Motivation: Identifying groups of co-regulated genes by monitoring their expression over various experimental conditions is complicated by the fact that such co-regulation is condition-specific. Ignoring the context-specific nature of co-regulation significantly reduces the ability of clustering procedures to detect co-expressed genes due to additional 'noise' introduced by non-informative measurements. Results: We have developed a novel Bayesian hierarchical model and corresponding computational algorithms for clustering gene expression profiles across diverse experimental conditions and studies that accounts for context-specificity of gene expression patterns. The model is based on the Bayesian infinite mixtures framework and does not require a priori specification of the number of clusters. We demonstrate that explicit modeling of context-specificity results in increased accuracy of the cluster analysis by examining the specificity and sensitivity of clusters in microarray data. We also demonstrate that probabilities of co-expression derived from the posterior distribution of clusterings are valid estimates of statistical significance of created clusters. © 2006 Oxford University Press.
CITATION STYLE
Liu, X., Sivaganesan, S., Yeung, K. Y., Guo, J., Bumgarner, R. E., & Medvedovic, M. (2006). Context-specific infinite mixtures for clustering gene expression profiles across diverse microarray dataset. In Bioinformatics (Vol. 22, pp. 1737–1744). Oxford University Press. https://doi.org/10.1093/bioinformatics/btl184
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