NCBI Logo
GEO Logo
   NCBI > GEO > Accession DisplayHelp Not logged in | LoginHelp
GEO help: Mouse over screen elements for information.
          Go
Series GSE32030 Query DataSets for GSE32030
Status Public on Jun 05, 2024
Title Empirical Bayes Conditional Independence Graphs for Dense Regulatory Network Recovery
Organism Homo sapiens
Experiment type Expression profiling by array
Summary Motivation: Computational inference methods that make use of graphical models to extract regulatory networks from gene expression data can have difficulty reconstructing dense regions of a network, a consequence of both computational complexity and unreliable parameter estimation when sample size is small. As a result, identification of hub genes is of special difficulty for these methods.Methods: We present a new algorithm, Empirical Light Mutual Min (ELMM), for large network reconstruction that has properties well suited for dense graph recovery. ELMM reconstructs the undirected graph of a regulatory network using empirical Bayes conditional independence testing with a heuristic relaxation of independence constraints in dense areas of the graph. This relaxation allows only one gene of a pair with a putative relation to be aware of the network connection, an approach that is aimed at easing multiple testing problems associated with recovering densely connected structures.Results: Using in silico data, we show that ELMM has better performance than commonly used network inference algorithms including PC Algorithm, GeneNet, and ARACNE. We also apply ELMM to reconstruct a network among 5,400 genes expressed in human lung airway epithelium of healthy nonsmokers, healthy smokers, and smokers with pulmonary diseases assayed using microarrays. The analysis identifies dense subnetworks that are consistent with known regulatory relationships in the lung airway and also suggests novel hub regulatory relationships among a number of genes that play roles in oxidative stress, wound response, and secretion.
 
Overall design We present a new approach to extracting regulatory networks from gene expression data. The algorithm is applied to reconstruct the gene regulatory network in human lung airway epithelium using microarray data extracted from healthy nonsmokers and smokers and smokers with pulmonary diseases.
 
Contributor(s) Mahdi R, Wang G, Strulovici-Barel Y, Salit J, Hackett N, Crystal RG, Mezey J
Citation missing Has this study been published? Please login to update or notify GEO.
Submission date Sep 09, 2011
Last update date Jun 05, 2024
Contact name Yael Strulovici-Barel
E-mail(s) yas2003@med.cornell.edu
Organization name Weill Cornell Medical College
Department Department of Genetic Medicine
Lab Crystal
Street address 1300 York Avenue
City New York
State/province NY
ZIP/Postal code 10021
Country USA
 
Platforms (1)
GPL570 [HG-U133_Plus_2] Affymetrix Human Genome U133 Plus 2.0 Array
Samples (270)
GSM549645 DGM-00028 [gene_expr]
GSM549646 DGM-00038 [gene_expr]
GSM549647 DGM-00060 [gene_expr]
Relations
BioProject PRJNA147499

Download family Format
SOFT formatted family file(s) SOFTHelp
MINiML formatted family file(s) MINiMLHelp
Series Matrix File(s) TXTHelp

Supplementary file Size Download File type/resource
GSE32030_RAW.tar 4.4 Gb (http)(custom) TAR (of CEL, CHP)
Processed data included within Sample table
Processed data provided as supplementary file

| NLM | NIH | GEO Help | Disclaimer | Accessibility |
NCBI Home NCBI Search NCBI SiteMap