影响交叉参数的遗传算法在多序列比对中的应用

R. R. Rani, D. Ramyachitra
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引用次数: 3

摘要

在生物信息学中,使用序列比对可以更标准地识别蛋白质功能、蛋白质结构、模式识别和生物体之间的进化关系。利用RNA/DNA/核苷酸序列发现生物之间序列的相似性。多序列比对(Multiple Sequence Alignment,简称MSA)是指将三个或更多个完整序列同时排列,以寻找它们之间的相似性,从而识别诸如药物设计、蛋白质功能等生物学因素的方法。本文提出了一种改进的遗传算法,通过影响不同的交叉参数来寻找MSA的最优解。为了生成和保持候选解的多样性,需要使用各种类型的交叉算子。采用多目标优化(MOO)方法,最大限度地提高序列相似性和最小限度地减少间隙惩罚,得到Pareto前最优解。采用基准数据库BAliBASE 3.0评价不同交叉算子对序列比对质量的影响。最终结果显示,在交叉算子的影响下,序列比对显著增强。将结果与T-Coffee、Clustal Q、MAFFT、Kalign等在线高效工具以及Particle Swarm optimization (PSO)、Ant Colony optimization (ACO)、Genetic Algorithm (GA)、Artificial Bee Colony (ABC)算法等优化算法进行比较,发现投影方法取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of genetic algorithm by influencing the crossover parameters for multiple sequence alignment
In Bioinformatics, the more standard approach to identify the protein functionalities, protein structures, pattern identification and evolutionary relationships between the organisms are possible using the sequence alignment. The similarity of sequences is found between the organisms by using RNA/DNA/Nucleotide sequences. Multiple Sequence Alignment is denoted as MSA is a method of arranging three, or further whole sequences simultaneously to find the similarity between them which leads to identify biological factors such as Drug design, the function of the protein, etc. In this paper, an upgraded Genetic Algorithm has been projected to discover an optimum solution for MSA by influencing different crossover parameters. For generating and preserving the variety of candidate solutions, the various classes of crossover operators are responsible. Also, the multi-objective optimization (MOO) technique was employed by maximizing the sequence similarity and minimizing the gap penalty to obtain the Pareto front optimal solution. The benchmark database named BAliBASE 3.0 was employed to evaluate the achievement of different crossover operators which influences the quality of sequence alignment. The final outcome revealed the significant enhancement in the sequence alignment with the influence of crossover operators. The results have been compared with online efficient tools such as T-Coffee, Clustal Q, MAFFT and Kalign and other optimization algorithms such as Particle Swarm Optimization (PSO), Ant Colony Optimization (ACO), Genetic Algorithm (GA) and Artificial Bee Colony (ABC) algorithm and found that the projected method achieves improved results.
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