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BIOINFORMATICS
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BIOINFORMATICS 2002
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Determination of minimum sample size and discriminatory expression patterns in microarray data
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Daehee Hwang, William A. Schmitt, George Stephanop
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Added
17 Dec 2010
Updated
17 Dec 2010
Type
Journal
Year
2002
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BIOINFORMATICS
Authors
Daehee Hwang, William A. Schmitt, George Stephanopoulos, Gregory Stephanopoulos
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