未有的挑战。首先,不同的研究可能采用不同的基因水平测试,因此结果不兼容。其次,基因水平的测试需要多元统计信息(即测试统计信息的组成部分及其协方差矩阵),而这很难获得。为了克服这些挑战,我们建议通过结合参与研究的单变量分析结果(即关联测试的p值和效果估计)对稀有变异体进行基因水平的测试。这种简单的策略之所以可行,是因为有一种见解,即可以从单变量统计信息中恢复多元统计信息,以及可以从参与研究之一或从公开数据库中估算出的单变量检验统计信息的相关矩阵。 。我们从理论上和数字上都表明,所提出的荟萃分析方法可准确控制I型错误,并且与对单个参与者数据的联合分析一样强大。这种方法适应任何疾病表型和任何研究设计,并产生所有常用的基因水平测试。人体测量特征遗传调查(GIANT)联盟对GWAS汇总结果的应用揭示了与人类身高相关的稀有和低频变异。相关软件可免费获得。 ©2013美国人类遗传学会。

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