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Progressive Alignment Method Using Genetic Algorithm for Multiple Sequence Alignment

机译:基于遗传算法的多序列比对渐进比对方法

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摘要

In this paper, we have proposed a progressive alignment method using a genetic algorithm for multiple sequence alignment, named GAPAM. We have introduced two new mechanisms to generate an initial population: the first mechanism is to generate guide trees with randomly selected sequences and the second is shuffling the sequences inside such trees. Two different genetic operators have been implemented with GAPAM. To test the performance of our algorithm, we have compared it with existing well-known methods, such as PRRP, CLUSTALX, DIALIGN, HMMT, SB_PIMA, ML_PIMA, MULTALIGN, and PILEUP8, and also other methods, based on genetic algorithms (GA), such as SAGA, MSA-GA, and RBT-GA, by solving a number of benchmark datasets from BAliBase 2.0. To make a fairer comparison with the GA based algorithms such as MSA-GA and RBT-GA, we have performed further experiments covering all the datasets reported by those two algorithms. The experimental results showed that GAPAM achieved better solutions than the others for most of the cases, and also revealed that the overall performance of the proposed method outperformed the other methods mentioned above.
机译:在本文中,我们提出了一种使用遗传算法进行多序列比对的渐进比对方法,称为GAPAM。我们引入了两种新的机制来生成初始种群:第一种机制是生成具有随机选择序列的引导树,第二种机制是对此类树中的序列进行改组。 GAPAM已实施了两种不同的遗传算子。为了测试算法的性能,我们将其与现有的著名方法进行了比较,例如PRRP,CLUSTALX,DIALIGN,HMMT,SB_PIMA,ML_PIMA,MULTALIGN和PILEUP8,以及其他基于遗传算法(GA)的方法(例如SAGA,MSA-GA和RBT-GA),通过解决BAliBase 2.0中的许多基准数据集。为了与基于GA的算法(例如MSA-GA和RBT-GA)进行更公平的比较,我们已经进行了覆盖这两种算法报告的所有数据集的进一步实验。实验结果表明,GAPAM在大多数情况下都比其他方法获得了更好的解决方案,并且还表明,该方法的整体性能优于上述其他方法。

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