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Protein fold recognition using HMM-HMM alignment and dynamic programming

机译:使用HMM-HMM比对和动态编程进行蛋白质折叠识别

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摘要

Detecting three dimensional structures of protein sequences is a challenging task in biological sciences. For this purpose, protein fold recognition has been utilized as an intermediate step which helps in classifying a novel protein sequence into one of its folds. The process of protein fold recognition encompasses feature extraction of protein sequences and feature identification through suitable classifiers. Several feature extractors are developed to retrieve useful information from protein sequences. These features are generally extracted by constituting protein's sequential, physicochemical and evolutionary properties. The performance in terms of recognition accuracy has also been gradually improved over the last decade. However, it is yet to reach a well reasonable and accepted level. In this work, we first applied HMM-HMM alignment of protein sequence from HHblits to extract profile HMM (PHMM) matrix. Then we computed the distance between respective PHMM matrices using kernalized dynamic programming. We have recorded significant improvement in fold recognition over the state-of-the-art feature extractors. The improvement of recognition accuracy is in the range of 2.7-11.6% when experimented on three benchmark datasets from Structural Classification of Proteins. (c) 2016 Elsevier Ltd. All rights reserved.
机译:在蛋白质科学中,检测蛋白质序列的三维结构是一项艰巨的任务。为此目的,蛋白质折叠识别已被用作中间步骤,该步骤有助于将新的蛋白质序列分类为其折叠之一。蛋白质折叠识别的过程包括蛋白质序列的特征提取和通过合适的分类器进行特征鉴定。开发了几种特征提取器,以从蛋白质序列中检索有用的信息。这些特征通常是通过构成蛋白质的顺序,理化和进化特性来提取的。在过去十年中,在识别准确性方面的性能也得到了逐步提高。但是,它还没有达到一个合理的可接受水平。在这项工作中,我们首先将HHblits中蛋白质序列的HMM-HMM比对应用于提取轮廓HMM(PHMM)矩阵。然后,我们使用内核化动态规划计算了各个PHMM矩阵之间的距离。与最先进的特征提取器相比,我们已经在褶皱识别方面取得了显着改善。当对来自蛋白质结构分类的三个基准数据集进行实验时,识别准确度的提高幅度为2.7-11.6%。 (c)2016 Elsevier Ltd.保留所有权利。

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