Literature DB >> 12148778

Support vector machines for the classification and prediction of beta-turn types.

Yu-Dong Cai1, Xiao-Jun Liu, Xue-Biao Xu, Kuo-Chen Chou.   

Abstract

The support vector machines (SVMs) method is proposed because it can reflect the sequence-coupling effect for a tetrapeptide in not only a beta-turn or non-beta-turn, but also in different types of beta-turn. The results of the model for 6022 tetrapeptides indicate that the rates of self-consistency for beta-turn types I, I', II, II', VI and VIII and non-beta-turns are 99.92%, 96.8%, 98.02%, 97.75%, 100%, 97.19% and 100%, respectively. Using these training data, the rate of correct prediction by the SVMs for a given protein: rubredoxin (54 residues. 51 tetrapeptides) which includes 12 beta-turn type I tetrapeptides, 1 beta-turn type II tetrapeptide and 38 non-beta-turns reached 82.4%. The high quality of prediction of the SVMs implies that the formation of different beta-turn types or non-beta-turns is considerably correlated with the sequence of a tetrapeptide. The SVMs can save CPU time and avoid the overfitting problem compared with the neural network method.

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Year:  2002        PMID: 12148778     DOI: 10.1002/psc.401

Source DB:  PubMed          Journal:  J Pept Sci        ISSN: 1075-2617            Impact factor:   1.905


  8 in total

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2.  Prediction of beta-turn in protein using E-SSpred and support vector machine.

Authors:  Lirong Liu; Yaping Fang; Menglong Li; Cuicui Wang
Journal:  Protein J       Date:  2009-05       Impact factor: 2.371

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4.  Fusing dual-event data sets for Mycobacterium tuberculosis machine learning models and their evaluation.

Authors:  Sean Ekins; Joel S Freundlich; Robert C Reynolds
Journal:  J Chem Inf Model       Date:  2013-10-30       Impact factor: 4.956

5.  Improving the performance of β-turn prediction using predicted shape strings and a two-layer support vector machine model.

Authors:  Zehui Tang; Tonghua Li; Rida Liu; Wenwei Xiong; Jiangming Sun; Yaojuan Zhu; Guanyan Chen
Journal:  BMC Bioinformatics       Date:  2011-07-13       Impact factor: 3.169

6.  Identification of amino acid propensities that are strong determinants of linear B-cell epitope using neural networks.

Authors:  Chun-Hung Su; Nikhil R Pal; Ken-Li Lin; I-Fang Chung
Journal:  PLoS One       Date:  2012-02-08       Impact factor: 3.240

7.  Prediction of beta-turns at over 80% accuracy based on an ensemble of predicted secondary structures and multiple alignments.

Authors:  Ce Zheng; Lukasz Kurgan
Journal:  BMC Bioinformatics       Date:  2008-10-10       Impact factor: 3.169

8.  The role of balanced training and testing data sets for binary classifiers in bioinformatics.

Authors:  Qiong Wei; Roland L Dunbrack
Journal:  PLoS One       Date:  2013-07-09       Impact factor: 3.240

  8 in total

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