Authors
Cristóbal Barba-González, José García-Nieto, Antonio Benítez-Hidalgo, Antonio J Nebro, José F Aldana-Montes
Publication date
2018
Conference
Intelligent Distributed Computing XII
Pages
61-70
Publisher
Springer International Publishing
Description
Inference of Gene Regulatory Networks (GRNs) remains an important open challenge in computational biology. The goal of bio-model inference is to, based on time-series of gene expression data, obtain the sparse topological structure and the parameters that quantitatively understand and reproduce the dynamics of biological system. Nevertheless, the inference of a GRN is a complex optimization problem that involve processing S-System models, which include large amount of gene expression data from hundreds (even thousands) of genes in multiple time-series (essays). This complexity, along with the amount of data managed, make the inference of GRNs to be a computationally expensive task. Therefore, the generation of parallel algorithmic proposals that operate efficiently on distributed processing platforms is a must in current reconstruction of GRNs. In this paper, a parallel multi-objective …
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Scholar articles
C Barba-González, J García-Nieto, A Benítez-Hidalgo… - Intelligent Distributed Computing XII, 2018