Benchmarking the PEPOP methods for mimicking discontinuous epitopes

Abstract Background Computational methods provide approaches to identify epitopes in protein Ags to help characterizing potential biomarkers identified by high-throughput genomic or proteomic experiments. PEPOP version 1.0 was developed as an antigenic or immunogenic peptide prediction tool. We have...

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Main Authors: Vincent Demolombe, Alexandre G. de Brevern, Franck Molina, Géraldine Lavigne, Claude Granier, Violaine Moreau
Format: Article
Language:English
Published: BMC 2019-12-01
Series:BMC Bioinformatics
Subjects:
Online Access:https://doi.org/10.1186/s12859-019-3189-3
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spelling doaj-d122ef562cb14147a2cda04b140f19e02021-01-03T12:21:10ZengBMCBMC Bioinformatics1471-21052019-12-0120111710.1186/s12859-019-3189-3Benchmarking the PEPOP methods for mimicking discontinuous epitopesVincent Demolombe0Alexandre G. de Brevern1Franck Molina2Géraldine Lavigne3Claude Granier4Violaine Moreau5BPMP, CNRS, INRA, Montpellier SupAgro, Univ MontpellierINSERM UMR-S 1134Sys2Diag UMR 9005 CNRS/ALCEDIAGComplex System Modeling and Engineering for Diagnosis, Cap delta/Parc EuromédecineDepartment of Haematology, University HospitalSys2Diag UMR 9005 CNRS/ALCEDIAGComplex System Modeling and Engineering for Diagnosis, Cap delta/Parc EuromédecineCNRS, UMR5048, INSERM, U1054, Université Montpellier, Centre de Biochimie StructuraleAbstract Background Computational methods provide approaches to identify epitopes in protein Ags to help characterizing potential biomarkers identified by high-throughput genomic or proteomic experiments. PEPOP version 1.0 was developed as an antigenic or immunogenic peptide prediction tool. We have now improved this tool by implementing 32 new methods (PEPOP version 2.0) to guide the choice of peptides that mimic discontinuous epitopes and thus potentially able to replace the cognate protein Ag in its interaction with an Ab. In the present work, we describe these new methods and the benchmarking of their performances. Results Benchmarking was carried out by comparing the peptides predicted by the different methods and the corresponding epitopes determined by X-ray crystallography in a dataset of 75 Ag-Ab complexes. The Sensitivity (Se) and Positive Predictive Value (PPV) parameters were used to assess the performance of these methods. The results were compared to that of peptides obtained either by chance or by using the SUPERFICIAL tool, the only available comparable method. Conclusion The PEPOP methods were more efficient than, or as much as chance, and 33 of the 34 PEPOP methods performed better than SUPERFICIAL. Overall, “optimized” methods (tools that use the traveling salesman problem approach to design peptides) can predict peptides that best match true epitopes in most cases.https://doi.org/10.1186/s12859-019-3189-3Discontinuous B-cell epitopePeptide designMolecular mimicryAntigen-antibody interactionProtein-protein interactions (PPI)Protein surface
collection DOAJ
language English
format Article
sources DOAJ
author Vincent Demolombe
Alexandre G. de Brevern
Franck Molina
Géraldine Lavigne
Claude Granier
Violaine Moreau
spellingShingle Vincent Demolombe
Alexandre G. de Brevern
Franck Molina
Géraldine Lavigne
Claude Granier
Violaine Moreau
Benchmarking the PEPOP methods for mimicking discontinuous epitopes
BMC Bioinformatics
Discontinuous B-cell epitope
Peptide design
Molecular mimicry
Antigen-antibody interaction
Protein-protein interactions (PPI)
Protein surface
author_facet Vincent Demolombe
Alexandre G. de Brevern
Franck Molina
Géraldine Lavigne
Claude Granier
Violaine Moreau
author_sort Vincent Demolombe
title Benchmarking the PEPOP methods for mimicking discontinuous epitopes
title_short Benchmarking the PEPOP methods for mimicking discontinuous epitopes
title_full Benchmarking the PEPOP methods for mimicking discontinuous epitopes
title_fullStr Benchmarking the PEPOP methods for mimicking discontinuous epitopes
title_full_unstemmed Benchmarking the PEPOP methods for mimicking discontinuous epitopes
title_sort benchmarking the pepop methods for mimicking discontinuous epitopes
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2019-12-01
description Abstract Background Computational methods provide approaches to identify epitopes in protein Ags to help characterizing potential biomarkers identified by high-throughput genomic or proteomic experiments. PEPOP version 1.0 was developed as an antigenic or immunogenic peptide prediction tool. We have now improved this tool by implementing 32 new methods (PEPOP version 2.0) to guide the choice of peptides that mimic discontinuous epitopes and thus potentially able to replace the cognate protein Ag in its interaction with an Ab. In the present work, we describe these new methods and the benchmarking of their performances. Results Benchmarking was carried out by comparing the peptides predicted by the different methods and the corresponding epitopes determined by X-ray crystallography in a dataset of 75 Ag-Ab complexes. The Sensitivity (Se) and Positive Predictive Value (PPV) parameters were used to assess the performance of these methods. The results were compared to that of peptides obtained either by chance or by using the SUPERFICIAL tool, the only available comparable method. Conclusion The PEPOP methods were more efficient than, or as much as chance, and 33 of the 34 PEPOP methods performed better than SUPERFICIAL. Overall, “optimized” methods (tools that use the traveling salesman problem approach to design peptides) can predict peptides that best match true epitopes in most cases.
topic Discontinuous B-cell epitope
Peptide design
Molecular mimicry
Antigen-antibody interaction
Protein-protein interactions (PPI)
Protein surface
url https://doi.org/10.1186/s12859-019-3189-3
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