Title
Inferring gene regulatory networks from multiple microarray datasets.
Abstract
Microarray gene expression data has increasingly become the common data source that can provide insights into biological processes at a system-wide level. One of the major problems with microarrays is that a dataset consists of relatively few time points with respect to a large number of genes, which makes the problem of inferring gene regulatory network an ill-posed one. On the other hand, gene expression data generated by different groups worldwide are increasingly accumulated on many species and can be accessed from public databases or individual websites, although each experiment has only a limited number of time-points.This paper proposes a novel method to combine multiple time-course microarray datasets from different conditions for inferring gene regulatory networks. The proposed method is called GNR (Gene Network Reconstruction tool) which is based on linear programming and a decomposition procedure. The method theoretically ensures the derivation of the most consistent network structure with respect to all of the datasets, thereby not only significantly alleviating the problem of data scarcity but also remarkably improving the prediction reliability. We tested GNR using both simulated data and experimental data in yeast and Arabidopsis. The result demonstrates the effectiveness of GNR in terms of predicting new gene regulatory relationship in yeast and Arabidopsis.The software is available from http://zhangorup.aporc.org/bioinfo/grninfer/, http://digbio.missouri.edu/grninfer/ and http://intelligent.eic.osaka-sandai.ac.jp or upon request from the authors.
Year
DOI
Venue
2006
10.1093/bioinformatics/btl396
Bioinformatics
Keywords
Field
DocType
microarray gene expression data,supplementary data,inferring gene,simulated data,experimental data,common data source,multiple microarray datasets,gene expression data,new gene,regulatory network,data scarcity,gene network,linear program,biological process,gene regulatory network
Data mining,Microarray,Experimental data,Computer science,Software,Linear programming,Gene chip analysis,Bioinformatics,Microarray databases,Gene regulatory network,DNA microarray
Journal
Volume
Issue
ISSN
22
19
1367-4811
Citations 
PageRank 
References 
78
3.84
10
Authors
5
Name
Order
Citations
PageRank
Yong Wang157546.58
Trupti Joshi215317.95
Xiang-Sun Zhang3101677.06
Dong Xu440539.37
Luonan Chen51485145.71