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- The Optimal Discovery Procedure for Large-Scale Significance Testing, with Applications to Comparative Microarray Experiments
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- Abstract:
- As much of the focus of genetics and molecular biology has
shifted toward the systems level, it has become increasingly important
to accurately extract biologically relevant signal from thousands of
related measurements. The common property among these high-dimensional
biological studies is that the measured features have a rich and
largely unknown underlying structure. One example of much recent
interest is identifying differentially expressed genes in comparative
microarray experiments. We propose a new approach aimed at optimally
performing many hypothesis tests in a high-dimensional study. This
approach estimates the Optimal Discovery Procedure (ODP), which has
recently been introduced and theoretically shown to optimally perform
multiple significance tests. Whereas existing procedures essentially
use data from only one feature at a time, the ODP approach uses the
relevant information from the entire data set when testing each
feature. In particular, we propose a generally applicable estimate of
the ODP for identifying differentially expressed genes in microarray
experiments. This microarray method consistently shows striking
improvements in power over five highly-used existing methods. For
example, in testing for differential expression between two breast
cancer tumor types, the ODP provides increases from 72% to 185% in the
number of genes called significant at a false discovery rate of 3%.
Our proposed microarray method has been made available in the
open-source, point-and-click EDGE software package.
- Subject Area:
- Computational Biology/Bioinformatics, Microarrays, Statistical Theory and Methods
- Suggested Citation:
- John D. Storey, James Y. Dai, and Jeffrey T. Leek,
"The Optimal Discovery Procedure for Large-Scale Significance Testing, with Applications to Comparative Microarray Experiments"
(September 1, 2005).
UW Biostatistics Working Paper Series.
Working Paper 260.
http://www.bepress.com/uwbiostat/paper260