Bayesian prediction of tissue-regulated splicing using RNA sequence and cellular context

BIOINFORMATICS(2011)

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摘要
Motivation: Alternative splicing is a major contributor to cellular diversity in mammalian tissues and relates to many human diseases. An important goal in understanding this phenomenon is to infer a ‘splicing code’ that predicts how splicing is regulated in different cell types by features derived from RNA, DNA and epigenetic modifiers. Methods: We formulate the assembly of a splicing code as a problem of statistical inference and introduce a Bayesian method that uses an adaptively selected number of hidden variables to combine subgroups of features into a network, allows different tissues to share feature subgroups and uses a Gibbs sampler to hedge predictions and ascertain the statistical significance of identified features. Results: Using data for 3665 cassette exons, 1014 RNA features and 4 tissue types derived from 27 mouse tissues ( http://genes.toronto.edu/wasp), we benchmarked several methods. Our method outperforms all others, and achieves relative improvements of 52% in splicing code quality and up to 22% in classification error, compared with the state of the art. Novel combinations of regulatory features and novel combinations of tissues that share feature subgroups were identified using our method. Contact: frey@psi.toronto.edu Supplementary information:Supplementary data are available at Bioinformatics online.
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