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Connecting MHC-I-binding motifs with HLA alleles via deep learning

Ko-Han Lee, Yu‐Chuan Chang, Ting-Fu Chen, Hsueh‐Fen Juan, Huai‐Kuang Tsai, Chien‐Yu Chen

2021Communications Biology16 citationsDOIOpen Access PDF

Abstract

The selection of peptides presented by MHC molecules is crucial for antigen discovery. Previously, several predictors have shown impressive performance on binding affinity. However, the decisive MHC residues and their relation to the selection of binding peptides are still unrevealed. Here, we connected HLA alleles with binding motifs via our deep learning-based framework, MHCfovea. MHCfovea expanded the knowledge of MHC-I-binding motifs from 150 to 13,008 alleles. After clustering N-terminal and C-terminal sub-motifs on both observed and unobserved alleles, MHCfovea calculated the hyper-motifs and the corresponding allele signatures on the important positions to disclose the relation between binding motifs and MHC-I sequences. MHCfovea delivered 32 pairs of hyper-motifs and allele signatures (HLA-A: 13, HLA-B: 12, and HLA-C: 7). The paired hyper-motifs and allele signatures disclosed the critical polymorphic residues that determine the binding preference, which are believed to be valuable for antigen discovery and vaccine design when allele specificity is concerned.

Topics & Concepts

AlleleMajor histocompatibility complexHuman leukocyte antigenGeneticsBiologyComputational biologySequence motifAntigenGenevaccines and immunoinformatics approachesImmunotherapy and Immune ResponsesMonoclonal and Polyclonal Antibodies Research