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BAYESIAN HIERARCHICAL MODELING FOR SIGNALING PATHWAY INFERENCE FROM SINGLE CELL INTERVENTIONAL DATA

Overview
Journal Ann Appl Stat
Date 2011 Dec 14
PMID 22162986
Citations 5
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Abstract

Recent technological advances have made it possible to simultaneously measure multiple protein activities at the single cell level. With such data collected under different stimulatory or inhibitory conditions, it is possible to infer the causal relationships among proteins from single cell interventional data. In this article we propose a Bayesian hierarchical modeling framework to infer the signaling pathway based on the posterior distributions of parameters in the model. Under this framework, we consider network sparsity and model the existence of an association between two proteins both at the overall level across all experiments and at each individual experimental level. This allows us to infer the pairs of proteins that are associated with each other and their causal relationships. We also explicitly consider both intrinsic noise and measurement error. Markov chain Monte Carlo is implemented for statistical inference. We demonstrate that this hierarchical modeling can effectively pool information from different interventional experiments through simulation studies and real data analysis.

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BAYESIAN HIERARCHICAL MODELING FOR SIGNALING PATHWAY INFERENCE FROM SINGLE CELL INTERVENTIONAL DATA.

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References
1.
Luo R, Zhao H . BAYESIAN HIERARCHICAL MODELING FOR SIGNALING PATHWAY INFERENCE FROM SINGLE CELL INTERVENTIONAL DATA. Ann Appl Stat. 2011; 5(2A):725-745. PMC: 3233205. DOI: 10.1214/10-AOAS425. View

2.
Liu Y, Ringner M . Revealing signaling pathway deregulation by using gene expression signatures and regulatory motif analysis. Genome Biol. 2007; 8(5):R77. PMC: 1929148. DOI: 10.1186/gb-2007-8-5-r77. View

3.
Werhli A, Grzegorczyk M, Husmeier D . Comparative evaluation of reverse engineering gene regulatory networks with relevance networks, graphical gaussian models and bayesian networks. Bioinformatics. 2006; 22(20):2523-31. DOI: 10.1093/bioinformatics/btl391. View

4.
Peer D, Regev A, Elidan G, Friedman N . Inferring subnetworks from perturbed expression profiles. Bioinformatics. 2001; 17 Suppl 1:S215-24. DOI: 10.1093/bioinformatics/17.suppl_1.s215. View

5.
Peer D . Bayesian network analysis of signaling networks: a primer. Sci STKE. 2005; 2005(281):pl4. DOI: 10.1126/stke.2812005pl4. View