Department of Radiation Oncology, Massachusetts General Hospital/Harvard Medical School, United States.
Department of Radiation Oncology, Paul Scherrer Institut, Villigen, Switzerland.
Radiother Oncol. 2020 Oct;151:73-81. doi: 10.1016/j.radonc.2020.07.025. Epub 2020 Jul 15.
The impact of radiation therapy on the immune system has recently gained attention particularly when delivered in combination with immunotherapy. However, it is unclear how different treatment fractionation regimens influence the interaction between the immune system and radiation. The goal of this work was to develop a mathematical model that quantifies both the immune stimulating as well as the immunosuppressive effects of radiotherapy and simulates the effects of different fractionation regimens based on patient data.
The framework describes the temporal evolution of tumor cells, lymphocytes, and inactivated dying tumor cells releasing antigens during radiation therapy, specifically modeling how recruited lymphocytes inhibit tumor progression. The parameters of the model were partly taken from the literature and in part extracted from blood samples (circulating lymphocytes: CLs) collected from hepatocellular carcinoma patients undergoing radiotherapy and their outcomes. The dose volume histograms to circulating lymphocytes were calculated with a probability-based model.
Based on the fitted parameters, the model enabled a study into the depletion and recovery of CLs in patients as a function of fractionation regimen. Our results quantify the ability of short fractionation regimens to lead to shorter periods of lymphocyte depletion and predict faster recovery after the end of treatment. The model shows that treatment breaks between fractions can prolong the period of lymphocyte depletion and should be avoided.
This study introduces a mathematical model for tumor-immune interactions using clinically extracted radiotherapy patient data, which can be applied to design trials aimed at minimizing lymphocyte depleting effects in radiation therapy.
放射治疗对免疫系统的影响最近引起了关注,尤其是与免疫疗法联合使用时。然而,不同的治疗分割方案如何影响免疫系统和放射之间的相互作用尚不清楚。这项工作的目的是开发一种数学模型,该模型可以量化放射治疗的免疫刺激和免疫抑制作用,并根据患者数据模拟不同分割方案的效果。
该框架描述了肿瘤细胞、淋巴细胞和在放射治疗过程中释放抗原的失活死亡肿瘤细胞的时间演变,特别模拟了募集的淋巴细胞如何抑制肿瘤进展。模型的参数部分取自文献,部分取自接受放射治疗的肝细胞癌患者的血液样本(循环淋巴细胞:CLs)及其结果。通过基于概率的模型计算了循环淋巴细胞的剂量体积直方图。
基于拟合参数,该模型能够研究分割方案对患者 CLs 耗竭和恢复的影响。我们的结果量化了短分割方案导致 CLs 耗竭时间缩短的能力,并预测了治疗结束后更快的恢复。该模型表明,分次治疗之间的休息时间会延长 CLs 耗竭的时间,应避免这种情况。
本研究使用从临床提取的放射治疗患者数据为肿瘤免疫相互作用引入了一种数学模型,该模型可用于设计旨在最小化放射治疗中淋巴细胞耗竭作用的试验。