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  4. Machine learning predictions of MHC-II specificities reveal alternative binding mode of class II epitopes
 
research article

Machine learning predictions of MHC-II specificities reveal alternative binding mode of class II epitopes

Racle, Julien  
•
Guillaume, Philippe  
•
Schmidt, Julien
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June 13, 2023
Immunity

CD4+T cells orchestrate the adaptive immune response against pathogens and cancer by recognizing epitopes presented on class II major histocompatibility complex (MHC-II) molecules. The high polymorphism of MHC-II genes represents an important hurdle toward accurate prediction and identification of CD4+ T cell epitopes. Here we collected and curated a dataset of 627,013 unique MHC-II ligands identified by mass spectrometry. This enabled us to precisely determine the binding motifs of 88 MHC-II alleles across humans, mice, cattle, and chickens. Analysis of these binding specificities combined with X-ray crystallography refined our under-standing of the molecular determinants of MHC-II motifs and revealed a widespread reverse-binding mode in HLA-DP ligands. We then developed a machine-learning framework to accurately predict binding specific-ities and ligands of any MHC-II allele. This tool improves and expands predictions of CD4+ T cell epitopes and enables us to discover viral and bacterial epitopes following the aforementioned reverse-binding mode.

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Type
research article
DOI
10.1016/j.immuni.2023.03.009
Web of Science ID

WOS:001023525300001

Author(s)
Racle, Julien  
Guillaume, Philippe  
Schmidt, Julien
Michaux, Justine
Larabi, Amede  
Lau, Kelvin  
Perez, Marta A. S.
Croce, Giancarlo
Genolet, Raphael
Coukos, George
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Date Issued

2023-06-13

Publisher

CELL PRESS

Published in
Immunity
Volume

56

Issue

6

Start page

1359

End page
Subjects

Immunology

•

Immunology

•

antigen presentation

•

hla-dr

•

peptide binding

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protein

•

cell

•

motifs

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immunopeptidome

•

identification

•

recognition

•

proteomics

Editorial or Peer reviewed

REVIEWED

Written at

EPFL

EPFL units
PTPSP  
Available on Infoscience
July 31, 2023
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/199547
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