Sparse graphical models for exploring gene expression data

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Abstract

We discuss the theoretical structure and constructive methodology for large-scale graphical models, motivated by their potential in evaluating and aiding the exploration of patterns of association in gene expression data. The theoretical discussion covers basic ideas and connections between Gaussian graphical models, dependency networks and specific classes of directed acyclic graphs we refer to as compositional networks. We describe a constructive approach to generating interesting graphical models for very high-dimensional distributions that builds on the relationships between these various stylized graphical representations. Issues of consistency of models and priors across dimension are key. The resulting methods are of value in evaluating patterns of association in large-scale gene expression data with a view to generating biological insights about genes related to a known molecular pathway or set of specified genes. Some initial examples relate to the estrogen receptor pathway in breast cancer, and the Rb-E2F cell proliferation control pathway.

MSC

62J10
62P10
62F15

Keywords

Bayesian regression analysis
Compositional networks
Estrogen receptor gene and pathway
ER pathway
Gene expression
Graphical models
Model selection
Rb-E2F genes and pathway
Transitive gene expression pathways

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