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Prediction of tumor-reactive T cell receptors from scRNA-seq data for personalized T cell therapy.

Chin Leng TanKatharina A M LindnerT BoschertZibo MengA Rodriguez EhrenfriedA De RoiaG HaltenhofA FaenzaFrancesco ImperatoreLukas BunseJohn M LindnerR P HarbottleMiriam RatliffR OffringaIsabel C PoschkeMichael PlattenEdward W Green
Published in: Nature biotechnology (2024)
The identification of patient-derived, tumor-reactive T cell receptors (TCRs) as a basis for personalized transgenic T cell therapies remains a time- and cost-intensive endeavor. Current approaches to identify tumor-reactive TCRs analyze tumor mutations to predict T cell activating (neo)antigens and use these to either enrich tumor infiltrating lymphocyte (TIL) cultures or validate individual TCRs for transgenic autologous therapies. Here we combined high-throughput TCR cloning and reactivity validation to train predicTCR, a machine learning classifier that identifies individual tumor-reactive TILs in an antigen-agnostic manner based on single-TIL RNA sequencing. PredicTCR identifies tumor-reactive TCRs in TILs from diverse cancers better than previous gene set enrichment-based approaches, increasing specificity and sensitivity (geometric mean) from 0.38 to 0.74. By predicting tumor-reactive TCRs in a matter of days, TCR clonotypes can be prioritized to accelerate the manufacture of personalized T cell therapies.
Keyphrases
  • cell therapy
  • machine learning
  • high throughput
  • single cell
  • mesenchymal stem cells
  • gene expression
  • bone marrow
  • electronic health record
  • dna methylation
  • mass spectrometry
  • young adults
  • genome wide analysis