利用数学模型研究CAR - t细胞联合治疗胶质母细胞瘤。

Runpeng Li, Michael Barish, Margarita Gutova, Christine E Brown, Russell C Rockne, Heyrim Cho
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摘要

胶质母细胞瘤是一种高度侵袭性和难以治疗的脑癌,抵抗传统疗法。嵌合抗原受体(CAR) t细胞治疗的最新进展显示出治疗胶质母细胞瘤的良好潜力;然而,由于肿瘤抗原异质性、肿瘤微环境和t细胞耗竭,达到最佳疗效仍然具有挑战性。在这项研究中,我们建立了一个CAR - t细胞治疗胶质母细胞瘤的数学模型,以探索考虑抗原表达空间异质性的CAR - t细胞治疗组合。我们的混合模型是使用多细胞建模平台PhysiCell创建的,将描述肿瘤微环境的偏微分方程与胶质母细胞瘤和CAR - t细胞的基于药物的模型结合在一起。该模型在整个治疗过程中捕获胶质母细胞瘤细胞和CAR -t细胞之间的细胞间相互作用,重点关注三种靶抗原:IL-13R α 2、HER2和EGFR。我们分析了从人体组织中鉴定的肿瘤抗原表达模式的异质性,并研究了患者特异性联合CAR - t细胞治疗策略。我们的模型表明,早期干预是最有效的方法,特别是在以混合抗原表达为特征的胶质母细胞瘤肿瘤中。然而,在具有聚集抗原模式的组织中,我们发现用特定CAR - t细胞类型顺序给药可以达到与同时给药相当的疗效。此外,CAR - t细胞与匹配抗原一起靶向递送到特定肿瘤区域也是一种有效的策略。我们的模型为制定患者特异性CAR - t细胞治疗计划提供了一个有价值的平台,该计划有可能根据个体抗原表达谱优化CAR - t细胞注射的时间表和位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Study of combination CAR T-cell treatment for glioblastoma using mathematical modeling.

Glioblastoma is a highly aggressive and difficult-to-treat brain cancer that resists conventional therapies. Recent advances in chimeric antigen receptor (CAR) T-cell therapy have shown promising potential for treating glioblastoma; however, achieving optimal efficacy remains challenging due to tumor antigen heterogeneity, the tumor microenvironment, and T-cell exhaustion. In this study, we developed a mathematical model of CAR T-cell therapy for glioblastoma to explore combinations of CAR T-cell treatments that take into account the spatial heterogeneity of antigen expression. Our hybrid model, created using the multicellular modeling platform PhysiCell, couples partial differential equations that describe the tumor microenvironment with agent-based models for glioblastoma and CAR T-cells. The model captures cell-to-cell interactions between the glioblastoma cells and CAR T-cells throughout treatment, focusing on three target antigens: IL-13Rα2, HER2, and EGFR. We analyze tumor antigen expression heterogeneity informed by expression patterns identified from human tissues and investigate patient-specific combination CAR T-cell treatment strategies. Our model demonstrates that an early intervention is the most effective approach, especially in glioblastoma tumors characterized by mixed antigen expression. However, in tissues with clustered antigen patterns, we find that sequential administration with specific CAR T-cell types can achieve efficacy comparable to simultaneous administration. In addition, spatially targeted delivery of CAR T-cells to specific tumor regions with matching antigen is an effective strategy as well. Our model provides a valuable platform for developing patient-specific CAR T-cell treatment plans with the potential to optimize scheduling and locations of CAR T-cell injections based on individual antigen expression profiles.

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