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Independent filtering increases detection power for high-throughput experiments

机译:独立过滤可提高高通量实验的检测能力

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摘要

With high-dimensional data, variable-by-variable statistical testing is often used to select variables whose behavior differs across conditions. Such an approach requires adjustment for multiple testing, which can result in low statistical power. A two-stage approach that first filters variables by a criterion independent of the test statistic, and then only tests variables which pass the filter, can provide higher power. We show that use of some filter/test statistics pairs presented in the literature may, however, lead to loss of type I error control. We describe other pairs which avoid this problem. In an application to microarray data, we found that gene-by-gene filtering by overall variance followed by a t-test increased the number of discoveries by 50%. We also show that this particular statistic pair induces a lower bound on fold-change among the set of discoveries. Independent filtering—using filter/test pairs that are independent under the null hypothesis but correlated under the alternative—is a general approach that can substantially increase the efficiency of experiments.
机译:对于高维数据,经常使用逐变量统计检验来选择行为在不同条件下不同的变量。这种方法需要针对多个测试进行调整,这可能导致较低的统计功效。分两步进行的方法可以提供更高的功效,该方法首先通过独立于测试统计量的准则过滤变量,然后仅对通过过滤器的变量进行测试。我们表明,使用文献中介绍的某些过滤器/测试统计对可能会导致I型错误控制丢失。我们描述了避免该问题的其他对。在微阵列数据的应用中,我们发现,通过总体方差进行基因逐基因过滤,然后进行t检验,可将发现数量增加50%。我们还表明,这一特定的统计对在发现集之间引起倍数变化的下限。独立过滤(使用在零假设下独立但在备选假设下相关的过滤器/测试对)是一种可以大大提高实验效率的通用方法。

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