Comments on the analysis of unbalanced microarray data.

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Published in Bioinformatics on June 15, 2009

Authors

Kathleen F Kerr1

Author Affiliations

1: Department of Biostatistics, Box 357232, University of Washington, Seattle, WA 98195, USA. katiek@u.washington.edu

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