Title :
Inference of genetic regulatory networks using regularized likelihood with covariance estimation
Author :
Rasool, Ghulam ; Bouaynaya, Nidhal ; Fathallah-Shaykh, Hassan M. ; Schonfeld, Dan
Author_Institution :
Dept. of Syst. Eng., Univ. of Arkansas at Little Rock, Little Rock, AR, USA
Abstract :
We cast the problem of reverse-engineering the connectivity matrix of genetic regulatory networks from a limited number of measurements as a regularized multivariate regression problem. The regularization term incorporates the prior knowledge of sparsity of genetic regulatory networks. Moreover, the genetic profiles within a measurement are assumed to be correlated with a full covariance structure. The proposed algorithm computes a sparse estimate of the connectivity matrix that accounts for correlated errors using regularized likelihood. We show that the joint estimation of the connectivity and covariance matrices improves the estimation of the network connectivity as compared to the assumption of uncorrelated measurements. Our algorithm has ln(ln(N)) sampling complexity. We test and validate our approach using synthetically generated networks.
Keywords :
covariance matrices; genetics; inference mechanisms; maximum likelihood estimation; regression analysis; reverse engineering; connectivity matrix; correlated errors; covariance estimation; full covariance structure; genetic profiles; genetic regulatory networks; joint estimation; network connectivity; regularized likelihood; regularized multivariate regression problem; reverse-engineering; sampling complexity; uncorrelated measurements; Correlation; Covariance matrix; Estimation; Genetics; Measurement uncertainty; Noise; Size measurement; Gene regulatory network; convex optimization; maximum likelihood estimation; multivariate regression;
Conference_Titel :
Statistical Signal Processing Workshop (SSP), 2012 IEEE
Conference_Location :
Ann Arbor, MI
Print_ISBN :
978-1-4673-0182-4
Electronic_ISBN :
pending
DOI :
10.1109/SSP.2012.6319759