Independent filtering increases detection power for high-throughput experiments

European Bioinformatics Institute · European Molecular Biology Laboratory

PubMed
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Abstract

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…

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780
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Authors

3

Topics & keywords

Keywords
  • Statistical hypothesis testing
  • Filter (signal processing)
  • Type I and type II errors
  • Statistics
  • Statistic
  • Test statistic
  • Statistical power
  • Multiple comparisons problem
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