Improved methods for predicting peptide binding affinity to <scp>MHC</scp> class <scp>II</scp> molecules

Kamilla Kjærgaard Jensen(Technical University of Denmark), Massimo Andreatta(National University of General San Martín), Paolo Marcatili(Technical University of Denmark), Søren Buus(University of Copenhagen), Jason Greenbaum(La Jolla Institute for Immunology), Yan Zhen(La Jolla Institute for Immunology), Alessandro Sette(La Jolla Institute for Immunology), Bjoern Peters(La Jolla Institute for Immunology), Morten Nielsen(National University of General San Martín)
Immunology
January 10, 2018
Cited by 816Open Access
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Abstract

Major histocompatibility complex class II (MHC-II) molecules are expressed on the surface of professional antigen-presenting cells where they display peptides to T helper cells, which orchestrate the onset and outcome of many host immune responses. Understanding which peptides will be presented by the MHC-II molecule is therefore important for understanding the activation of T helper cells and can be used to identify T-cell epitopes. We here present updated versions of two MHC-II-peptide binding affinity prediction methods, NetMHCII and NetMHCIIpan. These were constructed using an extended data set of quantitative MHC-peptide binding affinity data obtained from the Immune Epitope Database covering HLA-DR, HLA-DQ, HLA-DP and H-2 mouse molecules. We show that training with this extended data set improved the performance for peptide binding predictions for both methods. Both methods are publicly available at www.cbs.dtu.dk/services/NetMHCII-2.3 and www.cbs.dtu.dk/services/NetMHCIIpan-3.2.


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