Support vector machine based prediction of glutathione S-transferase proteins

Mishra, Nitish Kumar ; Kumar, Manish ; Raghava, G. P. S. (2007) Support vector machine based prediction of glutathione S-transferase proteins Protein and Peptide Letters, 14 (6). pp. 575-580. ISSN 0929-8665

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Abstract

Glutathione S-transferase (GST) proteins play vital role in living organism that includes detoxification of exogenous and endogenous chemicals, survivability during stress condition. This paper describes a method developed for predicting GST proteins. We have used a dataset of 107 GST and 107 non-GST proteins for training and the performance of the method was evaluated with five-fold cross-validation technique. First a SVM based method has been developed using amino acid and dipeptide composition and achieved the maximum accuracy of 91.59% and 95.79% respectively. In addition we developed a SVM based method using tripeptide composition and achieved maximum accuracy 97.66% which is better than accuracy achieved by HMM based searching (96.26%). Based on above study a web-server GSTPred has been developed (http://www.imtech.res.in/raghava/gstpred/).

Item Type:Article
Source:Copyright of this article belongs to Bentham Science Publishers.
Keywords:GST Protein; Support Vector Machine; Artificial Intelligence; Sensitivity; Specificity; Correlation
ID Code:43073
Deposited On:09 Jun 2011 11:51
Last Modified:18 May 2016 00:10

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