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首页> 外文期刊>Nature Communications >Fast and covariate-adaptive method amplifies detection power in large-scale multiple?hypothesis testing
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Fast and covariate-adaptive method amplifies detection power in large-scale multiple?hypothesis testing

机译:快速和协变量 - 自适应方法放大大型多级的检测功率?假设检测

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Multiple hypothesis testing is an essential component of modern data science. In many settings, in addition to the p-value, additional covariates for each hypothesis are available, e.g., functional annotation of variants in genome-wide association studies. Such information is ignored by popular multiple testing approaches such as the Benjamini-Hochberg procedure (BH). Here we introduce AdaFDR, a fast and flexible method that adaptively learns the optimal p-value threshold from covariates to significantly improve detection power. On eQTL analysis of the GTEx data, AdaFDR discovers 32% more associations than BH at the same false discovery rate. We prove that AdaFDR controls false discovery proportion and show that it makes substantially more discoveries while controlling false discovery rate (FDR) in extensive experiments. AdaFDR is computationally efficient and allows multi-dimensional covariates with both numeric and categorical values, making it broadly useful across many applications.
机译:多假设检测是现代数据科学的重要组成部分。在许多设置中,除了p值之外,每个假设的额外协变量可用,例如,基因组关联研究中的变体功能注释。通过流行的多种测试方法(如Benjamini-Hochberg程序)(BH)忽略这些信息。在这里,我们介绍了ADAFDR,一种快速且灵活的方法,可自适应地从协变量中了解最佳p值阈值,以显着提高检测功率。在GTEX数据的EQTL分析上,ADAFDR以相同的错误发现速率发现比BH更多的关联32%。我们证明Adafdr控制错误的发现比例,并表明它在广泛的实验中控制了虚假发现率(FDR)的同时大大发现。 adafdr正在计算上有效,允许具有数字和分类值的多维协变量,使其在许多应用程序中广泛有用。

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