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HotKnots: Heuristic prediction of RNA secondary structures including pseudoknots

机译:HotKnots:包括假结在内的RNA二级结构的启发式预测

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摘要

We present HotKnots, a new heuristic algorithm for the prediction of RNA secondary structures including pseudoknots. Based on the simple idea of iteratively forming stable stems, our algorithm explores many alternative secondary structures, using a free energy minimization algorithm for pseudoknot free secondary structures to identify promising candidate stems. In an empirical evaluation of the algorithm with 43 sequences taken from the Pseudobase database and from the literature on pseudoknotted structures, we found that overall, in terms of the sensitivity and specificity of predictions, HotKnots outperforms the well-known Pseudoknots algorithm of Rivas and Eddy and the NUPACK algorithm of Dirks and Pierce, both based on dynamic programming approaches for limited classes of pseudoknotted structures. It also outperforms the heuristic Iterated Loop Matching algorithm of Ruan and colleagues, and in many cases gives better results than the genetic algorithm from the STAR package of van Batenburg and colleagues and the recent pknotsRG-mfe algorithm of Reeder and Giegerich. The HotKnots algorithm has been implemented in C/C++ and is available from http://www.cs.ubc.ca/labs/beta/Software/HotKnots.
机译:我们提出HotKnots,一种新的启发式算法,用于预测包括假结在内的RNA二级结构。基于迭代形成稳定茎的简单思想,我们的算法探索了许多可替代的二级结构,使用自由能量最小化算法对无假结二级结构进行识别,以找到有前途的候选茎。在对来自伪数据库和伪结结构文献的43个序列的算法进行的经验评估中,我们发现总体而言,就预测的敏感性和特异性而言,HotKnots优于著名的Rivas和Eddy的伪结算法。以及Dirks和Pierce的NUPACK算法,均基于针对有限类伪结结构的动态编程方法。它也优于Ruan及其同事的启发式迭代循环匹配算法,并且在许多情况下,它们的效果要优于van Batenburg及其同事的STAR软件包中的遗传算法以及Reeder和Giegerich的最新pknotsRG-mfe算法。 HotKnots算法已在C / C ++中实现,可从http://www.cs.ubc.ca/labs/beta/Software/HotKnots获得。

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