Literature DB >> 20189938

Post hoc power estimation in large-scale multiple testing problems.

Sonja Zehetmayer1, Martin Posch.   

Abstract

BACKGROUND: The statistical power or multiple Type II error rate in large-scale multiple testing problems as, for example, in gene expression microarray experiments, depends on typically unknown parameters and is therefore difficult to assess a priori. However, it has been suggested to estimate the multiple Type II error rate post hoc, based on the observed data.
METHODS: We consider a class of post hoc estimators that are functions of the estimated proportion of true null hypotheses among all hypotheses. Numerous estimators for this proportion have been proposed and we investigate the statistical properties of the derived multiple Type II error rate estimators in an extensive simulation study.
RESULTS: The performance of the estimators in terms of the mean squared error depends sensitively on the distributional scenario. Estimators based on empirical distributions of the null hypotheses are superior in the presence of strongly correlated test statistics. AVAILABILITY: R-code to compute all considered estimators based on P-values and supplementary material is available on the authors web page http://statistics.msi.meduniwien.ac.at/index.php?page=pageszfnr.

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Year:  2010        PMID: 20189938      PMCID: PMC3500624          DOI: 10.1093/bioinformatics/btq085

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


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