Literature DB >> 12895651

Prediction of beta-turns with learning machines.

Yu-Dong Cai1, Xiao-Jun Liu, Yi-Xue Li, Xue-biao Xu, Kuo-Chen Chou.   

Abstract

The support vector machine approach was introduced to predict the beta-turns in proteins. The overall self-consistency rate by the re-substitution test for the training or learning dataset reached 100%. Both the training dataset and independent testing dataset were taken from Chou [J. Pept. Res. 49 (1997) 120]. The success prediction rates by the jackknife test for the beta-turn subset of 455 tetrapeptides and non-beta-turn subset of 3807 tetrapeptides in the training dataset were 58.1 and 98.4%, respectively. The success rates with the independent dataset test for the beta-turn subset of 110 tetrapeptides and non-beta-turn subset of 30,231 tetrapeptides were 69.1 and 97.3%, respectively. The results obtained from this study support the conclusion that the residue-coupled effect along a tetrapeptide is important for the formation of a beta-turn.

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Year:  2003        PMID: 12895651     DOI: 10.1016/s0196-9781(03)00133-5

Source DB:  PubMed          Journal:  Peptides        ISSN: 0196-9781            Impact factor:   3.750


  6 in total

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2.  Prediction of the beta-hairpins in proteins using support vector machine.

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4.  Application of machine learning in SNP discovery.

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Journal:  BMC Bioinformatics       Date:  2006-01-06       Impact factor: 3.169

5.  A novel hybrid method of beta-turn identification in protein using binary logistic regression and neural network.

Authors:  Mehdi Poursheikhali Asghari; Sayyed Hamed Sadat Hayatshahi; Parviz Abdolmaleki
Journal:  EXCLI J       Date:  2012-07-05       Impact factor: 4.068

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  6 in total

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