Journal ArticleOpen Access
Reverse engineering gene regulatory network from microarray data using linear time-variant model
Authors
Author Affiliations
University of Dhaka, The University of Tokyo
Published InBMC Bioinformatics
Year2010
Citations81
Abstract
BACKGROUND: Gene regulatory network is an abstract mapping of gene regulations in living cells that can help to predict the system behavior of living organisms. Such prediction capability can potentially lead to the development of improved diagnostic tests and therapeutics. DNA microarrays, which measure the expression level of thousands of genes in parallel, constitute the numeric seed for the inference of gene regulatory networks. In this paper, we have proposed a new approach for inferring gene regulatory networks from time-series gene expression data using linear time-variant model. Here, Self-Adaptive Differential Evolution, a versatile and robust Evolutionary Algorithm, is used as the learning paradigm. RESULTS: To assess the potency of the proposed work, a well known nonlinear synthetic network has been…
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