Login / Signup

Deconvolution of clinical variance in CAR-T cell pharmacology and response.

Daniel C KirouacCole ZmurchokAvisek DeyatiJordan T SichermanChris BondPeter W Zandstra
Published in: Nature biotechnology (2023)
Chimeric antigen receptor T cell (CAR-T) expansion and persistence vary widely among patients and predict both efficacy and toxicity. However, the mechanisms underlying clinical outcomes and patient variability are poorly defined. In this study, we developed a mathematical description of T cell responses wherein transitions among memory, effector and exhausted T cell states are coordinately regulated by tumor antigen engagement. The model is trained using clinical data from CAR-T products in different hematological malignancies and identifies cell-intrinsic differences in the turnover rate of memory cells and cytotoxic potency of effectors as the primary determinants of clinical response. Using a machine learning workflow, we demonstrate that product-intrinsic differences can accurately predict patient outcomes based on pre-infusion transcriptomes, and additional pharmacological variance arises from cellular interactions with patient tumors. We found that transcriptional signatures outperform T cell immunophenotyping as predictive of clinical response for two CD19-targeted CAR-T products in three indications, enabling a new phase of predictive CAR-T product development.
Keyphrases
  • machine learning
  • single cell
  • gene expression
  • genome wide
  • oxidative stress
  • big data
  • signaling pathway
  • cell death
  • cell proliferation
  • bone marrow
  • resistance training
  • type iii