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Parallel AlineaGA: An island parallel evolutionary algorithm for multiple sequence alignment

机译:平行Alineaga:多序列对齐的岛屿并行进化算法

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Multiple sequence alignment is the base of a growing number of Bioinformatics applications. This does not mean that the accuracy of the existing methods corresponds to biologically faultless alignments. Searching for the optimal alignment for a set of sequences is often hindered by the size and complexity of the search space. Parallel Genetic Algorithms are a class of stochastic algorithms which can increase the speed up of the algorithms. They also enhance the efficiency of the search and the robustness of the solutions by delivering results that are better than those provided by the sum of several sequential Genetic Algorithms. AlineaGA is an evolutionary method for solving protein multiple sequence alignment. It uses a Genetic Algorithm on which some of its genetic operators embed a simple local search optimization. We have implemented its parallel version which we now present. Comparing with its sequential version we have observed an improvement in the search for the best solution. We have also compared its performance with ClustalW2 and T-Coffee, observing that Parallel AlineaGA can lead the search for better solutions for the majority of the datasets in study.
机译:多个序列对准是越来越多的生物信息学应用的基础。这并不意味着现有方法的准确性对应于生物学上无故障的对齐。搜索用于一组序列的最佳对准通常受到搜索空间的大小和复杂性的阻碍。并行遗传算法是一类随机算法,可以增加算法的速度。它们还通过提供优于由几个顺序遗传算法的总和提供的结果来增强搜索效率和解决方案的鲁棒性。 Alineaga是一种用于溶解蛋白质多序列对准的进化方法。它使用了一种遗传算法,其中一些遗传运算符嵌入了简单的本地搜索优化。我们已经实施了我们现在存在的并行版本。与其顺序版本相比,我们观察到搜索最佳解决方案的改进。我们还将其与Clustalw2和T-Coffee进行了比较,观察并行的Alineaga可以在研究中搜索大多数数据集的更好的解决方案。

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