Department of Biomedical Engineering, Johns Hopkins University School of Medicine, Baltimore, Maryland, USA.
Clinical Pharmacology, Pharmacometrics and DMPK (CPD), MedImmune, South San Francisco, California, USA.
Sci Rep. 2019 Aug 2;9(1):11286. doi: 10.1038/s41598-019-47802-4.
Over the past decade, several immunotherapies have been approved for the treatment of melanoma. The most prominent of these are the immune checkpoint inhibitors, which are antibodies that block the inhibitory effects on the immune system by checkpoint receptors, such as CTLA-4, PD-1 and PD-L1. Preclinically, blocking these receptors has led to increased activation and proliferation of effector cells following stimulation and antigen recognition, and subsequently, more effective elimination of cancer cells. Translation from preclinical to clinical outcomes in solid tumors has shown the existence of a wide diversity of individual patient responses, linked to several patient-specific parameters. We developed a quantitative systems pharmacology (QSP) model that looks at the mentioned checkpoint blockade therapies administered as mono-, combo- and sequential therapies, to show how different combinations of specific patient parameters defined within physiological ranges distinguish different types of virtual patient responders to these therapies for melanoma. Further validation by fitting and subsequent simulations of virtual clinical trials mimicking actual patient trials demonstrated that the model can capture a wide variety of tumor dynamics that are observed in the clinic and can predict median clinical responses. Our aim here is to present a QSP model for combination immunotherapy specific to melanoma.
在过去的十年中,已经有几种免疫疗法被批准用于治疗黑色素瘤。其中最突出的是免疫检查点抑制剂,它们是抗体,可以阻断检查点受体(如 CTLA-4、PD-1 和 PD-L1)对免疫系统的抑制作用。在临床前研究中,阻断这些受体导致效应细胞在受到刺激和抗原识别后激活和增殖增加,从而更有效地消除癌细胞。从实体瘤的临床前结果转化为临床结果表明,存在广泛的个体患者反应多样性,与几个患者特定参数有关。我们开发了一种定量系统药理学(QSP)模型,研究了作为单一、联合和序贯疗法给予的所述检查点阻断疗法,以显示在生理范围内定义的特定患者参数的不同组合如何区分这些疗法对黑色素瘤的不同类型虚拟患者应答者。通过拟合和随后模拟实际患者试验的虚拟临床试验进行进一步验证表明,该模型可以捕捉到临床上观察到的多种肿瘤动力学,并可以预测中位临床反应。我们的目的是提出一种针对黑色素瘤的特定联合免疫疗法的 QSP 模型。