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Bootstrapping of gene-expression data improves and controls the false discovery rate of differentially expressed genes

机译:自举基因表达数据可改善并控制差异表达基因的错误发现率

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摘要

The ordinary-, penalized-, and bootstrap t-test, least squares and best linear unbiased prediction were compared for their false discovery rates (FDR), i.e. the fraction of falsely discovered genes, which was empirically estimated in a duplicate of the data set. The bootstrap-t-test yielded up to 80% lower FDRs than the alternative statistics, and its FDR was always as good as or better than any of the alternatives. Generally, the predicted FDR from the bootstrapped P-values agreed well with their empirical estimates, except when the number of mRNA samples is smaller than 16. In a cancer data set, the bootstrap-t-test discovered 200 differentially regulated genes at a FDR of 2.6%, and in a knock-out gene expression experiment 10 genes were discovered at a FDR of 3.2%. It is argued that, in the case of microarray data, control of the FDR takes sufficient account of the multiple testing, whilst being less stringent than Bonferoni-type multiple testing corrections. Extensions of the bootstrap simulations to more complicated test-statistics are discussed.
机译:比较了普通,惩罚和自举的t检验,最小二乘和最佳线性无偏预测的错误发现率(FDR),即错误发现的基因所占的百分比,这是根据数据集的重复进行凭经验估计的。 bootstrap-t检验的FDR比其他统计数据低80%,其FDR始终好于或优于其他任何一种。通常,自举的P值预测的FDR与他们的经验估计吻合得很好,除非当mRNA样本的数量小于16时。在癌症数据集中,bootstrap-t检验在FDR上发现了200个差异调节基因。在2.6%的基因敲除基因表达实验中,发现10个基因的FDR为3.2%。有人认为,在微阵列数据的情况下,对FDR的控制要充分考虑到多重测试,而没有Bonferoni型多重测试校正那么严格。讨论了自举模拟到更复杂的测试统计的扩展。

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