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Finding associated variants in genome-wide association studies on multiple traits

机译:在多种特征上发现基因组关联研究中的相关变体

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Motivation: Many variants identified by genome-wide association studies (GWAS) have been found to affect multiple traits, either directly or through shared pathways. There is currently a wealth of GWAS data collected in numerous phenotypes, and analyzing multiple traits at once can increase power to detect shared variant effects. However, traditional meta-analysis methods are not suitable for combining studies on different traits. When applied to dissimilar studies, these meta-analysis methods can be underpowered compared to univariate analysis. The degree to which traits share variant effects is often not known, and the vast majority of GWAS meta-analysis only consider one trait at a time.
机译:动机:已经发现基因组关联研究(GWAs)鉴定的许多变体来影响多种性状,直接或通过共用途径。 目前有丰富的GWAS数据以众多表型收集,并立即分析多个特征,可以增加功率以检测共享变体效果。 然而,传统的Meta分析方法不适合与不同特征的研究相结合。 当应用于不同的研究时,与单变量分析相比,这些元分析方法可能会受到动力。 特征份异效果的程度往往是未知的,并且绝大多数Gwas Meta分析一次只考虑一个特征。

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