| Literature DB >> 25433558 |
Arnaud Poret1, Jean-Pierre Boissel2.
Abstract
Target identification aims at identifying biomolecules whose function should be therapeutically altered to cure the considered pathology. An algorithm for in silico target identification using Boolean network attractors is proposed. It assumes that attractors correspond to phenotypes produced by the modeled biological network. It identifies target combinations which allow disturbed networks to avoid attractors associated with pathological phenotypes. The algorithm is tested on a Boolean model of the mammalian cell cycle and its applications are illustrated on a Boolean model of Fanconi anemia. Results show that the algorithm returns target combinations able to remove attractors associated with pathological phenotypes and then succeeds in performing the proposed in silico target identification. However, as with any in silico evidence, there is a bridge to cross between theory and practice. Nevertheless, it is expected that the algorithm is of interest for target identification.Entities:
Keywords: Anémie de Fanconi; Attracteurs; Attractors; Boolean networks; Drug discovery; Découverte de médicaments; Fanconi anemia; Identification de cibles; In silico; Phenotypes; Phénotypes; Réseaux booléens; Target identification
Mesh:
Year: 2014 PMID: 25433558 DOI: 10.1016/j.crvi.2014.10.002
Source DB: PubMed Journal: C R Biol ISSN: 1631-0691 Impact factor: 1.583