Automated benchmarking of peptide-MHC class I binding predictions
Open Access
- 25 February 2015
- journal article
- research article
- Published by Oxford University Press (OUP) in Bioinformatics
- Vol. 31 (13) , 2174-2181
- https://doi.org/10.1093/bioinformatics/btv123
Abstract
Motivation: Numerous in silico methods predicting peptide binding to major histocompatibility complex (MHC) class I molecules have been developed over the last decades. However, the multitude of available prediction tools makes it non-trivial for the end-user to select which tool to use for a given task. To provide a solid basis on which to compare different prediction tools, we here describe a framework for the automated benchmarking of peptide-MHC class I binding prediction tools. The framework runs weekly benchmarks on data that are newly entered into the Immune Epitope Database (IEDB), giving the public access to frequent, up-to-date performance evaluations of all participating tools. To overcome potential selection bias in the data included in the IEDB, a strategy was implemented that suggests a set of peptides for which different prediction methods give divergent predictions as to their binding capability. Upon experimental binding validation, these peptides entered the benchmark study. Results: The benchmark has run for 15 weeks and includes evaluation of 44 datasets covering 17 MHC alleles and more than 4000 peptide-MHC binding measurements. Inspection of the results allows the end-user to make educated selections between participating tools. Of the four participating servers, NetMHCpan performed the best, followed by ANN, SMM and finally ARB. Availability and implementation: Up-to-date performance evaluations of each server can be found online at http://tools.iedb.org/auto_bench/mhci/weekly. All prediction tool developers are invited to participate in the benchmark. Sign-up instructions are available at http://tools.iedb.org/auto_bench/mhci/join. Contact: mniel@cbs.dtu.dk or bpeters@liai.org Supplementary information: Supplementary data are available at Bioinformatics online.Keywords
This publication has 35 references indexed in Scilit:
- The PickPocket method for predicting binding specificities for receptors based on receptor pocket similarities: application to MHC-peptide bindingBioinformatics, 2009
- Evaluation of template‐based models in CASP8 with standard measuresProteins-Structure Function and Bioinformatics, 2009
- Evaluation of MHC-II peptide binding prediction servers: applications for vaccine researchBMC Bioinformatics, 2008
- NetMHCpan, a method for MHC class I binding prediction beyond humansImmunogenetics, 2008
- Pan-specific MHC class I predictors: a benchmark of HLA class I pan-specific prediction methodsBioinformatics, 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
- Evaluation of MHC class I peptide binding prediction servers: Applications for vaccine researchBMC Immunology, 2008
- SVRMHC prediction server for MHC-binding peptidesBMC Bioinformatics, 2006
- Selective identification of HLA-DP4 binding T cell epitopes encoded by the MAGE-A gene familyCancer Immunology, Immunotherapy, 2006
- Measurement of MHC/Peptide Interactions by Gel FiltrationCurrent Protocols in Immunology, 1999