Artículos de revistas
Mining Gene Regulatory Networks by Neural Modeling of Expression Time-Series
Fecha
2015-11Registro en:
Rubiolo, Mariano; Milone, Diego Humberto; Stegmayer, Georgina; Mining Gene Regulatory Networks by Neural Modeling of Expression Time-Series; IEEE Computer Society; Ieee-acm Transactions On Computational Biology And Bioinformatics; 12; 6; 11-2015; 1365-1373
1545-5963
CONICET Digital
CONICET
Autor
Rubiolo, Mariano
Milone, Diego Humberto
Stegmayer, Georgina
Resumen
Discovering gene regulatory networks from data is one of the most studied topics in recent years. Neural networks can be successfully used to infer an underlying gene network by modeling expression profiles as times series. This work proposes a novel method based on a pool of neural networks for obtaining a gene regulatory network from a gene expression dataset. They are used for modeling each possible interaction between pairs of genes in the dataset, and a set of mining rules is applied to accurately detect the subjacent relations among genes. The results obtained on artificial and real datasets confirm the method effectiveness for discovering regulatory networks from a proper modeling of the temporal dynamics of gene expression profiles.