Title :
Towards a Highly Scalable Hybrid Metaheuristic for Haplotype Inference Under Parsimony
Author :
Benedettini, Stefano ; Gaspero, Luca Di ; Roli, Andrea
Author_Institution :
DIEGM, Univ. di Udine, Udine
Abstract :
Haplotype inference is a challenging problem in bioinformatics that consists in inferring the basic genetic constitution of diploid organisms on the basis of their genotype. This piece of information allows researchers to perform association studies for the genetic variants involved in diseases and the individual responses to therapeutic agents. A notable approach to the problem is to encode it as a combinatorial problem (under certain hypotheses, such as the pure parsimony) and to solve it using off-the-shelf combinatorial optimization techniques. In this paper, we present and discuss an approach based on hybridization of two meta-heuristics, one being a population based learning algorithm and the other a local search. We test our approach by solving instances from common Haplotype inference benchmarks. Results show that this approach achieves an improvement on solution quality with respect to the application of a single ´pure´ algorithm.
Keywords :
biology computing; combinatorial mathematics; diseases; genetics; optimisation; search problems; Haplotype inference; bioinformatics; diploid organisms; diseases; genetic constitution; genotype; hybrid metaheuristic; local searching; off-the-shelf combinatorial optimization techniques; population based learning algorithm; pure parsimony; therapeutic agents; Bioinformatics; Biological cells; DNA; Diseases; Genetics; Genomics; Humans; Hybrid intelligent systems; Inference algorithms; Organisms; Ant colony optimization; Haplotype inference; Local search; Metaheuristics;
Conference_Titel :
Hybrid Intelligent Systems, 2008. HIS '08. Eighth International Conference on
Conference_Location :
Barcelona
Print_ISBN :
978-0-7695-3326-1
Electronic_ISBN :
978-0-7695-3326-1
DOI :
10.1109/HIS.2008.102