A distance-based feature-encoding technique for protein sequence classification in bioinformatics

M. Iqbal, I. Faye, A. Said, B. Samir
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引用次数: 7

Abstract

Bioinformatics has been emerging as a new research dimension since the last century by combining computer science and biology techniques for the automatic analysis of biological sequence data. The volume of the biological data gathered under different sequencing projects is increasing exponentially. These sequences contain extremely important information about genes, their structure and function. Computational techniques which involve machine learning and pattern recognition are becoming very useful on Bioinformatics data like DNA and protein. Protein classification into different groups could be used for knowing the structure or the function of unknown protein sequence. The process of classifying protein amino acid sequences into a family /superfamily is a very complex problem. However, from among other major issues in a protein classification, the critical one is an accurate representation of amino acid sequence during the feature extraction. In this work, we have proposed a distance-based feature-encoding method; the proposed technique has been tested with different classifiers, which have shown better results than the previously available techniques for superfamily classification of protein sequences. The maximum average classification accuracy obtained was 91.2%. The dataset used in the experiments was taken from the well known UniProtKB protein database.
生物信息学中基于距离的蛋白质序列分类特征编码技术
生物信息学是将计算机科学与生物学技术相结合,对生物序列数据进行自动分析的新兴研究领域。在不同的测序项目中收集的生物数据量呈指数级增长。这些序列包含了关于基因及其结构和功能的极其重要的信息。包括机器学习和模式识别在内的计算技术在DNA和蛋白质等生物信息学数据上变得非常有用。蛋白质的分类可以用于了解未知蛋白质序列的结构或功能。将蛋白质氨基酸序列划分为一个家族/超家族是一个非常复杂的问题。然而,在蛋白质分类的其他主要问题中,最关键的是在特征提取过程中氨基酸序列的准确表示。在这项工作中,我们提出了一种基于距离的特征编码方法;所提出的技术已经用不同的分类器进行了测试,这些分类器比以前可用的蛋白质序列超家族分类技术显示出更好的结果。获得的最高平均分类准确率为91.2%。实验中使用的数据集取自著名的UniProtKB蛋白质数据库。
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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