Co-expressed gene group analysis (CGGA): An automatic tool for the interpretation of microarray experiments

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doi doi:10.2390/biecoll-jib-2006-37
submission July 17, 2006
published August 28, 2006

Ricardo Martinez, Nicolas Pasquier, Claude Pasquier, Martine Collard and Lucero Lopez-Perez

Correspondence should be addressed to:
Ricardo Martinez
2000 route de lucioles 06912 Sophia Antipolis, France
rf.ecinu.s3i@nullenitramr


Abstract

Microarray technology produces vast amounts of data by measuring simultaneously the expression levels of thousands of genes under hundreds of biological conditions. Nowadays, one of the principal challenges in bioinformatics is the interpretation of this large amount of data using different sources of information. We have developed a novel data analysis method named CGGA (Co-expressed Gene Groups Analysis) that automatically finds groups of genes that are functionally enriched, i.e. have the same functional annotations, and are co-expressed. CGGA automatically integrates the information of microarrays, i.e. gene expression profiles, with the functional annotations of the genes obtained by the genome-wide information sources such as Gene Ontology. By applying CGGA to well-known microarray experiments, we have identified the principal functionally enriched and co-expressed gene groups, and we have shown that this approach enhances and accelerates the interpretation of DNA microarray experiments. CGGA program is available at http://www.i3s.unice.fr/~rmartine/CGGA

Reference

R. Martinez, N. Pasquier, C. Pasquier, M. Collard and L. Lopez-Perez. Co-expressed gene group analysis (CGGA): An automatic tool for the interpretation of microarray experiments. Journal of Integrative Bioinformatics, 3(2):37, 2006. Online Journal: http://journal.imbio.de/index.php?paper_id=37
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