Literature DB >> 15479708

An empirical Bayes approach to inferring large-scale gene association networks.

Juliane Schäfer1, Korbinian Strimmer.   

Abstract

MOTIVATION: Genetic networks are often described statistically using graphical models (e.g. Bayesian networks). However, inferring the network structure offers a serious challenge in microarray analysis where the sample size is small compared to the number of considered genes. This renders many standard algorithms for graphical models inapplicable, and inferring genetic networks an 'ill-posed' inverse problem.
METHODS: We introduce a novel framework for small-sample inference of graphical models from gene expression data. Specifically, we focus on the so-called graphical Gaussian models (GGMs) that are now frequently used to describe gene association networks and to detect conditionally dependent genes. Our new approach is based on (1) improved (regularized) small-sample point estimates of partial correlation, (2) an exact test of edge inclusion with adaptive estimation of the degree of freedom and (3) a heuristic network search based on false discovery rate multiple testing. Steps (2) and (3) correspond to an empirical Bayes estimate of the network topology.
RESULTS: Using computer simulations, we investigate the sensitivity (power) and specificity (true negative rate) of the proposed framework to estimate GGMs from microarray data. This shows that it is possible to recover the true network topology with high accuracy even for small-sample datasets. Subsequently, we analyze gene expression data from a breast cancer tumor study and illustrate our approach by inferring a corresponding large-scale gene association network for 3883 genes.

Entities:  

Mesh:

Substances:

Year:  2004        PMID: 15479708     DOI: 10.1093/bioinformatics/bti062

Source DB:  PubMed          Journal:  Bioinformatics        ISSN: 1367-4803            Impact factor:   6.937


  243 in total

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

Authors:  Ruiyan Luo; Hongyu Zhao
Journal:  Ann Appl Stat       Date:  2011       Impact factor: 2.083

2.  Statistical inference and reverse engineering of gene regulatory networks from observational expression data.

Authors:  Frank Emmert-Streib; Galina V Glazko; Gökmen Altay; Ricardo de Matos Simoes
Journal:  Front Genet       Date:  2012-02-03       Impact factor: 4.599

3.  gViz, a novel tool for the visualization of co-expression networks.

Authors:  Raphaël Helaers; Eric Bareke; Bertrand De Meulder; Michael Pierre; Sophie Depiereux; Naji Habra; Eric Depiereux
Journal:  BMC Res Notes       Date:  2011-10-27

4.  Using biologically interrelated experiments to identify pathway genes in Arabidopsis.

Authors:  Kyungpil Kim; Keni Jiang; Siew Leng Teng; Lewis J Feldman; Haiyan Huang
Journal:  Bioinformatics       Date:  2012-01-23       Impact factor: 6.937

5.  Empirical Bayes conditional independence graphs for regulatory network recovery.

Authors:  Rami Mahdi; Abishek S Madduri; Guoqing Wang; Yael Strulovici-Barel; Jacqueline Salit; Neil R Hackett; Ronald G Crystal; Jason G Mezey
Journal:  Bioinformatics       Date:  2012-06-08       Impact factor: 6.937

Review 6.  Utility of correlation measures in analysis of gene expression.

Authors:  Anthony Almudevar; Lev B Klebanov; Xing Qiu; Peter Salzman; Andrei Y Yakovlev
Journal:  NeuroRx       Date:  2006-07

7.  Using the principle of entropy maximization to infer genetic interaction networks from gene expression patterns.

Authors:  Timothy R Lezon; Jayanth R Banavar; Marek Cieplak; Amos Maritan; Nina V Fedoroff
Journal:  Proc Natl Acad Sci U S A       Date:  2006-11-30       Impact factor: 11.205

8.  A linear programming approach for estimating the structure of a sparse linear genetic network from transcript profiling data.

Authors:  Sahely Bhadra; Chiranjib Bhattacharyya; Nagasuma R Chandra; I Saira Mian
Journal:  Algorithms Mol Biol       Date:  2009-02-24       Impact factor: 1.405

9.  minet: A R/Bioconductor package for inferring large transcriptional networks using mutual information.

Authors:  Patrick E Meyer; Frédéric Lafitte; Gianluca Bontempi
Journal:  BMC Bioinformatics       Date:  2008-10-29       Impact factor: 3.169

10.  The impact of measurement errors in the identification of regulatory networks.

Authors:  André Fujita; Alexandre G Patriota; João R Sato; Satoru Miyano
Journal:  BMC Bioinformatics       Date:  2009-12-13       Impact factor: 3.169

View more

北京卡尤迪生物科技股份有限公司 © 2022-2023.