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NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions

The set of peptides presented on a cell's surface by MHC molecules is known as the immunopeptidome. Current mass spectrometry technologies allow for identification of large peptidomes, and studies have proven these data to be a rich source of information for learning the rules of MHC-mediated a...

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Autores principales: Alvarez, Bruno, Reynisson, Birkir, Barra, Carolina, Buus, Søren, Ternette, Nicola, Connelley, Tim, Andreatta, Massimo, Nielsen, Morten
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The American Society for Biochemistry and Molecular Biology 2019
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6885703/
https://www.ncbi.nlm.nih.gov/pubmed/31578220
http://dx.doi.org/10.1074/mcp.TIR119.001658
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author Alvarez, Bruno
Reynisson, Birkir
Barra, Carolina
Buus, Søren
Ternette, Nicola
Connelley, Tim
Andreatta, Massimo
Nielsen, Morten
author_facet Alvarez, Bruno
Reynisson, Birkir
Barra, Carolina
Buus, Søren
Ternette, Nicola
Connelley, Tim
Andreatta, Massimo
Nielsen, Morten
author_sort Alvarez, Bruno
collection PubMed
description The set of peptides presented on a cell's surface by MHC molecules is known as the immunopeptidome. Current mass spectrometry technologies allow for identification of large peptidomes, and studies have proven these data to be a rich source of information for learning the rules of MHC-mediated antigen presentation. Immunopeptidomes are usually poly-specific, containing multiple sequence motifs matching the MHC molecules expressed in the system under investigation. Motif deconvolution -the process of associating each ligand to its presenting MHC molecule(s)- is therefore a critical and challenging step in the analysis of MS-eluted MHC ligand data. Here, we describe NNAlign_MA, a computational method designed to address this challenge and fully benefit from large, poly-specific data sets of MS-eluted ligands. NNAlign_MA simultaneously performs the tasks of (1) clustering peptides into individual specificities; (2) automatic annotation of each cluster to an MHC molecule; and (3) training of a prediction model covering all MHCs present in the training set. NNAlign_MA was benchmarked on large and diverse data sets, covering class I and class II data. In all cases, the method was demonstrated to outperform state-of-the-art methods, effectively expanding the coverage of alleles for which accurate predictions can be made, resulting in improved identification of both eluted ligands and T-cell epitopes. Given its high flexibility and ease of use, we expect NNAlign_MA to serve as an effective tool to increase our understanding of the rules of MHC antigen presentation and guide the development of novel T-cell-based therapeutics.
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spelling pubmed-68857032019-12-03 NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions Alvarez, Bruno Reynisson, Birkir Barra, Carolina Buus, Søren Ternette, Nicola Connelley, Tim Andreatta, Massimo Nielsen, Morten Mol Cell Proteomics Technological Innovation and Resources The set of peptides presented on a cell's surface by MHC molecules is known as the immunopeptidome. Current mass spectrometry technologies allow for identification of large peptidomes, and studies have proven these data to be a rich source of information for learning the rules of MHC-mediated antigen presentation. Immunopeptidomes are usually poly-specific, containing multiple sequence motifs matching the MHC molecules expressed in the system under investigation. Motif deconvolution -the process of associating each ligand to its presenting MHC molecule(s)- is therefore a critical and challenging step in the analysis of MS-eluted MHC ligand data. Here, we describe NNAlign_MA, a computational method designed to address this challenge and fully benefit from large, poly-specific data sets of MS-eluted ligands. NNAlign_MA simultaneously performs the tasks of (1) clustering peptides into individual specificities; (2) automatic annotation of each cluster to an MHC molecule; and (3) training of a prediction model covering all MHCs present in the training set. NNAlign_MA was benchmarked on large and diverse data sets, covering class I and class II data. In all cases, the method was demonstrated to outperform state-of-the-art methods, effectively expanding the coverage of alleles for which accurate predictions can be made, resulting in improved identification of both eluted ligands and T-cell epitopes. Given its high flexibility and ease of use, we expect NNAlign_MA to serve as an effective tool to increase our understanding of the rules of MHC antigen presentation and guide the development of novel T-cell-based therapeutics. The American Society for Biochemistry and Molecular Biology 2019-12 2019-10-02 /pmc/articles/PMC6885703/ /pubmed/31578220 http://dx.doi.org/10.1074/mcp.TIR119.001658 Text en © 2019 Alvarez et al. Published by The American Society for Biochemistry and Molecular Biology, Inc. https://creativecommons.org/licenses/by/4.0/Author's Choice—Final version open access under the terms of the Creative Commons CC-BY license (https://creativecommons.org/licenses/by/4.0/) .
spellingShingle Technological Innovation and Resources
Alvarez, Bruno
Reynisson, Birkir
Barra, Carolina
Buus, Søren
Ternette, Nicola
Connelley, Tim
Andreatta, Massimo
Nielsen, Morten
NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title_full NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title_fullStr NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title_full_unstemmed NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title_short NNAlign_MA; MHC Peptidome Deconvolution for Accurate MHC Binding Motif Characterization and Improved T-cell Epitope Predictions
title_sort nnalign_ma; mhc peptidome deconvolution for accurate mhc binding motif characterization and improved t-cell epitope predictions
topic Technological Innovation and Resources
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6885703/
https://www.ncbi.nlm.nih.gov/pubmed/31578220
http://dx.doi.org/10.1074/mcp.TIR119.001658
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