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Compare and Contrast Meta Analysis (CCMA): A Method for Identification of Pleiotropic Loci in Genome-Wide Association Studies

机译:比较和对比元分析(CCMA):基因组-全关联研究中多亲基因座的鉴定方法

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摘要

In recent years, genome-wide association studies (GWAS) have identified many loci that are shared among common disorders and this has raised interest in pleiotropy. For performing appropriate analysis, several methods have been proposed, e.g. conducting a look-up in external sources or exploiting GWAS results by meta-analysis based methods. We recently proposed the Compare & Contrast Meta-Analysis (CCMA) approach where significance thresholds were obtained by simulation. Here we present analytical formulae for the density and cumulative distribution function of the CCMA test statistic under the null hypothesis of no pleiotropy and no association, which, conveniently for practical reasons, turns out to be exponentially distributed. This allows researchers to apply the CCMA method without having to rely on simulations. Finally, we show that CCMA demonstrates power to detect disease-specific, agonistic and antagonistic loci comparable to the frequently used Subset-Based Meta-Analysis approach, while better controlling the type I error rate.
机译:近年来,全基因组关联研究(GWAS)已发现许多常见疾病之间共有的基因座,这引起了对多效性的关注。为了进行适当的分析,已经提出了几种方法,例如。通过基于荟萃分析的方法对外部资源进行查找或利用GWAS结果。我们最近提出了比较和对比元分析(CCMA)方法,其中通过仿真获得了重要阈值。在这里,我们给出了在没有多效性和无关联性的零假设下CCMA检验统计量的密度和累积分布函数的解析公式,出于实际原因,它们被方便地指数分布。这使研究人员无需依靠仿真就可以应用CCMA方法。最后,我们证明CCMA可以检测疾病特异性,激动性和拮抗位点,与常用的基于子集的元分析方法相当,同时可以更好地控制I型错误率。

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