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An independent filter for gene set testing based on spectral enrichment

机译:用于基于光谱富集的基因组测试的独立过滤器

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摘要

Gene set testing has become an indispensable tool for the analysis of high-dimensional genomic data. An important motivation for testing gene sets, rather than individual genomic variables, is to improve statistical power by reducing the number of tested hypotheses. Given the dramatic growth in common gene set collections, however, testing is often performed with nearly as many gene sets as underlying genomic variables. To address the challenge to statistical power posed by large gene set collections, we have developed spectral gene set filtering (SGSF), a novel technique for independent filtering of gene set collections prior to gene set testing. The SGSF method uses as a filter statistic the p-value measuring the statistical significance of the association between each gene set and the sample principal components (PCs), taking into account the significance of the associated eigenvalues. Because this filter statistic is independent of standard gene set test statistics under the null hypothesis but dependent under the alternative, the proportion of enriched gene sets is increased without impacting the type I error rate. As shown using simulated and real gene expression data, the SGSF algorithm accurately filters gene sets unrelated to the experimental outcome resulting in significantly increased gene set testing power.
机译:基因组测试已成为分析高维基因组数据的必不可少的工具。测试基因集而不是单个基因组变量的重要动机是通过减少测试假设的数量来提高统计能力。但是,鉴于常见基因集集合的急剧增长,通常使用几乎与基本基因组变量一样多的基因集进行测试。为了解决大型基因集集合对统计能力的挑战,我们开发了频谱基因集过滤(SGSF),这是一种在基因集测试之前独立过滤基因集集合的新技术。 SGSF方法使用p值作为过滤统计量,该p值测量每个基因集与样本主成分(PC)之间关联的统计显着性,同时考虑了相关特征值的显着性。由于此过滤器统计信息在无效假设下独立于标准基因集测试统计数据,但在替代情况下是依赖的,因此在不影响I型错误率的情况下,增加了富集基因集的比例。如图所示,使用模拟和真实基因表达数据,SGSF算法可准确过滤与实验结果无关的基因集,从而显着提高了基因集测试能力。

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