Expanded study of efn2 thermodynamic model performance on RnaPredict, an evolutionary algorithm for RNA folding

K. Wiese, A. Hendriks
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引用次数: 1

Abstract

The shape that organic molecules such as biopolymers form within organic systems largely determines the function said molecules perform. RNA is a biopolymer that plays a central part in several stages of protein synthesis, and also has structural, functional, and regulatory roles in the cell. In an ab initio case most common structure prediction techniques employ minimization of the free energy of a given RNA molecule via a thermodynamic model. RnaPredict is an evolutionary algorithm for RNA folding. This paper compares the performance of an advanced thermodynamic model, efn2, against the stacking-energy thermodynamic models INN and INN-HB on a test set containing 24 sequences from 4 rRNA subtypes. The prediction accuracy of efn2 is demonstrated on a majority of test sequences. A comparison is also made with the mfold prediction algorithm which demonstrated RnaPredict's comparable performance.
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RNA折叠进化算法rnappredict上efn2热力学模型性能的扩展研究
有机分子(如生物聚合物)在有机系统中形成的形状在很大程度上决定了这些分子的功能。RNA是一种生物聚合物,在蛋白质合成的几个阶段起着核心作用,在细胞中也具有结构、功能和调节作用。在从头算的情况下,大多数常见的结构预测技术通过热力学模型利用给定RNA分子的自由能最小化。rnapdict是一种RNA折叠的进化算法。在包含4种rRNA亚型的24个序列的测试集上,比较了先进的热力学模型efn2与叠能热力学模型INN和INN- hb的性能。efn2在大多数测试序列上的预测精度得到了证明。并与mfold预测算法进行了比较,证明了RnaPredict具有相当的性能。
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