MetaMHC: a meta approach to predict peptides binding to MHC molecules
Open Access
- 18 May 2010
- journal article
- research article
- Published by Oxford University Press (OUP) in Nucleic Acids Research
- Vol. 38 (suppl_2) , W474-W479
- https://doi.org/10.1093/nar/gkq407
Abstract
As antigenic peptides binding to major histocompatibility complex (MHC) molecules is the prerequisite of cellular immune responses, an accurate computational predictor will be of great benefit to biologists and immunologists for understanding the underlying mechanism of immune recognition as well as facilitating the process of epitope mapping and vaccine design. Although various computational approaches have been developed, recent experimental results on benchmark data sets show that the development of improved predictors is needed, especially for MHC Class II peptide binding. To make the most of current methods and achieve a higher predictive performance, we developed a new web server, MetaMHC, to integrate the outputs of leading predictors by several popular ensemble strategies. MetaMHC consists of two components: MetaMHCI and MetaMHCII for MHC Class I peptide and MHC Class II peptide binding predictions, respectively. Experimental results by both cross-validation and using an independent data set show that the ensemble approaches outperform individual predictors, being statistically significant. MetaMHC is freely available at http://www.biokdd.fudan.edu.cn/Service/MetaMHC.html.Keywords
This publication has 30 references indexed in Scilit:
- NN-align. An artificial neural network-based alignment algorithm for MHC class II peptide binding predictionBMC Bioinformatics, 2009
- Evaluation of MHC-II peptide binding prediction servers: applications for vaccine researchBMC Bioinformatics, 2008
- Immune epitope database analysis resource (IEDB-AR)Nucleic Acids Research, 2008
- NetMHC-3.0: accurate web accessible predictions of human, mouse and monkey MHC class I affinities for peptides of length 8–11Nucleic Acids Research, 2008
- A Systematic Assessment of MHC Class II Peptide Binding Predictions and Evaluation of a Consensus ApproachPLoS Computational Biology, 2008
- Evaluation of MHC class I peptide binding prediction servers: Applications for vaccine researchBMC Immunology, 2008
- Prediction of MHC class II binding affinity using SMM-align, a novel stabilization matrix alignment methodBMC Bioinformatics, 2007
- SVMHC: a server for prediction of MHC-binding peptidesNucleic Acids Research, 2006
- FootPrinter3: phylogenetic footprinting in partially alignable sequencesNucleic Acids Research, 2006
- Reliable prediction of T‐cell epitopes using neural networks with novel sequence representationsProtein Science, 2003