| Literature DB >> 28966702 |
Chen Gao1, Yunzhang Zhu2, Xiaotong Shen3, Wei Pan1.
Abstract
We aim to estimate multiple networks in the presence of sample heterogeneity, where the independent samples (i.e. observations) may come from different and unknown populations or distributions. Specifically, we consider penalized estimation of multiple precision matrices in the framework of a Gaussian mixture model. A major innovation is to take advantage of the commonalities across the multiple precision matrices through possibly nonconvex fusion regularization, which for example makes it possible to achieve simultaneous discovery of unknown disease subtypes and detection of differential gene (dys)regulations in functional genomics. We embed in the EM algorithm one of two recently proposed methods for estimating multiple precision matrices in Gaussian graphical models. We demonstrate the feasibility and potential usefulness of the proposed methods in an application toEntities:
Keywords: Disease subtype discovery; Gaussian graphical model; gene expression; glioblastoma; model-based clustering; non-convex penalty
Year: 2016 PMID: 28966702 PMCID: PMC5620020 DOI: 10.1214/16-EJS1135
Source DB: PubMed Journal: Electron J Stat ISSN: 1935-7524 Impact factor: 1.125