Multimodal Optimization Evolutionary Algorithm for RNA Secondary Structure Prediction

Yunfei Hu, Kai Zhang
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引用次数: 2

Abstract

Recent years, RNA secondary structure prediction has attracted much attention of many researchers, which is an important way to grasp the biochemical function of RNA. However, it is very difficult to predict the RNA secondary structure including pseudoknot, which has been identified to be an NP-complete problem. In this paper, a novel multimodal optimization evolutionary algorithm is proposed to optimize the decision space based on the minimum free energy to predict the secondary structure of RNA. Because there exist multiple equivalent secondary structures which represent the same minimum free energy, our algorithm maintain diversity in decision space to find multiple sets of secondary structure simultaneously. The performance of our algorithm is evaluated by PseudoBase instances and compared with some good prediction algorithms. The comparison results show that our method has higher accuracy in RNA secondary structure prediction.
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RNA二级结构预测的多模态优化进化算法
RNA二级结构预测是掌握RNA生化功能的重要途径,近年来备受研究者的关注。然而,包括假结在内的RNA二级结构的预测是非常困难的,这被认为是一个np完全问题。本文提出了一种基于最小自由能优化决策空间的多模态优化进化算法,用于预测RNA的二级结构。由于存在多个表示相同最小自由能的等价二级结构,因此算法在决策空间中保持多样性,可以同时找到多组二级结构。通过PseudoBase实例对算法的性能进行了评价,并与一些较好的预测算法进行了比较。结果表明,该方法具有较高的RNA二级结构预测精度。
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