M&S Decisions, Moscow, Russian Federation.
Oncology Research, MedImmune, Cambridge, UK.
J Immunother Cancer. 2018 Feb 27;6(1):17. doi: 10.1186/s40425-018-0327-9.
Numerous oncology combination therapies involving modulators of the cancer immune cycle are being developed, yet quantitative simulation models predictive of outcome are lacking. We here present a model-based analysis of tumor size dynamics and immune markers, which integrates experimental data from multiple studies and provides a validated simulation framework predictive of biomarkers and anti-tumor response rates, for untested dosing sequences and schedules of combined radiation (RT) and anti PD-(L)1 therapies.
A quantitative systems pharmacology model, which includes key elements of the cancer immunity cycle and the tumor microenvironment, tumor growth, as well as dose-exposure-target modulation features, was developed to reproduce experimental data of CT26 tumor size dynamics upon administration of RT and/or a pharmacological IO treatment such as an anti-PD-L1 agent. Variability in individual tumor size dynamics was taken into account using a mixed-effects model at the level of tumor-infiltrating T cell influx.
The model allowed for a detailed quantitative understanding of the synergistic kinetic effects underlying immune cell interactions as linked to tumor size modulation, under these treatments. The model showed that the ability of T cells to infiltrate tumor tissue is a primary determinant of variability in individual tumor size dynamics and tumor response. The model was further used as an in silico evaluation tool to quantitatively predict, prospectively, untested treatment combination schedules and sequences. We demonstrate that anti-PD-L1 administration prior to, or concurrently with RT reveal further synergistic effects, which, according to the model, may materialize due to more favorable dynamics between RT-induced immuno-modulation and reduced immuno-suppression of T cells through anti-PD-L1.
This study provides quantitative mechanistic explanations of the links between RT and anti-tumor immune responses, and describes how optimized combinations and schedules of immunomodulation and radiation may tip the immune balance in favor of the host, sufficiently to lead to tumor shrinkage or rejection.
目前正在开发许多涉及癌症免疫周期调节剂的肿瘤联合疗法,但缺乏可预测结果的定量模拟模型。在这里,我们提出了一种基于模型的肿瘤大小动态和免疫标志物分析方法,该方法整合了来自多项研究的实验数据,并提供了一个经过验证的模拟框架,可预测未经测试的联合辐射(RT)和抗 PD-(L)1 治疗的剂量序列和方案的生物标志物和抗肿瘤反应率。
我们开发了一个定量系统药理学模型,该模型包括癌症免疫周期和肿瘤微环境的关键要素、肿瘤生长以及剂量-暴露-靶标调节特征,以重现 CT26 肿瘤大小在接受 RT 和/或药理学 IO 治疗(如抗 PD-L1 药物)时的实验数据。使用混合效应模型在肿瘤浸润性 T 细胞流入的水平上考虑个体肿瘤大小动态的可变性。
该模型允许对这些治疗下与肿瘤大小调节相关的免疫细胞相互作用的协同动力学效应进行详细的定量理解。该模型表明,T 细胞渗透肿瘤组织的能力是个体肿瘤大小动态和肿瘤反应变异性的主要决定因素。该模型还被用作一种虚拟评估工具,用于定量预测未经测试的治疗组合方案和顺序。我们证明,在 RT 之前或同时给予抗 PD-L1 治疗可揭示进一步的协同效应,根据该模型,这可能是由于 RT 诱导的免疫调节和抗 PD-L1 对 T 细胞免疫抑制的减少之间更有利的动力学所致。
这项研究提供了 RT 与抗肿瘤免疫反应之间联系的定量机制解释,并描述了如何优化免疫调节和辐射的组合和方案,以有利于宿主的免疫平衡,足以导致肿瘤缩小或排斥。