Abstract
Motivation: In haploinsufficiency profiling data, pleiotropic genes are often misclassified by clustering algorithms that impose the constraint that a gene or experiment belong to only one cluster. We have developed a general probabilistic model that clusters genes and experiments without requiring that a given gene or drug only appear in one cluster. The model also incorporates the functional annotation of known genes to guide the clustering procedure. Results: We applied our model to the clustering of 79 chemogenomic experiments in yeast. Known pleiotropic genes PDR5 and MAL11 are more accurately represented by the model than by a clustering procedure that requires genes to belong to a single cluster. Drugs such as miconazole and fenpropimorph that have different targets but similar off-target genes are clustered more accurately by the model-based framework. We show that this model is useful for summarizing the relationship among treatments and genes affected by those treatments in a compendium of microarray profiles. © The Author 2005. Published by Oxford University Press. All rights reserved.
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CITATION STYLE
Flaherty, P., Giaever, G., Kumm, J., Jordan, M. I., & Arkin, A. P. (2005). A latent variable model for chemogenomic profiling. Bioinformatics, 21(15), 3286–3293. https://doi.org/10.1093/bioinformatics/bti515
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