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[Untitled]

Authors :
Jan Polman
Rob Jelier
Antoine Veldhoven
Stefan Verhoeven
Guido Jenster
Sjozef van Baal
Ton Rullmann
Blaise T. F. Alako
Source :
BMC Bioinformatics. 6:51
Publication Year :
2005
Publisher :
Springer Science and Business Media LLC, 2005.

Abstract

High throughput microarray analyses result in many differentially expressed genes that are potentially responsible for the biological process of interest. In order to identify biological similarities between genes, publications from MEDLINE were identified in which pairs of gene names and combinations of gene name with specific keywords were co-mentioned. MEDLINE search strings for 15,621 known genes and 3,731 keywords were generated and validated. PubMed IDs were retrieved from MEDLINE and relative probability of co-occurrences of all gene-gene and gene-keyword pairs determined. To assess gene clustering according to literature co-publication, 150 genes consisting of 8 sets with known connections (same pathway, same protein complex, or same cellular localization, etc.) were run through the program. Receiver operator characteristics (ROC) analyses showed that most gene sets were clustered much better than expected by random chance. To test grouping of genes from real microarray data, 221 differentially expressed genes from a microarray experiment were analyzed with CoPub Mapper, which resulted in several relevant clusters of genes with biological process and disease keywords. In addition, all genes versus keywords were hierarchical clustered to reveal a complete grouping of published genes based on co-occurrence. The CoPub Mapper program allows for quick and versatile querying of co-published genes and keywords and can be successfully used to cluster predefined groups of genes and microarray data.

Details

ISSN :
14712105
Volume :
6
Database :
OpenAIRE
Journal :
BMC Bioinformatics
Accession number :
edsair.doi...........dcf8c6ae08934a9909e5b672c329dec6