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元分析方法在跨表型全基因组关联研究中的统计功效和实用性。

Statistical power and utility of meta-analysis methods for cross-phenotype genome-wide association studies.

机构信息

Center for Genomic Medicine, Massachusetts General Hospital and Harvard Medical School, Boston, Massachusetts, United States of America.

Program in Quantitative Genomics, Harvard T.H. Chan School of Public Health, Boston, Massachusetts, United States of America.

出版信息

PLoS One. 2018 Mar 1;13(3):e0193256. doi: 10.1371/journal.pone.0193256. eCollection 2018.

Abstract

Advances in recent genome wide association studies (GWAS) suggest that pleiotropic effects on human complex traits are widespread. A number of classic and recent meta-analysis methods have been used to identify genetic loci with pleiotropic effects, but the overall performance of these methods is not well understood. In this work, we use extensive simulations and case studies of GWAS datasets to investigate the power and type-I error rates of ten meta-analysis methods. We specifically focus on three conditions commonly encountered in the studies of multiple traits: (1) extensive heterogeneity of genetic effects; (2) characterization of trait-specific association; and (3) inflated correlation of GWAS due to overlapping samples. Although the statistical power is highly variable under distinct study conditions, we found the superior power of several methods under diverse heterogeneity. In particular, classic fixed-effects model showed surprisingly good performance when a variant is associated with more than a half of study traits. As the number of traits with null effects increases, ASSET performed the best along with competitive specificity and sensitivity. With opposite directional effects, CPASSOC featured the first-rate power. However, caution is advised when using CPASSOC for studying genetically correlated traits with overlapping samples. We conclude with a discussion of unresolved issues and directions for future research.

摘要

近年来全基因组关联研究(GWAS)的进展表明,人类复杂性状的多效性影响广泛存在。已经使用了许多经典和最新的荟萃分析方法来识别具有多效性影响的遗传位点,但这些方法的整体性能尚不清楚。在这项工作中,我们使用广泛的模拟和 GWAS 数据集的案例研究来研究十种荟萃分析方法的功效和 I 型错误率。我们特别关注三种常见的多性状研究条件:(1)遗传效应的广泛异质性;(2)特征化特定性状的关联;以及(3)由于重叠样本导致 GWAS 的相关性膨胀。尽管在不同的研究条件下,统计功效高度可变,但我们发现,在不同的异质性条件下,几种方法的功效都很好。特别是当一个变体与超过一半的研究性状相关时,经典的固定效应模型表现出惊人的良好性能。随着无效应性状数量的增加,ASSET 与竞争性特异性和敏感性一起表现最佳。对于具有相反方向效应的性状,CPASSOC 具有一流的功效。然而,当使用 CPASSOC 研究具有重叠样本的遗传相关性状时,需要谨慎。我们最后讨论了未解决的问题和未来研究的方向。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/11cc/5832233/9e7fe90e3677/pone.0193256.g001.jpg

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