Literature DB >> 20570387

From 'differential expression' to 'differential networking' - identification of dysfunctional regulatory networks in diseases.

Alberto de la Fuente1.   

Abstract

Understanding diseases requires identifying the differences between healthy and affected tissues. Gene expression data have revolutionized the study of diseases by making it possible to simultaneously consider thousands of genes. The identification of disease-associated genes requires studying the genes in the context of the regulatory systems they are involved in. A major goal is to identify specific regulatory networks that are dysfunctional in a given disease state. Although we still have not reached a stage where the elucidation of differential regulatory networks is commonly feasible, recent advances have described the first steps towards this goal - the identification of differential coexpression networks. This review describes the shift from differential gene expression to differential networking and outlines how this shift will affect the study of the genetic basis of disease. Copyright 2010 Elsevier Ltd. All rights reserved.

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Year:  2010        PMID: 20570387     DOI: 10.1016/j.tig.2010.05.001

Source DB:  PubMed          Journal:  Trends Genet        ISSN: 0168-9525            Impact factor:   11.639


  203 in total

1.  Exploring tomato gene functions based on coexpression modules using graph clustering and differential coexpression approaches.

Authors:  Atsushi Fukushima; Tomoko Nishizawa; Mariko Hayakumo; Shoko Hikosaka; Kazuki Saito; Eiji Goto; Miyako Kusano
Journal:  Plant Physiol       Date:  2012-02-03       Impact factor: 8.340

2.  How Gene Networks Can Uncover Novel CVD Players.

Authors:  Laurence D Parnell; Patricia Casas-Agustench; Lakshmanan K Iyer; Jose M Ordovas
Journal:  Curr Cardiovasc Risk Rep       Date:  2014-01

3.  An empirical Bayesian approach for identifying differential coexpression in high-throughput experiments.

Authors:  John A Dawson; Christina Kendziorski
Journal:  Biometrics       Date:  2011-10-17       Impact factor: 2.571

4.  R/EBcoexpress: an empirical Bayesian framework for discovering differential co-expression.

Authors:  John A Dawson; Shuyun Ye; Christina Kendziorski
Journal:  Bioinformatics       Date:  2012-05-16       Impact factor: 6.937

5.  Efficient Mining of Discriminative Co-clusters from Gene Expression Data.

Authors:  Omar Odibat; Chandan K Reddy
Journal:  Knowl Inf Syst       Date:  2014-12       Impact factor: 2.822

6.  Identification of lncRNA-associated differential subnetworks in oesophageal squamous cell carcinoma by differential co-expression analysis.

Authors:  Wei Liu; Cai-Yan Gan; Wei Wang; Lian-Di Liao; Chun-Quan Li; Li-Yan Xu; En-Min Li
Journal:  J Cell Mol Med       Date:  2020-03-12       Impact factor: 5.310

Review 7.  Beyond modules and hubs: the potential of gene coexpression networks for investigating molecular mechanisms of complex brain disorders.

Authors:  C Gaiteri; Y Ding; B French; G C Tseng; E Sibille
Journal:  Genes Brain Behav       Date:  2013-12-10       Impact factor: 3.449

8.  Machine learning-based differential network analysis: a study of stress-responsive transcriptomes in Arabidopsis.

Authors:  Chuang Ma; Mingming Xin; Kenneth A Feldmann; Xiangfeng Wang
Journal:  Plant Cell       Date:  2014-02-11       Impact factor: 11.277

Review 9.  The role of systems biology approaches in determining molecular signatures for the development of more effective vaccines.

Authors:  Abdulmohammad Pezeshki; Inna G Ovsyannikova; Brett A McKinney; Gregory A Poland; Richard B Kennedy
Journal:  Expert Rev Vaccines       Date:  2019-02-11       Impact factor: 5.217

10.  DiffCoEx: a simple and sensitive method to find differentially coexpressed gene modules.

Authors:  Bruno M Tesson; Rainer Breitling; Ritsert C Jansen
Journal:  BMC Bioinformatics       Date:  2010-10-06       Impact factor: 3.169

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