Title of article :
Learning Petri net models of non-linear gene interactions
Author/Authors :
Michael Mayo، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
Understanding how an individualʹs genetic make-up influences their risk of disease is a problem of paramount importance. Although machine-learning techniques are able to uncover the relationships between genotype and disease, the problem of automatically building the best biochemical model or “explanation” of the relationship has received less attention. In this paper, I describe a method based on random hill climbing that automatically builds Petri net models of non-linear (or multi-factorial) disease-causing gene–gene interactions. Petri nets are a suitable formalism for this problem, because they are used to model concurrent, dynamic processes analogous to biochemical reaction networks. I show that this method is routinely able to identify perfect Petri net models for three disease-causing gene–gene interactions recently reported in the literature.
Keywords :
epistasis , Petri net , High order gene–gene interaction , Multi-start random hill climbing
Journal title :
BioSystems
Journal title :
BioSystems