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嵌合抗原受体 T 细胞免疫疗法的计算模型可解析并预测缓解、耐药和复发时白血病患者的反应。

Computational model of CAR T-cell immunotherapy dissects and predicts leukemia patient responses at remission, resistance, and relapse.

机构信息

Department of Mechanical and Aerospace Engineering, New York University, Brooklyn, New York, USA.

Department of Biomedical Engineering, New York University, Brooklyn, New York, USA.

出版信息

J Immunother Cancer. 2022 Dec;10(12). doi: 10.1136/jitc-2022-005360.

Abstract

BACKGROUND

Adaptive CD19-targeted chimeric antigen receptor (CAR) T-cell transfer has become a promising treatment for leukemia. Although patient responses vary across different clinical trials, reliable methods to dissect and predict patient responses to novel therapies are currently lacking. Recently, the depiction of patient responses has been achieved using in silico computational models, with prediction application being limited.

METHODS

We established a computational model of CAR T-cell therapy to recapitulate key cellular mechanisms and dynamics during treatment with responses of continuous remission (CR), non-response (NR), and CD19-positive (CD19) and CD19-negative (CD19) relapse. Real-time CAR T-cell and tumor burden data of 209 patients were collected from clinical studies and standardized with unified units in bone marrow. Parameter estimation was conducted using the stochastic approximation expectation maximization algorithm for nonlinear mixed-effect modeling.

RESULTS

We revealed critical determinants related to patient responses at remission, resistance, and relapse. For CR, NR, and CD19 relapse, the overall functionality of CAR T-cell led to various outcomes, whereas loss of the CD19 antigen and the bystander killing effect of CAR T-cells may partly explain the progression of CD19 relapse. Furthermore, we predicted patient responses by combining the peak and accumulated values of CAR T-cells or by inputting early-stage CAR T-cell dynamics. A clinical trial simulation using virtual patient cohorts generated based on real clinical patient datasets was conducted to further validate the prediction.

CONCLUSIONS

Our model dissected the mechanism behind distinct responses of leukemia to CAR T-cell therapy. This patient-based computational immuno-oncology model can predict late responses and may be informative in clinical treatment and management.

摘要

背景

适应性靶向 CD19 的嵌合抗原受体(CAR)T 细胞转移已成为治疗白血病的一种有前途的方法。尽管不同临床试验中患者的反应存在差异,但目前缺乏可靠的方法来剖析和预测患者对新型治疗方法的反应。最近,通过计算模型对患者的反应进行了描述,但是预测应用受到限制。

方法

我们建立了 CAR T 细胞治疗的计算模型,以再现治疗过程中关键的细胞机制和动力学,以及持续缓解(CR)、无反应(NR)、CD19 阳性(CD19)和 CD19 阴性(CD19)复发的反应。从临床研究中收集了 209 名患者的实时 CAR T 细胞和肿瘤负担数据,并在骨髓中使用统一的单位进行标准化。使用随机逼近期望最大化算法进行非线性混合效应建模进行参数估计。

结果

我们揭示了与缓解、抵抗和复发患者反应相关的关键决定因素。对于 CR、NR 和 CD19 复发,CAR T 细胞的整体功能导致了不同的结果,而 CD19 抗原的丢失和 CAR T 细胞的旁观者杀伤效应可能部分解释了 CD19 复发的进展。此外,我们通过结合 CAR T 细胞的峰值和累积值或输入早期 CAR T 细胞动力学来预测患者的反应。使用基于真实临床患者数据集生成的虚拟患者队列进行临床试验模拟,进一步验证了预测。

结论

我们的模型剖析了白血病对 CAR T 细胞治疗的不同反应背后的机制。这种基于患者的计算免疫肿瘤学模型可以预测晚期反应,并可能为临床治疗和管理提供信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8c79/9730379/3fc3a8a8a172/jitc-2022-005360f01.jpg

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