Notch Therapeutics, Vancouver, BC, Canada.
School of Biomedical Engineering and Michael Smith Laboratories, University of British Columbia, Vancouver, BC, Canada.
Nat Biotechnol. 2023 Nov;41(11):1606-1617. doi: 10.1038/s41587-023-01687-x. Epub 2023 Feb 27.
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.
嵌合抗原受体 T 细胞(CAR-T)的扩增和持久性在患者之间差异很大,可预测疗效和毒性。然而,临床结果和患者变异性的潜在机制尚未明确。在这项研究中,我们开发了一种 T 细胞反应的数学描述,其中记忆、效应和耗竭 T 细胞状态之间的转变由肿瘤抗原的结合进行协调调控。该模型使用来自不同血液系统恶性肿瘤的 CAR-T 产品的临床数据进行训练,并确定记忆细胞周转率和效应细胞细胞毒性的细胞内在差异是临床反应的主要决定因素。通过机器学习工作流程,我们证明基于输注前转录组,产品内在差异可以准确预测患者结局,并且细胞与患者肿瘤的相互作用会产生额外的药物学差异。我们发现,对于三种适应证中的两种靶向 CD19 的 CAR-T 产品,转录特征比 T 细胞免疫表型更能预测临床反应,这为预测性 CAR-T 产品的开发开辟了一个新的阶段。