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Estimating the Proportion of True Null Hypotheses for Multiple Comparisons

机译:估计用于多个比较的真空假设的比例

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摘要

Whole genome microarray investigations (e.g. differential expression, differential methylation, ChIP-Chip) provide opportunities to test millions of features in a genome. Traditional multiple comparison procedures such as familywise error rate (FWER) controlling procedures are too conservative. Although false discovery rate (FDR) procedures have been suggested as having greater power, the control itself is not exact and depends on the proportion of true null hypotheses. Because this proportion is unknown, it has to be accurately (small bias, small variance) estimated, preferably using a simple calculation that can be made accessible to the general scientific community. We propose an easy-to-implement method and make the R code available, for estimating the proportion of true null hypotheses. This estimate has relatively small bias and small variance as demonstrated by (simulated and real data) comparing it with four existing procedures. Although presented here in the context of microarrays, this estimate is applicable for many multiple comparison situations.
机译:全基因组微阵列研究(例如差异表达,差异甲基化,ChIP芯片)提供了测试基因组中数百万个特征的机会。传统的多重比较程序,例如家庭错误率(FWER)控制程序,过于保守。尽管已经提出了错误发现率(FDR)程序具有更大的功效,但控制本身并不精确,并且取决于真实无效假设的比例。由于该比例是未知的,因此必须准确估算(小偏差,小方差),最好使用可以让普通科学界使用的简单计算方法。我们提出一种易于实现的方法并使R代码可用,以估计真实零假设的比例。该估计值具有相对较小的偏差和较小的方差,如通过将其与四个现有过程进行比较(模拟和实际数据)所证明的那样。尽管此处是在微阵列的背景下介绍的,但此估算值适用于许多多重比较情况。

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