Literature DB >> 33838043

Fast hybrid Bayesian integrative learning of multiple gene regulatory networks for type 1 diabetes.

Bochao Jia1, Faming Liang2.   

Abstract

Motivated by the study of the molecular mechanism underlying type 1 diabetes with gene expression data collected from both patients and healthy controls at multiple time points, we propose a hybrid Bayesian method for jointly estimating multiple dependent Gaussian graphical models with data observed under distinct conditions, which avoids inversion of high-dimensional covariance matrices and thus can be executed very fast. We prove the consistency of the proposed method under mild conditions. The numerical results indicate the superiority of the proposed method over existing ones in both estimation accuracy and computational efficiency. Extension of the proposed method to joint estimation of multiple mixed graphical models is straightforward.
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Entities:  

Keywords:  zzm321990 ψ-Learning; Data integration; Meta-analysis; Multiple Gaussian graphical models

Mesh:

Year:  2021        PMID: 33838043      PMCID: PMC8035990          DOI: 10.1093/biostatistics/kxz027

Source DB:  PubMed          Journal:  Biostatistics        ISSN: 1465-4644            Impact factor:   5.279


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