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ROBUST HYPERPARAMETER ESTIMATION PROTECTS AGAINST HYPERVARIABLE GENES AND IMPROVES POWER TO DETECT DIFFERENTIAL EXPRESSION

机译:鲁棒的超参数估计可保护超变基因并提高检测差异表达的能力

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摘要

One of the most common analysis tasks in genomic research is to identify genes that are differentially expressed (DE) between experimental conditions. Empirical Bayes (EB) statistical tests using moderated genewise variances have been very effective for this purpose, especially when the number of biological replicate samples is small. The EB procedures can however be heavily influenced by a small number of genes with very large or very small variances. This article improves the differential expression tests by robustifying the hyperparameter estimation procedure. The robust procedure has the effect of decreasing the informativeness of the prior distribution for outlier genes while increasing its informativeness for other genes. This effect has the double benefit of reducing the chance that hypervariable genes will be spuriously identified as DE while increasing statistical power for the main body of genes. The robust EB algorithm is fast and numerically stable. The procedure allows exact small-sample null distributions for the test statistics and reduces exactly to the original EB procedure when no outlier genes are present. Simulations show that the robustified tests have similar performance to the original tests in the absence of outlier genes but have greater power and robustness when outliers are present. The article includes case studies for which the robust method correctly identifies and downweights genes associated with hidden covariates and detects more genes likely to be scientifically relevant to the experimental conditions. The new procedure is implemented in the limma software package freely available from the Bioconductor repository.
机译:基因组研究中最常见的分析任务之一是鉴定实验条件之间差异表达(DE)的基因。为此,使用适度的基因方差进行经验贝叶斯(EB)统计检验非常有效,特别是当生物重复样本的数量较少时。但是,EB方法可能会受到少数具有非常大或非常小的变异的基因的严重影响。本文通过增强超参数估计程序来改进差异表达测试。鲁棒的程序具有降低离群基因先验分布的信息量,同时增加其对其他基因的信息量的效果。这种效果具有双重好处,即减少了将高变基因伪造为DE的机会,同时提高了基因主体的统计能力。鲁棒的EB算法快速且数值稳定。该程序允许精确的小样本零位分布用于测试统计,并且当不存在异常基因时,精确地减少到原始EB程序。仿真表明,在没有异常基因的情况下,鲁棒性测试的性能与原始测试相似,但是当存在异常值时,鲁棒性测试的功效和鲁棒性更高。本文包括一些案例研究,这些案例的鲁棒性方法可以正确地识别和降低与隐藏的协变量相关的基因,并检测更多可能与实验条件在科学上相关的基因。新程序在limma软件包中实施,该软件包可从Bioconductor存储库免费获得。

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