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建立患者预处理条件下的 CAR T 细胞治疗模型。

Modeling CAR T-Cell Therapy with Patient Preconditioning.

机构信息

Department of Applied Mathematics, University of Washington, Seattle, WA, USA.

出版信息

Bull Math Biol. 2021 Mar 19;83(5):42. doi: 10.1007/s11538-021-00869-5.

Abstract

The Federal Drug Administration approved the first Chimeric Antigen Receptor T-cell (CAR T-cell) therapies for the treatment of several blood cancers in 2017, and efforts are underway to broaden CAR T technology to address other cancer types. Standard treatment protocols incorporate a preconditioning regimen of lymphodepleting chemotherapy prior to CAR T-cell infusion. However, the connection between preconditioning regimens and patient outcomes is still not fully understood. Optimizing patient preconditioning plans and reducing the CAR T-cell dose necessary for achieving remission could make therapy safer. In this paper, we test treatment regimens consisting of sequential administration of chemotherapy and CAR T-cell therapy on a system of differential equations that models the tumor-immune interaction. We use numerical simulations of treatment plans from within the scope of current medical practice to assess the effect of preconditioning plans on the success of CAR T-cell therapy. Model results affirm clinical observations that preconditioning can be crucial for most patients, not just to reduce side effects, but to even achieve remission at all. We demonstrate that preconditioning plans using the same CAR T-cell dose and the same total concentration of chemotherapy can lead to different patient outcomes due to different delivery schedules. Results from sensitivity analysis of the model parameters suggest that making small improvements in the effectiveness of CAR T-cells in attacking cancer cells will significantly reduce the minimum dose required for successful treatment. Our modeling framework represents a starting point for evaluating the efficacy of patient preconditioning in the context of CAR T-cell therapy.

摘要

美国食品和药物管理局(FDA)于 2017 年批准了首批用于治疗几种血液癌症的嵌合抗原受体 T 细胞(CAR T 细胞)疗法,目前正在努力将 CAR T 技术扩展到治疗其他癌症类型。标准治疗方案在输注 CAR T 细胞前采用淋巴清除化疗的预处理方案。然而,预处理方案与患者结局之间的联系仍不完全清楚。优化患者预处理方案和降低达到缓解所需的 CAR T 细胞剂量可以使治疗更安全。在本文中,我们在肿瘤免疫相互作用的微分方程系统上测试了化疗和 CAR T 细胞治疗序贯给药的治疗方案。我们使用当前医学实践范围内的治疗计划的数值模拟来评估预处理方案对 CAR T 细胞治疗成功的影响。模型结果证实了临床观察,即预处理对于大多数患者至关重要,不仅可以降低副作用,而且对于达到缓解也至关重要。我们证明,由于不同的给药方案,使用相同的 CAR T 细胞剂量和相同的化疗总浓度的预处理方案可能导致不同的患者结局。对模型参数的敏感性分析结果表明,提高 CAR T 细胞攻击癌细胞的有效性的微小改进将显著降低成功治疗所需的最小剂量。我们的建模框架代表了在 CAR T 细胞治疗背景下评估患者预处理疗效的起点。

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