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Article
Predicting linear B-cell epitopes using string kernels
Journal of Molecular Recognition
  • Yasser EL-Manzalawy, Iowa State University
  • Drena Dobbs, Iowa State University
  • Vasant Honavar, Iowa State University
Document Type
Article
Publication Version
Accepted Manuscript
Publication Date
1-1-2008
DOI
10.1002/jmr.893
Abstract

The identification and characterization of B-cell epitopes play an important role in vaccine design, immunodiagnostic tests, and antibody production. Therefore, computational tools for reliably predicting linear B-cell epitopes are highly desirable. We evaluated Support Vector Machine (SVM) classifiers trained utilizing five different kernel methods using fivefold cross-validation on a homology-reduced data set of 701 linear B-cell epitopes, extracted from Bcipep database, and 701 non-epitopes, randomly extracted from SwissProt sequences. Based on the results of our computational experiments, we propose BCPred, a novel method for predicting linear B-cell epitopes using the subsequence kernel. We show that the predictive performance of BCPred (AUC = 0.758) outperforms 11 SVM-based classifiers developed and evaluated in our experiments as well as our implementation of AAP (AUC = 0.7), a recently proposed method for predicting linear B-cell epitopes using amino acid pair antigenicity. Furthermore, we compared BCPred with AAP and ABCPred, a method that uses recurrent neural networks, using two data sets of unique B-cell epitopes that had been previously used to evaluate ABCPred. Analysis of the data sets used and the results of this comparison show that conclusions about the relative performance of different B-cell epitope prediction methods drawn on the basis of experiments using data sets of unique B-cell epitopes are likely to yield overly optimistic estimates of performance of evaluated methods. This argues for the use of carefully homology-reduced data sets in comparing B-cell epitope prediction methods to avoid misleading conclusions about how different methods compare to each other. Our homologyreduced data set and implementations of BCPred as well as the APP method are publicly available through our web-based server, BCPREDS, at: http://ailab.cs.iastate.edu/bcpreds/.

Comments

This is the peer reviewed version of the following article: EL-Manzalawy, Y., Dobbs, D. and Honavar, V. (2008), Predicting linear B-cell epitopes using string kernels. J. Mol. Recognit., 21: 243–255 , which has been published in final form at doi: 10.1002/jmr.893. This article may be used for non-commercial purposes in accordance with Wiley Terms and Conditions for Self-Archiving.

Copyright Owner
John Wiley & Sons, Ltd.
Language
en
File Format
application/pdf
Citation Information
Yasser EL-Manzalawy, Drena Dobbs and Vasant Honavar. "Predicting linear B-cell epitopes using string kernels" Journal of Molecular Recognition Vol. 21 Iss. 4 (2008) p. 243 - 255
Available at: http://works.bepress.com/drena-dobbs/46/