Frontiers in Immunology (Apr 2023)

PepSim: T-cell cross-reactivity prediction via comparison of peptide sequence and peptide-HLA structure

  • Sarah Hall-Swan,
  • Jared Slone,
  • Mauricio M. Rigo,
  • Dinler A. Antunes,
  • Gregory Lizée,
  • Lydia E. Kavraki

DOI
https://doi.org/10.3389/fimmu.2023.1108303
Journal volume & issue
Vol. 14

Abstract

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IntroductionPeptide-HLA class I (pHLA) complexes on the surface of tumor cells can be targeted by cytotoxic T-cells to eliminate tumors, and this is one of the bases for T-cell-based immunotherapies. However, there exist cases where therapeutic T-cells directed towards tumor pHLA complexes may also recognize pHLAs from healthy normal cells. The process where the same T-cell clone recognizes more than one pHLA is referred to as T-cell cross-reactivity and this process is driven mainly by features that make pHLAs similar to each other. T-cell cross-reactivity prediction is critical for designing T-cell-based cancer immunotherapies that are both effective and safe.MethodsHere we present PepSim, a novel score to predict T-cell cross-reactivity based on the structural and biochemical similarity of pHLAs.Results and discussionWe show our method can accurately separate cross-reactive from non-crossreactive pHLAs in a diverse set of datasets including cancer, viral, and self-peptides. PepSim can be generalized to work on any dataset of class I peptide-HLAs and is freely available as a web server at pepsim.kavrakilab.org.

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