The Effect of Using Different Thermodynamic Models with Harmony Search Algorithm in the Accuracy of RNA Secondary Structure Prediction

A. Mohsen, A. Khader, Abdullatif Ghallab
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引用次数: 4

Abstract

Ribonucleic acid (RNA) is a nucleic acid composed of a group of the nucleotides. RNA molecule is essential to all biological systems. The RNA strand folds back into itself during the folding process via hydrogen bonds to build the secondary and tertiary structures. Understanding the biological function of a given RNA molecule is critical to determining its structure. Since the structure of RNA molecules is a key to their function, algorithms for the prediction of RNA structure are promising. This paper discusses the effect of applying different thermodynamic models to HSRNAFold an RNA secondary structure prediction algorithm based on Harmony search (HS). The experiments were performed on twelve individual known structures from four RNA classes (5S rRNA, Group I intron 23S rRNA, Group I intron 16S rRNA and 16S rRNA). The data demonstrate that the results obtained via RNAeval are better than those of enf2 in terms of prediction accuracy. In addition, the time needed by RNAeval is less than the time needed by enf2 for the same number of iterations.
不同热力学模型与和谐搜索算法对RNA二级结构预测精度的影响
核糖核酸(RNA)是由一组核苷酸组成的核酸。RNA分子对所有生物系统都是必不可少的。在折叠过程中,RNA链通过氢键折叠回自身,形成二级和三级结构。了解给定RNA分子的生物学功能对于确定其结构至关重要。由于RNA分子的结构是其功能的关键,因此预测RNA结构的算法很有前景。本文讨论了不同热力学模型对基于和谐搜索(HS)的RNA二级结构预测算法hsrnafld的影响。实验采用4类RNA (5S rRNA、I组内含子23S rRNA、I组内含子16S rRNA和16S rRNA)的12个已知结构进行。数据表明,RNAeval方法的预测精度优于enf2方法。此外,对于相同次数的迭代,RNAeval所需的时间少于enf2所需的时间。
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