SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.

Identifying protein surface regions preferentially recognizable by antibodies (antigenic epitopes) is at the heart of new immuno-diagnostic reagent discovery and vaccine design, and computational methods for antigenic epitope prediction provide crucial means to serve this purpose. Many linear B-cell...

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Main Authors: Bo Yao, Lin Zhang, Shide Liang, Chi Zhang
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2012-01-01
Series:PLoS ONE
Online Access:http://europepmc.org/articles/PMC3440317?pdf=render
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spelling doaj-7b646e979a7042dabbb1f77f780be39f2020-11-25T01:22:44ZengPublic Library of Science (PLoS)PLoS ONE1932-62032012-01-0179e4515210.1371/journal.pone.0045152SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.Bo YaoLin ZhangShide LiangChi ZhangIdentifying protein surface regions preferentially recognizable by antibodies (antigenic epitopes) is at the heart of new immuno-diagnostic reagent discovery and vaccine design, and computational methods for antigenic epitope prediction provide crucial means to serve this purpose. Many linear B-cell epitope prediction methods were developed, such as BepiPred, ABCPred, AAP, BCPred, BayesB, BEOracle/BROracle, and BEST, towards this goal. However, effective immunological research demands more robust performance of the prediction method than what the current algorithms could provide. In this work, a new method to predict linear antigenic epitopes is developed; Support Vector Machine has been utilized by combining the Tri-peptide similarity and Propensity scores (SVMTriP). Applied to non-redundant B-cell linear epitopes extracted from IEDB, SVMTriP achieves a sensitivity of 80.1% and a precision of 55.2% with a five-fold cross-validation. The AUC value is 0.702. The combination of similarity and propensity of tri-peptide subsequences can improve the prediction performance for linear B-cell epitopes. Moreover, SVMTriP is capable of recognizing viral peptides from a human protein sequence background. A web server based on our method is constructed for public use. The server and all datasets used in the current study are available at http://sysbio.unl.edu/SVMTriP.http://europepmc.org/articles/PMC3440317?pdf=render
collection DOAJ
language English
format Article
sources DOAJ
author Bo Yao
Lin Zhang
Shide Liang
Chi Zhang
spellingShingle Bo Yao
Lin Zhang
Shide Liang
Chi Zhang
SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
PLoS ONE
author_facet Bo Yao
Lin Zhang
Shide Liang
Chi Zhang
author_sort Bo Yao
title SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
title_short SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
title_full SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
title_fullStr SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
title_full_unstemmed SVMTriP: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
title_sort svmtrip: a method to predict antigenic epitopes using support vector machine to integrate tri-peptide similarity and propensity.
publisher Public Library of Science (PLoS)
series PLoS ONE
issn 1932-6203
publishDate 2012-01-01
description Identifying protein surface regions preferentially recognizable by antibodies (antigenic epitopes) is at the heart of new immuno-diagnostic reagent discovery and vaccine design, and computational methods for antigenic epitope prediction provide crucial means to serve this purpose. Many linear B-cell epitope prediction methods were developed, such as BepiPred, ABCPred, AAP, BCPred, BayesB, BEOracle/BROracle, and BEST, towards this goal. However, effective immunological research demands more robust performance of the prediction method than what the current algorithms could provide. In this work, a new method to predict linear antigenic epitopes is developed; Support Vector Machine has been utilized by combining the Tri-peptide similarity and Propensity scores (SVMTriP). Applied to non-redundant B-cell linear epitopes extracted from IEDB, SVMTriP achieves a sensitivity of 80.1% and a precision of 55.2% with a five-fold cross-validation. The AUC value is 0.702. The combination of similarity and propensity of tri-peptide subsequences can improve the prediction performance for linear B-cell epitopes. Moreover, SVMTriP is capable of recognizing viral peptides from a human protein sequence background. A web server based on our method is constructed for public use. The server and all datasets used in the current study are available at http://sysbio.unl.edu/SVMTriP.
url http://europepmc.org/articles/PMC3440317?pdf=render
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