4.6 Article

Size, power and false discovery rates

Journal

ANNALS OF STATISTICS
Volume 35, Issue 4, Pages 1351-1377

Publisher

INST MATHEMATICAL STATISTICS
DOI: 10.1214/009053606000001460

Keywords

local false discovery rates; empirical bayes; large-scale simultaneous inference; empirical null

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Modern scientific technology has provided a new class of large-scale simultaneous inference problems, with thousands of hypothesis tests to consider at the same time. Microarrays epitomize this type of technology, but similar situations arise in proteomics, spectroscopy, imaging, and social science surveys. This paper uses false discovery rate methods to carry out both size and power calculations on large-scale problems. A simple empirical Bayes approach allows the false discovery rate (fdr) analysis to proceed with a minimum of frequentist or Bayesian modeling assumptions. Closed-form accuracy formulas are derived for estimated false discovery rates, and used to compare different methodologies: local or tail-area fdr's, theoretical, permutation, or empirical null hypothesis estimates. Two microarray data sets as well as simulations are used to evaluate the methodology, the power diagnostics showing why nonnull cases might easily fail to appear on a list of significant discoveries.

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