| Literature DB >> 18629041 |
C Vlachos1, R Gregory, R C Paton, J R Saunders, Q H Wu.
Abstract
This paper presents two approaches to the individual-based modelling of bacterial ecologies and evolution using computational tools. The first approach is a fine-grained model that is based on networks of interactivity between computational objects representing genes and proteins. The second approach is a coarser-grained, agent-based model, which is designed to explore the evolvability of adaptive behavioural strategies in artificial bacteria represented by learning classifier systems. The structure and implementation of these computational models is discussed, and some results from simulation experiments are presented. Finally, the potential applications of the proposed models to the solution of real-world computational problems, and their use in improving our understanding of the mechanisms of evolution, are briefly outlined.Year: 2004 PMID: 18629041 PMCID: PMC2447324 DOI: 10.1002/cfg.368
Source DB: PubMed Journal: Comp Funct Genomics ISSN: 1531-6912