| Literature DB >> 31848261 |
Marthe Solleder1,2, Philippe Guillaume1, Julien Racle1,2, Justine Michaux1,3, Hui-Song Pak1,3, Markus Müller2, George Coukos1,3, Michal Bassani-Sternberg4,3, David Gfeller5,2.
Abstract
The presentation of peptides on class I human leukocyte antigen (HLA-I) molecules plays a central role in immune recognition of infected or malignant cells. In cancer, non-self HLA-I ligands can arise from many different alterations, including non-synonymous mutations, gene fusion, cancer-specific alternative mRNA splicing or aberrant post-translational modifications. Identifying HLA-I ligands remains a challenging task that requires either heavy experimental work for in vivo identification or optimized bioinformatics tools for accurate predictions. To date, no HLA-I ligand predictor includes post-translational modifications. To fill this gap, we curated phosphorylated HLA-I ligands from several immunopeptidomics studies (including six newly measured samples) covering 72 HLA-I alleles and retrieved a total of 2,066 unique phosphorylated peptides. We then expanded our motif deconvolution tool to identify precise binding motifs of phosphorylated HLA-I ligands. Our results reveal a clear enrichment of phosphorylated peptides among HLA-C ligands and demonstrate a prevalent role of both HLA-I motifs and kinase motifs on the presentation of phosphorylated peptides. These data further enabled us to develop and validate the first predictor of interactions between HLA-I molecules and phosphorylated peptides.Entities:
Keywords: HLA peptidomics; HLA-I ligand predictions; Mass spectrometry; computational biology; computational immunology; immunology; peptidomics; phosphorylated HLA-I binding motifs; phosphorylated HLA-I ligands; phosphorylation
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Year: 2019 PMID: 31848261 PMCID: PMC7000122 DOI: 10.1074/mcp.TIR119.001641
Source DB: PubMed Journal: Mol Cell Proteomics ISSN: 1535-9476 Impact factor: 5.911