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Design of Cytotoxic T Cell Epitopes by Machine Learning of Human Degrons.

Nicholas L TruexSomesh MohapatraMariane MeloJacob RodriguezNa LiWuhbet AbrahamDeborah SementaFaycal ToutiDerin B KeskinCatherine J WuDarrell J IrvineRafael Gomez-BombarelliBradley L Pentelute
Published in: ACS central science (2024)
Antigen processing is critical for therapeutic vaccines to generate epitopes for priming cytotoxic T cell responses against cancer and pathogens, but insufficient processing often limits the quantity of epitopes released. We address this challenge using machine learning to ascribe a proteasomal degradation score to epitope sequences. Epitopes with varying scores were translocated into cells using nontoxic anthrax proteins. Epitopes with a low score show pronounced immunogenicity due to antigen processing, but epitopes with a high score show limited immunogenicity. This work sheds light on the sequence-activity relationships between proteasomal degradation and epitope immunogenicity. We anticipate that future efforts to incorporate proteasomal degradation signals into vaccine designs will lead to enhanced cytotoxic T cell priming by these vaccines in clinical settings.
Keyphrases
  • machine learning
  • oxidative stress
  • cell cycle arrest
  • monoclonal antibody
  • cell death
  • current status
  • quality improvement
  • multidrug resistant
  • gram negative
  • squamous cell
  • pluripotent stem cells