SARNA-ensemble-predict: The effect of different dissimilarity metrics on a novel ensemble-based RNA secondary structure prediction algorithm

Herbert H. Tsang, K. Wiese
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引用次数: 3

Abstract

Recently, there is a resurgence of interest in the RNA secondary structure prediction problem due to the discovery of many new families of non-coding RNAs with a variety of functions. This paper describes and presents a novel algorithm for RNA secondary structure prediction based on an ensemble-based approach. An evaluation of the performance in terms of sensitivity and specificity is made. Experiments were performed on eleven structures from four RNA classes (RNaseP, Group I intron 16S rRNA, Group I intron 23S rRNA and 16S rRNA). Three RNA secondary structure similarity metrics (base pair distance, tree edit distance, and thermodynamic energy distance) and their effects on the clustering algorithm were explored. The significant contribution of this paper is in the examining of the various results from employing different dissimilarity metrics. Overall, the base pair distance dissimilarity metric shows better results with the other two distance metrics (tree edit distance and thermodynamic energy distance). The results presented in this paper demonstrate that SARNA-Ensemble-Predict can give comparable performance to a state-of-the-art algorithm Sfold in terms of sensitivity.
SARNA-ensemble-predict:不同的不相似性指标对一种新的基于ensemble的RNA二级结构预测算法的影响
最近,由于发现了许多具有多种功能的新非编码RNA家族,人们对RNA二级结构预测问题的兴趣重新燃起。本文提出了一种基于集成方法的RNA二级结构预测算法。从敏感性和特异性两方面对其性能进行了评价。实验对RNaseP、I组内含子16S rRNA、I组内含子23S rRNA和16S rRNA 4类RNA的11个结构进行了分析。探讨了三种RNA二级结构相似性指标(碱基对距离、树编辑距离和热力学能量距离)及其对聚类算法的影响。本文的重要贡献在于检验了采用不同不相似性度量的各种结果。总体而言,碱基对距离不相似度度量与其他两个距离度量(树编辑距离和热力学能量距离)相比显示出更好的结果。本文的结果表明,SARNA-Ensemble-Predict在灵敏度方面可以提供与最先进的Sfold算法相当的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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