Bayesian graphical models for computational network biology

BMC Bioinformatics. 2018 Mar 21;19(Suppl 3):63. doi: 10.1186/s12859-018-2063-z.

Abstract

Background: Computational network biology is an emerging interdisciplinary research area. Among many other network approaches, probabilistic graphical models provide a comprehensive probabilistic characterization of interaction patterns between molecules and the associated uncertainties.

Results: In this article, we first review graphical models, including directed, undirected, and reciprocal graphs (RG), with an emphasis on the RG models that are curiously under-utilized in biostatistics and bioinformatics literature. RG's strictly contain chain graphs as a special case and are suitable to model reciprocal causality such as feedback mechanism in molecular networks. We then extend the RG approach to modeling molecular networks by integrating DNA-, RNA- and protein-level data. We apply the extended RG method to The Cancer Genome Atlas multi-platform ovarian cancer data and reveal several interesting findings.

Conclusions: This study aims to review the basics of different probabilistic graphical models as well as recent development in RG approaches for network modeling. The extension presented in this paper provides a principled and efficient way of integrating DNA copy number, DNA methylation, mRNA gene expression and protein expression.

Keywords: Causality; Chain graph; Directed graph; Reciprocal graph; Undirected graph.

Publication types

  • Research Support, N.I.H., Extramural

MeSH terms

  • Algorithms
  • Bayes Theorem
  • Computational Biology / methods*
  • DNA Methylation / genetics
  • Female
  • Gene Regulatory Networks
  • Genome
  • Humans
  • Markov Chains
  • Models, Theoretical*
  • Ovarian Neoplasms / genetics
  • Phosphatidylinositol 3-Kinases / metabolism
  • Signal Transduction

Substances

  • Phosphatidylinositol 3-Kinases