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首页> 外文期刊>Biomedical and Health Informatics, IEEE Journal of >A Novel Approach to Multiple Sequence Alignment Using Multiobjective Evolutionary Algorithm Based on Decomposition
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A Novel Approach to Multiple Sequence Alignment Using Multiobjective Evolutionary Algorithm Based on Decomposition

机译:基于分解的多目标进化算法的多序列比对新方法

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摘要

Multiple sequence alignment (MSA) is a fundamental and key step for implementing other tasks in bioinformatics, such as phylogenetic analyses, identification of conserved motifs and domains, structure prediction, etc. Despite the fact that there are many methods to implement MSA, biologically perfect alignment approaches are not found hitherto. This paper proposes a novel idea to perform MSA, where MSA is treated as a multiobjective optimization problem. A famous multiobjective evolutionary algorithm framework based on decomposition is applied for solving MSA, named MOMSA. In the MOMSA algorithm, we develop a new population initialization method and a novel mutation operator. We compare the performance of MOMSA with several alignment methods based on evolutionary algorithms, including VDGA, GAPAM, and IMSA, and also with state-of-the-art progressive alignment approaches, such as MSAprobs, Probalign, MAFFT, Procons, Clustal omega, T-Coffee, Kalign2, MUSCLE, FSA, Dialign, PRANK, and CLUSTALW. These alignment algorithms are tested on benchmark datasets BAliBASE 2.0 and BAliBASE 3.0. Experimental results show that MOMSA can obtain the significantly better alignments than VDGA, GAPAM on the most of test cases by statistical analyses, produce better alignments than IMSA in terms of TC scores, and also indicate that MOMSA is comparable with the leading progressive alignment approaches in terms of quality of alignments.
机译:多序列比对(MSA)是在生物信息学中执行其他任务的基础和关键步骤,例如系统发育分析,保守基序和结构域的识别,结构预测等。尽管存在许多实现MSA的方法,但生物学上是完美的迄今为止尚未找到对准方法。本文提出了一种执行MSA的新思路,其中将MSA视为多目标优化问题。将著名的基于分解的多目标进化算法框架应用于求解MSA,即MOMSA。在MOMSA算法中,我们开发了一种新的种群初始化方法和一种新颖的变异算子。我们将MOMSA的性能与几种基于进化算法的比对方法(包括VDGA,GAPAM和IMSA)以及最新的渐进比对方法(例如MSAprobs,Probalign,MAFFT,Procons,Clustal omega, T型咖啡,Kalign2,肌肉,FSA,Dialign,PRANK和CLUSTALW。这些对齐算法已在基准数据集BAliBASE 2.0和BAliBASE 3.0上进行了测试。实验结果表明,通过统计分析,MOMSA在大多数测试案例中可以获得比VDGA,GAPAM更好的比对,在TC得分方面比IMSA产生更好的比对,并且还表明MOMSA与领先的渐进比对方法可比。比对质量的术语。

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