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Improving the accuracy of predicting secondary structure for aligned RNA sequences

机译:提高预测比对RNA序列二级结构的准确性

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摘要

Considerable attention has been focused on predicting the secondary structure for aligned RNA sequences since it is useful not only for improving the limiting accuracy of conventional secondary structure prediction but also for finding non-coding RNAs in genomic sequences. Although there exist many algorithms of predicting secondary structure for aligned RNA sequences, further improvement of the accuracy is still awaited. In this article, toward improving the accuracy, a theoretical classification of state-of-the-art algorithms of predicting secondary structure for aligned RNA sequences is presented. The classification is based on the viewpoint of maximum expected accuracy (MEA), which has been successfully applied in various problems in bioinformatics. The classification reveals several disadvantages of the current algorithms but we propose an improvement of a previously introduced algorithm (CentroidAlifold). Finally, computational experiments strongly support the theoretical classification and indicate that the improved CentroidAlifold substantially outperforms other algorithms.
机译:由于它不仅可用于提高常规二级结构预测的极限准确性,而且可用于发现基因组序列中的非编码RNA,因此已将相当大的注意力集中在预测对齐的RNA序列的二级结构上。尽管存在许多预测比对的RNA序列的二级结构的算法,但仍需要进一步提高准确性。在本文中,为了提高准确性,提出了预测比对的RNA序列二级结构的最新算法的理论分类。该分类基于最大期望准确性(MEA)的观点,该观点已成功应用于生物信息学中的各种问题。该分类揭示了当前算法的一些缺点,但我们提出了对先前引入的算法(CentroidAlifold)的改进。最后,计算实验强烈支持理论分类,并表明改进的CentroidAlifold大大优于其他算法。

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