Certara UK Ltd., Sheffield, UK.
Abbvie Inc., North Chicago, Illinois, USA.
Clin Pharmacol Ther. 2021 Mar;109(3):605-618. doi: 10.1002/cpt.1987. Epub 2020 Aug 14.
Drug development in oncology commonly exploits the tools of molecular biology to gain therapeutic benefit through reprograming of cellular responses. In immuno-oncology (IO) the aim is to direct the patient's own immune system to fight cancer. After remarkable successes of antibodies targeting PD1/PD-L1 and CTLA4 receptors in targeted patient populations, the focus of further development has shifted toward combination therapies. However, the current drug-development approach of exploiting a vast number of possible combination targets and dosing regimens has proven to be challenging and is arguably inefficient. In particular, the unprecedented number of clinical trials testing different combinations may no longer be sustainable by the population of available patients. Further development in IO requires a step change in selection and validation of candidate therapies to decrease development attrition rate and limit the number of clinical trials. Quantitative systems pharmacology (QSP) proposes to tackle this challenge through mechanistic modeling and simulation. Compounds' pharmacokinetics, target binding, and mechanisms of action as well as existing knowledge on the underlying tumor and immune system biology are described by quantitative, dynamic models aiming to predict clinical results for novel combinations. Here, we review the current QSP approaches, the legacy of mathematical models available to quantitative clinical pharmacologists describing interaction between tumor and immune system, and the recent development of IO QSP platform models. We argue that QSP and virtual patients can be integrated as a new tool in existing IO drug development approaches to increase the efficiency and effectiveness of the search for novel combination therapies.
肿瘤学中的药物研发通常利用分子生物学工具,通过重新编程细胞反应来获得治疗益处。在免疫肿瘤学(IO)中,目标是引导患者自身的免疫系统对抗癌症。在针对特定患者群体的 PD1/PD-L1 和 CTLA4 受体抗体取得显著成功之后,进一步的开发重点已经转向联合治疗。然而,目前通过大量可能的联合靶标和剂量方案来开发药物的方法已被证明具有挑战性,并且效率低下。特别是,测试不同组合的临床试验数量空前,可能已经超出了现有患者群体的承受能力。IO 的进一步发展需要在候选疗法的选择和验证方面取得重大进展,以降低开发淘汰率并限制临床试验的数量。定量系统药理学(QSP)通过机制建模和模拟来解决这一挑战。化合物的药代动力学、靶标结合和作用机制以及关于肿瘤和免疫系统生物学的现有知识都通过定量、动态模型进行描述,旨在预测新型组合的临床结果。在这里,我们回顾了当前的 QSP 方法、定量临床药理学家描述肿瘤和免疫系统相互作用的现有数学模型的遗产以及 IO QSP 平台模型的最新发展。我们认为,QSP 和虚拟患者可以作为现有 IO 药物开发方法的一种新工具进行整合,以提高寻找新型联合疗法的效率和效果。