SVRMHC prediction server for MHC-binding peptides
Open Access
- 23 October 2006
- journal article
- research article
- Published by Springer Nature in BMC Bioinformatics
- Vol. 7 (1) , 463
- https://doi.org/10.1186/1471-2105-7-463
Abstract
Background: The binding between antigenic peptides (epitopes) and the MHC molecule is a key step in the cellular immune response. Accuratein silicoprediction of epitope-MHC binding affinity can greatly expedite epitope screening by reducing costs and experimental effort.Results: Recently, we demonstrated the appealing performance of SVRMHC, an SVR-based quantitative modeling method for peptide-MHC interactions, when applied to three mouse class I MHC molecules. Subsequently, we have greatly extended the construction of SVRMHC models and have established such models for more than 40 class I and class II MHC molecules. Here we present the SVRMHC web server for predicting peptide-MHC binding affinities using these models. Benchmarked percentile scores are provided for all predictions. The larger number of SVRMHC models available allowed for an updated evaluation of the performance of the SVRMHC method compared to other well- known linear modeling methods.Conclusion: SVRMHC is an accurate and easy-to-use prediction server for epitope-MHC binding with significant coverage of MHC molecules. We believe it will prove to be a valuable resource for T cell epitope researchers.Keywords
This publication has 22 references indexed in Scilit:
- DynaPred: A structure and sequence based method for the prediction of MHC class I binding peptide sequences and conformationsBioinformatics, 2006
- Learning MHC I—peptide bindingBioinformatics, 2006
- Prediction of HLA-DQ3.2β Ligands: evidence of multiple registers in class II binding peptidesBioinformatics, 2006
- Structural prediction of peptides binding to MHC class I moleculesProteins-Structure Function and Bioinformatics, 2006
- MULTIPRED: a computational system for prediction of promiscuous HLA binding peptidesNucleic Acids Research, 2005
- Predictive Bayesian neural network models of MHC class II peptide bindingJournal of Molecular Graphics and Modelling, 2005
- SVM based method for predicting HLA-DRB1*0401 binding peptides in an antigen sequenceBioinformatics, 2004
- Physicochemical explanation of peptide binding to HLA‐A*0201 major histocompatibility complex: A three‐dimensional quantitative structure‐activity relationship studyProteins-Structure Function and Bioinformatics, 2002
- Fuzzy neural network-based prediction of the motif for MHC class II binding peptidesJournal of Bioscience and Bioengineering, 2001
- Flexible docking of peptides to class I major-histocompatibility-complex receptorsGenetic Analysis: Biomolecular Engineering, 1995