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AlineaGA—a genetic algorithm with local search optimization for multiple sequence alignment

机译:AlineaGA-具有针对多个序列比对的局部搜索优化的遗传算法

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摘要

The alignment and comparison of DNA, RNA and Protein sequences is one of the most common and important tasks in Bioinformatics. However, due to the size and complexity of the search space involved, the search for the best possible alignment for a set of sequences is not trivial. Genetic Algorithms have a predisposition for optimizing general combinatorial problems and therefore are serious candidates for solving multiple sequence alignment tasks. Local search optimization can be used to refine the solutions explored by Genetic Algorithms. We have designed a Genetic Algorithm which incorporates local search for this purpose: AlineaGA. We have tested AlineaGA with representative sequence sets of the globin family. We also compare the achieved results with the results provided by T-COFFEE.
机译:DNA,RNA和蛋白质序列的比对和比较是生物信息学中最常见和重要的任务之一。然而,由于所涉及的搜索空间的大小和复杂性,对于一组序列的最佳可能比对的搜索并非易事。遗传算法具有优化一般组合问题的倾向,因此是解决多重序列比对任务的重要候选者。可以使用局部搜索优化来完善遗传算法探索的解决方案。我们为此目的设计了一种遗传算法,该算法结合了本地搜索:AlineaGA。我们已经用球蛋白家族的代表性序列集测试了AlineaGA。我们还将获得的结果与T-COFFEE提供的结果进行比较。

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