Division of Mathematical Oncology, Department of Computational and Quantitative Medicine, Beckman Research Institute, City of Hope National Medical Center, Duarte, CA, United States.
Department of Physics and Astronomy, College of Charleston, Charleston, SC, United States.
Front Immunol. 2023 May 15;14:1115536. doi: 10.3389/fimmu.2023.1115536. eCollection 2023.
In the development of cell-based cancer therapies, quantitative mathematical models of cellular interactions are instrumental in understanding treatment efficacy. Efforts to validate and interpret mathematical models of cancer cell growth and death hinge first on proposing a precise mathematical model, then analyzing experimental data in the context of the chosen model. In this work, we present the first application of the sparse identification of non-linear dynamics (SINDy) algorithm to a real biological system in order discover cell-cell interaction dynamics in experimental data, using chimeric antigen receptor (CAR) T-cells and patient-derived glioblastoma cells. By combining the techniques of latent variable analysis and SINDy, we infer key aspects of the interaction dynamics of CAR T-cell populations and cancer. Importantly, we show how the model terms can be interpreted biologically in relation to different CAR T-cell functional responses, single or double CAR T-cell-cancer cell binding models, and density-dependent growth dynamics in either of the CAR T-cell or cancer cell populations. We show how this data-driven model-discovery based approach provides unique insight into CAR T-cell dynamics when compared to an established model-first approach. These results demonstrate the potential for SINDy to improve the implementation and efficacy of CAR T-cell therapy in the clinic through an improved understanding of CAR T-cell dynamics.
在基于细胞的癌症疗法的发展中,细胞相互作用的定量数学模型对于理解治疗效果至关重要。验证和解释癌细胞生长和死亡的数学模型的努力首先取决于提出一个精确的数学模型,然后根据所选模型分析实验数据。在这项工作中,我们首次将稀疏非线性动力学识别(SINDy)算法应用于真实的生物系统,以发现嵌合抗原受体(CAR)T 细胞和患者来源的胶质母细胞瘤细胞实验数据中的细胞间相互作用动力学。通过结合潜在变量分析和 SINDy 的技术,我们推断了 CAR T 细胞群体和癌症相互作用动力学的关键方面。重要的是,我们展示了如何根据不同的 CAR T 细胞功能反应、单个或双 CAR T 细胞-癌细胞结合模型以及 CAR T 细胞或癌细胞群体中密度依赖性生长动力学,从生物学角度解释模型项。我们展示了与既定的模型优先方法相比,这种基于数据驱动的模型发现方法如何为 CAR T 细胞动力学提供独特的见解。这些结果表明,SINDy 有可能通过更好地了解 CAR T 细胞动力学,从而提高 CAR T 细胞疗法在临床上的实施和疗效。