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Using Chou's amphiphilic pseudo-amino acid composition and support vector machine for prediction of enzyme subfamily classes

机译:利用周氏两亲性假氨基酸组成和支持向量机预测酶亚家族

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摘要

With the rapid increment of protein sequence data, it is indispensable to develop automated and reliable predictive methods for protein function annotation. One approach for facilitating protein function prediction is to classify proteins into functional families from primary sequence. Being the most important group of all proteins, the accurate prediction for enzyme family classes and subfamily classes is closely related to their biological functions. In this paper, for the prediction of enzyme subfamily classes, the Chou's amphiphilic pseudo-amino acid composition [Chou, K.C., 2005. Using amphiphilic pseudo amino acid composition to predict enzyme subfamily classes. Bioinformatics 21, 10-19] has been adopted to represent the protein samples for training the 'one-versus-rest' support vector machine. As a demonstration, the jackknife test was performed on the dataset that contains 2640 oxidoreductase sequences classified into 16 subfamily classes [Chou, K.C., Elrod, D.W., 2003. Prediction of enzyme family classes. J. Proteome Res. 2, 183-190]. The overall accuracy thus obtained was 80.87%. The significant enhancement in the accuracy indicates that the current method might play a complementary role to the exiting methods. (C) 2007 Elsevier Ltd. All rights reserved.
机译:随着蛋白质序列数据的迅速增加,开发用于蛋白质功能注释的自动化且可靠的预测方法必不可少。促进蛋白质功能预测的一种方法是将蛋白质从一级序列分类为功能家族。作为所有蛋白质中最重要的一组,对酶家族和亚家族的准确预测与其生物学功能密切相关。在本文中,为了预测酶亚家族类别,使用了周氏两亲性伪氨基酸组成[Chou,K.C.,2005。使用两亲伪氨基酸组成来预测酶亚家族类别。生物信息学[21,10-19]已被用来代表蛋白质样品,用于训练“单反”支持向量机。作为演示,对包含2640个氧化还原酶序列的数据集进行了折刀试验,该序列被分为16个亚家族类[Chou,K.C.,Elrod,D.W.,2003.酶家族类的预测。 J.蛋白质组研究。 2,183-190]。如此获得的总精度为80.87%。准确性的显着提高表明,当前方法可能会与现有方法起到补充作用。 (C)2007 Elsevier Ltd.保留所有权利。

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