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Increasing the power of meta-analysis of genome-wide association studies to detect heterogeneous effects

机译:增加全基因组关联研究的荟萃分析功能以检测异质效应

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摘要

MotivationMeta-analysis is essential to combine the results of genome-wide association studies (GWASs). Recent large-scale meta-analyses have combined studies of different ethnicities, environments and even studies of different related phenotypes. These differences between studies can manifest as effect size heterogeneity. We previously developed a modified random effects model (RE2) that can achieve higher power to detect heterogeneous effects than the commonly used fixed effects model (FE). However, RE2 cannot perform meta-analysis of correlated statistics, which are found in recent research designs, and the identified variants often overlap with those found by FE.
机译:动机元分析对于组合全基因组关联研究(GWAS)的结果至关重要。最近的大规模荟萃分析结合了对不同种族,环境的研究,甚至对不同相关表型的研究。研究之间的这些差异可以表现为效应量异质性。我们之前开发了一种改进的随机效应模型(RE2),与常用的固定效应模型(FE)相比,该模型可以实现更高的检测异质效应的能力。但是,RE2无法执行相关统计数据的荟萃分析,而这是在最近的研究设计中发现的,并且识别出的变体经常与FE发现的变体重叠。

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