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Volume 36 Issue 5
May  2009
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Article Contents

BiodMHC: an online server for the prediction of MHC class II-peptide binding affinity

doi: 10.1016/S1673-8527(08)60117-4
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  • Corresponding author: E-mail address: liujuan@whu.edu.cn (Juan Liu); E-mail address: zhusf@fudan.edu.cn (Shanfeng Zhu)
  • Received Date: 2008-12-01
  • Accepted Date: 2009-01-21
  • Rev Recd Date: 2009-01-08
  • Available Online: 2009-05-15
  • Publish Date: 2009-05-20
  • Effective identification of major histocompatibility complex (MHC) molecules restricted peptides is a critical step in discovering immune epitopes. Although many online servers have been built to predict class II MHC-peptide binding affinity, they have been trained on different datasets, and thus fail in providing a unified comparison of various methods. In this paper, we present our implementation of seven popular predictive methods, namely SMM-align, ARB, SVR-pairwise, Gibbs sampler, ProPred, LP-top2, and MHCPred, on a single web server named BiodMHC (http://biod.whu.edu.cn/BiodMHC/index.html, the software is available upon request). Using a standard measure of AUC (Area Under the receiver operating characteristic Curves), we compare these methods by means of not only cross validation but also prediction on independent test datasets. We find that SMM-align, ProPred, SVR-pairwise, ARB, and Gibbs sampler are the five best-performing methods. For the binding affinity prediction of class II MHC-peptide, BiodMHC provides a convenient online platform for researchers to obtain binding information simultaneously using various methods.
  • These authors contributed equally to this work.
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