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A BP-SCFG Based Approach for RNA Secondary Structure Prediction with Consecutive Bases Dependency and Their Relative Positions Information

机译:基于BP-SCFG的连续碱基依赖性RNA二级结构预测方法及其相对位置信息

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摘要

The prediction of RNA secondary structure is a fundamental problem in computational biology. However, in the existing RNA secondary structure prediction approaches, none of them explicitly take the local neighboring bases information into account. That is, when predicting whether a base is paired, only the long range correlation is considered. As a substructure consists of multiple bases, it is affected by consecutive bases dependency and their relative positions in the sequence. In this paper we propose a novel RNA secondary structure prediction approach through a combination of Back Propagation (BP) neural network and statistical calculation with Stochastic Context-Pree Grammar (SCFG) approach, in which the consecutive bases dependency and their relative positions information in the sequence are incorporated into the predicting process. When performing on tRNA dataset and three species of rRNA datasets, compared to the SCFG approach alone, our experimental results show that the prediction accuracy is all improved.
机译:RNA二级结构的预测是计算生物学中的一个基本问题。但是,在现有的RNA二级结构预测方法中,它们都没有明确考虑本地邻近碱基信息。即,当预测碱基是否配对时,仅考虑远距离相关。由于子结构由多个碱基组成,因此会受到连续碱基依赖性及其在序列中的相对位置的影响。在本文中,我们通过结合反向传播(BP)神经网络和统计计算与随机上下文优先语法(SCFG)方法的组合,提出了一种新颖的RNA二级结构预测方法,其中连续碱基的依赖性及其在序列中的相对位置信息序列被纳入预测过程。在tRNA数据集和3种rRNA数据集上执行时,与单独的SCFG方法相比,我们的实验结果表明,预测准确性均得到了提高。

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