Identifying functional relationships within sets of co-expressed genes by combining upstream regulatory motif analysis and gene expression information

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Abstract

Background: Existing clustering approaches for microarray data do not adequately differentiate between subsets of co-expressed genes. We devised a novel approach that integrates expression and sequence data in order to generate functionally coherent and biologically meaningful subclusters of genes. Specifically, the approach clusters co-expressed genes on the basis of similar content and distributions of predicted statistically significant sequence motifs in their upstream regions.Results: We applied our method to several sets of co-expressed genes and were able to define subsets with enrichment in particular biological processes and specific upstream regulatory motifs.Conclusions: These results show the potential of our technique for functional prediction and regulatory motif identification from microarray data. © 2010 Martyanov and Gross; licensee BioMed Central Ltd.

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Martyanov, V., & Gross, R. H. (2010). Identifying functional relationships within sets of co-expressed genes by combining upstream regulatory motif analysis and gene expression information. BMC Genomics, 11(SUPPL. 2). https://doi.org/10.1186/1471-2164-11-S2-S8

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