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首页> 外文期刊>Briefings in bioinformatics >Simultaneous Enrichment Analysis of all Possible Gene-sets: Unifying Self-Contained and Competitive Methods
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Simultaneous Enrichment Analysis of all Possible Gene-sets: Unifying Self-Contained and Competitive Methods

机译:所有可能的基因集的同时富集分析:统一独立和竞争方法

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Studying sets of genomic features is increasingly popular in genomics, proteomics and metabolomics since analyzing at set level not only creates a natural connection to biological knowledge but also offers more statistical power. Currently, there are two gene-set testing approaches, self-contained and competitive, both of which have their advantages and disadvantages, but neither offers the final solution.We introduce simultaneous enrichment analysis (SEA), a new approach for analysis of feature sets in genomics and other omics based on a new unified null hypothesis, which includes the self-contained and competitive null hypotheses as special cases.We employ closed testing using Simes tests to test this new hypothesis. For every feature set, the proportion of active features is estimated, and a confidence bound is provided. Also, for every unified null hypotheses, a P-value is calculated, which is adjusted for family-wise error rate. SEA does not need to assume that the features are independent. Moreover, users are allowed to choose the feature set(s) of interest after observing the data.We develop a novel pipeline and apply it on RNA-seq data of dystrophin-deficient mdx mice, showcasing the flexibility of the method. Finally, the power properties of the method are evaluated through simulation studies.
机译:基因组特征的研究越来越受基因组学,蛋白质组学和代谢组学越来越受欢迎,因为在设定水平上分析不仅创造了与生物知识的自然联系,而且提供了更多的统计力量。目前,有两种基因集测试方法,自包含和竞争,两者都具有它们的优缺点,但既不提供最终解决方案。我们介绍同时富集分析(海),一种分析功能集的新方法在基于新的统一空假设的基因组学和其他OMIC中,包括自包含和竞争的空缺假设,作为特殊情况。我们采用封闭式测试使用SIMES测试来测试这一新假设。对于每个功能集,估计有源特征的比例,并提供置信度。此外,对于每个统一的NULL假设,计算p值,该值被调整以进行家庭明智的错误率。海不需要假设特征是独立的。此外,在观察数据后,允许用户选择感兴趣的特征集。我们开发一种新型管道并将其应用于Dystophin缺乏MDX小鼠的RNA-SEQ数据,展示了该方法的灵活性。最后,通过仿真研究评估该方法的功率特性。

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