Published in BMC Bioinformatics on January 12, 2006
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Calculation of the minimum number of replicate spots required for detection of significant gene expression fold change in microarray experiments. Bioinformatics (2002) 1.47
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Identifying operons and untranslated regions of transcripts using Escherichia coli RNA expression analysis. Bioinformatics (2002) 1.19
Identifying and quantifying sources of variation in microarray data using high-density cDNA membrane arrays. J Comput Biol (2002) 1.17
Supervised cluster analysis for microarray data based on multivariate Gaussian mixture. Bioinformatics (2004) 1.09
Target prediction for small, noncoding RNAs in bacteria. Nucleic Acids Res (2006) 2.90
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