Title :
Estimating Sparse Gene Regulatory Networks Using a Bayesian Linear Regression
Author :
Sarder, Pinaki ; Schierding, William ; Cobb, J. Perren ; Nehorai, Arye
Author_Institution :
Dept. of Electr. & Syst. Eng., Washington Univ., St. Louis, MO, USA
fDate :
6/1/2010 12:00:00 AM
Abstract :
In this paper, we propose a gene regulatory network (GRN) estimation method, which assumes that such networks are typically sparse, using time-series microarray datasets. We represent the regulatory relationships between the genes using weights, with the “net” regulation influence on a gene´s expression being the summation of the independent regulatory inputs. We estimate the weights using a Bayesian linear regression method for sparse parameter vectors. We apply our proposed method to the extraction of differential gene expression software selected genes of a human buffy-coat microarray expression profile dataset of ventilator-associated pneumonia (VAP), and compare the estimation result with the GRNs estimated using both a correlation coefficient method and a database-based method ingenuity pathway analysis. A biological analysis of the resulting consensus network that is derived using the GRNs, estimated with both our and the correlation-coefficient methods results in four biologically meaningful subnetworks. Also, our method performs either better than or competitively with the existing well-established GRN estimation methods. Moreover, it performs comparatively with respect to: 1) the ground-truth GRNs for the in silico 50- and 100-gene datasets reported recently in the DREAM3 challenge and 2) the GRN estimated using a mutual information-based method for the top-ranked Bayesian analysis of time series (a Bayesian user-friendly software for analyzing time-series microarray experiments) selected genes of the VAP dataset.
Keywords :
belief networks; correlation methods; diseases; genetics; phase estimation; regression analysis; time series; Bayesian linear regression; GRN estimation methods; buffy-coat microarray expression; correlation coefficient method; database-based method; differential gene expression; gene regulatory network; pathway analysis; regulatory relationships; sparse gene regulatory networks; sparse parameter vectors; time-series microarray datasets; ventilator-associated pneumonia; BANJO; Bayesian analysis of time series (BATS); Bayesian linear regression; DREAM; correlation coefficient; extraction of differential gene expression software (EDGE); gene regulatory network (GRN); ingenuity pathway analysis (IPA); mutual information; network identification by multiple regression (NIR) [time series network identification (TSNI)]; sparsity; ventilator-associated pneumonia (VAP); Bayes Theorem; Computational Biology; Computer Simulation; Gene Expression Profiling; Gene Regulatory Networks; Humans; Leukocytes; Linear Models; Oligonucleotide Array Sequence Analysis; Pneumonia, Ventilator-Associated; Software;
Journal_Title :
NanoBioscience, IEEE Transactions on
DOI :
10.1109/TNB.2010.2043444