DocumentCode :
1379919
Title :
Multivariate dependence and genetic networks inference
Author :
Margolin, A.A. ; Wang, Kangping ; Califano, A. ; Nemenman, I.
Volume :
4
Issue :
6
fYear :
2010
fDate :
11/1/2010 12:00:00 AM
Firstpage :
428
Lastpage :
440
Abstract :
A critical task in systems biology is the identification of genes that interact to control cellular processes by transcriptional activation of a set of target genes. Many methods have been developed that use statistical correlations in high-throughput data sets to infer such interactions. However, cellular pathways are highly cooperative, often requiring the joint effect of many molecules. Few methods have been proposed to explicitly identify such higher-order interactions, partially due to the fact that the notion of multivariate statistical dependence itself remains imprecisely defined. The authors define the concept of dependence among multiple variables using maximum entropy techniques and introduce computational tests for their identification. Synthetic network results reveal that this procedure uncovers dependencies even in undersampled regimes, when the joint probability distribution cannot be reliably estimated. Analysis of microarray data from human B cells reveals that third-order statistics, but not second-order ones, uncover relationships between genes that interact in a pathway to cooperatively regulate a common set of targets.
Keywords :
cellular biophysics; correlation methods; genetics; higher order statistics; maximum entropy methods; molecular biophysics; cellular pathways; control cellular processes; gene identification; genetic networks inference; human B cells; joint probability distribution; maximum entropy techniques; microarray data; multivariate dependence; statistical correlations; synthetic network; systems biology; target genes; third-order statistics; transcriptional activation;
fLanguage :
English
Journal_Title :
Systems Biology, IET
Publisher :
iet
ISSN :
1751-8849
Type :
jour
DOI :
10.1049/iet-syb.2010.0009
Filename :
5638196
Link To Document :
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