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In silico simulation of a clinical trial with anti-CTLA-4 and anti-PD-L1 immunotherapies in metastatic breast cancer using a systems pharmacology model

机译:使用系统药理学模型对转移性乳腺癌中的抗CTLA-4和抗PD-L1免疫疗法的临床试验进行计算机模拟

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摘要

The low response rate of immune checkpoint blockade in breast cancer has highlighted the need for predictive biomarkers to identify responders. While a number of clinical trials are ongoing, testing all possible combinations is not feasible. In this study, a quantitative systems pharmacology model is built to integrate immune–cancer cell interactions in patients with breast cancer, including central, peripheral, tumour-draining lymph node (TDLN) and tumour compartments. The model can describe the immune suppression and evasion in both TDLN and the tumour microenvironment due to checkpoint expression, and mimic the tumour response to checkpoint blockade therapy. We investigate the relationship between the tumour response to checkpoint blockade therapy and composite tumour burden, PD-L1 expression and antigen intensity, including their individual and combined effects on the immune system, using model-based simulations. The proposed model demonstrates the potential to make predictions of tumour response of individual patients given sufficient clinical measurements, and provides a platform that can be further adapted to other types of immunotherapy and their combination with molecular-targeted therapies. The patient predictions demonstrate how this systems pharmacology model can be used to individualize immunotherapy treatments. When appropriately validated, these approaches may contribute to optimization of breast cancer treatment.
机译:乳腺癌中免疫检查点封锁的低响应率凸显了对预测性生物标记物识别反应者的需求。尽管正在进行许多临床试验,但测试所有可能的组合都是不可行的。在这项研究中,建立了定量系统药理模型,以整合乳腺癌患者(包括中心,外周,引流肿瘤的淋巴结(TDLN)和肿瘤区室)中的免疫-癌细胞相互作用。该模型可以描述由于检查点表达而导致的TDLN和肿瘤微环境中的免疫抑制和逃避,并模拟了肿瘤对检查点封锁疗法的反应。我们使用基于模型的模拟研究了对检查站封锁疗法的肿瘤反应与复合肿瘤负荷,PD-L1表达和抗原强度之间的关系,包括它们对免疫系统的个体和综合影响。所提出的模型证明了在进行足够的临床测量后可以预测单个患者的肿瘤反应的潜力,并提供了可以进一步适应其他类型的免疫疗法及其与分子靶向疗法结合的平台。患者的预测证明了该系统药理学模型如何可用于个性化免疫治疗。如果经过适当验证,这些方法可能有助于优化乳腺癌治疗。

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