Title :
Gene networks reconstruction and time-series prediction from microarray data using recurrent neural fuzzy networks
Author :
Maraziotis, I.A. ; Dragomir, A. ; Bezerianos, A.
Author_Institution :
Dept. of Med. Phys., Univ. of Patras, Rio
Abstract :
Reverse engineering problems concerning the reconstruction and identification of gene regulatory networks through gene expression data are central issues in computational molecular biology and have become the focus of much research in the last few years. An approach has been proposed for inferring the complex causal relationships among genes from microarray experimental data, which is based on a novel neural fuzzy recurrent network. The method derives information on the gene interactions in a highly interpretable form (fuzzy rules) and takes into account the dynamical aspects of gene regulation through its recurrent structure. To determine the efficiency of the proposed approach, microarray data from two experiments relating to Saccharomyces cerevisiae and Escherichia coli have been used and experiments concerning gene expression time course prediction have been conducted. The interactions that have been retrieved among a set of genes known to be highly regulated during the yeast cell-cycle are validated by previous biological studies. The method surpasses other computational techniques, which have attempted genetic network reconstruction, by being able to recover significantly more biologically valid relationships among genes
Keywords :
biology computing; cellular biophysics; fuzzy neural nets; genetics; microorganisms; multilayer perceptrons; reverse engineering; Escherichia coli; Saccharomyces cerevisiae; biological studies; complex causal relationships; computational molecular biology; dynamical aspects; fuzzy rules; gene interactions; gene networks; gene regulation; genetic network reconstruction; highly interpretable form; microarray data; recurrent neural fuzzy networks; reverse engineering problems; time-series prediction; yeast cell-cycle;
Journal_Title :
Systems Biology, IET
DOI :
10.1049/iet-syb:20050107