Abstract :
Molecular biology provides several important techniques to modern cancer research. Among them, protein structure prediction offers important insights towards the understanding of a protein´s biochemical functions, which may eventually lead to the discovery of new cancer drugs. Homology modeling is an important technique for protein structure prediction. However, this modeling technique suffers from a misalignment between the template and the target sequences. The situation deteriorates when the sequence identity between the two is low. In this study, using the modeller program we applied three heuristic search algorithms, namely genetic algorithms, tabu search and particle swarm optimization, to align the template-target pair. Two model assessment scores, GA341 and DOPE, were used to guide the search process. A preliminary result showed that, under the same constraints on computational resources, genetic algorithms produced the best search result, and DOPE provided more effective assessment for the search
Keywords :
biochemistry; cancer; drugs; genetic algorithms; medical computing; molecular biophysics; molecular configurations; particle swarm optimisation; proteins; search problems; cancer drug; computational resource; genetic algorithm; heuristic search algorithm; modeller program; molecular biology; particle swarm optimization; protein biochemical function; protein homology modeling; protein structure prediction; sequence alignment; tabu search; Biological system modeling; Biology computing; Cancer drugs; Genetic algorithms; Heuristic algorithms; Particle swarm optimization; Predictive models; Prostate cancer; Proteins; Sequences;