Title :
Inferring Gene Regulatory Networks with Sparse Bayesian Learning and phi-mixing coefficient
Author :
Singh, Navab ; Vidyasagar, M.
Author_Institution :
Dept. of Bioeng., Univ. of Texas at Dallas, Richardson, TX, USA
Abstract :
A Gene Regulatory Network (GRN) is a graphical representation of how genes within a cell regulate each other via various mechanisms. Inferring a GRN from high-throughput experimental data is an important problem in systems biology. In this paper, a new algorithm is presented for inferring a GRN from steady-state gene expression data. The new algorithm utilizes a Sparse Bayesian Learning (SBL) approach and a measure of dependence between random variables called the φ-mixing coefficient. To evaluate the performance of the algorithm, it is compared with two state of the art algorithms on several synthetic datasets. The results demonstrate that our algorithm compares favorably with these two algorithms on moderate sized networks.
Keywords :
Bayes methods; biology computing; genetics; learning (artificial intelligence); random processes; φ-mixing coefficient; GRN inferring; SBL approach; gene regulatory network; graphical representation; high-throughput experimental data; performance evaluation; random variables; sparse Bayesian learning approach; steady-state gene expression data; systems biology; Bayes methods; Gene expression; Inference algorithms; Maximum likelihood estimation; Random variables; Regulators; Standards;
Conference_Titel :
Control Conference (ECC), 2014 European
Conference_Location :
Strasbourg
Print_ISBN :
978-3-9524269-1-3
DOI :
10.1109/ECC.2014.6862185