BMC Bioinformatics -
2 days and 12 hours ago
Publication Date: 2008 Nov 18 PMID: 19017408br/Authors: Braun, R. - Cope, L. - Parmigiani,
G.br/Journal: BMC Bioinformaticsbr/br/ABSTRACT: BACKGROUND: An important emerging trend in the
analysis of microarray data is to incorporate known pathway information a priori. Expression level
summaries for pathways, obtained from the expression data for the genes constituting the pathway,
permit the inclusion of pathway information, reduce the high dimensionality of microarray data, and
have the power to elucidate gene-interaction dependencies which are not already accounted for
through known pathway identification. RESULTS: We present a novel method for the analysis of
microarray data that identifies joint differential expression in gene-pathway pairs. This method
takes advantage of known gene pathway memberships to compute a summary expression level for each
pathway as a whole. Correlations between the pathway expression summary and the expression levels
of genes not already known to be associated with the pathway provide clues to gene interaction
dependencies that are not already accounted for through known pathway identification, and
statistically significant differences between gene-pathway correlations in phenotypically different
cells (e.g., where the expression level of a single gene and a given pathway summary correlate
strongly in normal cells but weakly in tumor cells) may indicate biologically relevant gene-pathway
interactions. Here, we detail the methodology and present the results of this method applied to two
gene-expression datasets, identifying gene-pathway pairs which exhibit differential joint
expression by phenotype. CONCLUSIONS: The method described herein provides a means by which
interactions between large numbers of genes may be identified by incorporating known pathway
information to reduce the dimensionality of gene interactions. The method is efficient and easily
applied to data sets of ~10;2 arrays. Application of this method to two publicly-available cancer
data sets yields suggestive and promising results. This method has the potential to complement
gene-at-a-time analysis techniques for microarray analysis by indicating relationships between
pathways and genes that have not previously been identified and which may play a role in
disease.br/br/post to: a href =
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