Integrating Reinforcement Learning and Monte Carlo Tree Search for enhanced neoantigen vaccine design

Brief Bioinform. 2024 Mar 27;25(3):bbae247. doi: 10.1093/bib/bbae247.

Abstract

Recent advances in cancer immunotherapy have highlighted the potential of neoantigen-based vaccines. However, the design of such vaccines is hindered by the possibility of weak binding affinity between the peptides and the patient's specific human leukocyte antigen (HLA) alleles, which may not elicit a robust adaptive immune response. Triggering cross-immunity by utilizing peptide mutations that have enhanced binding affinity to target HLA molecules, while preserving their homology with the original one, can be a promising avenue for neoantigen vaccine design. In this study, we introduced UltraMutate, a novel algorithm that combines Reinforcement Learning and Monte Carlo Tree Search, which identifies peptide mutations that not only exhibit enhanced binding affinities to target HLA molecules but also retains a high degree of homology with the original neoantigen. UltraMutate outperformed existing state-of-the-art methods in identifying affinity-enhancing mutations in an independent test set consisting of 3660 peptide-HLA pairs. UltraMutate further showed its applicability in the design of peptide vaccines for Human Papillomavirus and Human Cytomegalovirus, demonstrating its potential as a promising tool in the advancement of personalized immunotherapy.

Keywords: Monte Carlo Tree Search; Reinforcement Learning; human leukocyte antigen; major histocompatibility complex; neoantigen vaccine design.

MeSH terms

  • Algorithms*
  • Antigens, Neoplasm / genetics
  • Antigens, Neoplasm / immunology
  • Cancer Vaccines* / genetics
  • Cancer Vaccines* / immunology
  • HLA Antigens / genetics
  • HLA Antigens / immunology
  • Humans
  • Monte Carlo Method*
  • Mutation