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arxiv: 1902.08138 · v1 · pith:AWQT6SC5new · submitted 2019-02-21 · 📊 stat.ML · cs.LG· q-bio.GN· q-bio.MN· q-bio.QM

A Nonparametric Multi-view Model for Estimating Cell Type-Specific Gene Regulatory Networks

classification 📊 stat.ML cs.LGq-bio.GNq-bio.MNq-bio.QM
keywords dataexpressiongenecellmodelmulti-viewnetworksregulatory
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We present a Bayesian hierarchical multi-view mixture model termed Symphony that simultaneously learns clusters of cells representing cell types and their underlying gene regulatory networks by integrating data from two views: single-cell gene expression data and paired epigenetic data, which is informative of gene-gene interactions. This model improves interpretation of clusters as cell types with similar expression patterns as well as regulatory networks driving expression, by explaining gene-gene covariances with the biological machinery regulating gene expression. We show the theoretical advantages of the multi-view learning approach and present a Variational EM inference procedure. We demonstrate superior performance on both synthetic data and real genomic data with subtypes of peripheral blood cells compared to other methods.

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