Journal article
Bayesian Inference of Signaling Network Topology in a Cancer Cell Line
SM Hill, Y Lu, J Molina, LM Heiser, PT Spellman, TP Speed, JW Gray, GB Mills, S Mukherjee
Bioinformatics | OXFORD UNIV PRESS | Published : 2012
Abstract
Motivation: Protein signaling networks play a key role in cellular function, and their dysregulation is central to many diseases, including cancer. To shed light on signaling network topology in specific contexts, such as cancer, requires interrogation of multiple proteins through time and statistical approaches to make inferences regarding network structure. Results: In this study, we use dynamic Bayesian networks to make inferences regarding network structure and thereby generate testable hypotheses. We incorporate existing biology using informative network priors, weighted objectively by an empirical Bayes approach, and exploit a connection between variable selection and network inference..
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Awarded by U.S. Department of Energy
Funding Acknowledgements
U.S. Department of Energy (Contract No. DE-AC02-05CH11231, NCI U54 CA 112970 and NCI P50 CA 58207 to J.W.G.); Stand Up to Cancer/AACR Dream Team Grant (SU2C-AACR- DT0209, NCI PO1CA099031, NCI P30 CA16672 and Komen Grant KG 081694 to G.B.M.); UK EPSRC EP/E501311/1 and the Cancer Systems Biology Center grant from the Netherlands Organisation for Scientific Research. The content is solely the responsibility of the authors and does not necessarily represent the official views of the NCI, NIH, AACR or Komen Foundation.