免疫肿瘤学中的定量系统药理学模型:假设检验、剂量优化和疗效预测。

Q1 Pharmacology, Toxicology and Pharmaceutics
Hanwen Wang, Theinmozhi Arulraj, Alberto Ippolito, Aleksander S Popel
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引用次数: 0

摘要

尽管临床试验越来越多,但在过去十年中,癌症仍然是世界范围内死亡的主要原因之一。在所有复杂的疾病中,肿瘤临床试验的成功率最低,部分原因是肿瘤内部和肿瘤间的异质性很高。目前有一千多种癌症药物和治疗组合正在进行临床试验,用于治疗各种癌症亚型、种系突变、转移等。特别是,依靠(重新)激活免疫系统的治疗已经越来越多地出现在临床试验管道中。然而,免疫反应和癌症免疫相互作用的复杂性对这些疗法的发展提出了挑战。定量系统药理学(Quantitative systems pharmacology, QSP)作为一种预测肿瘤对相关治疗反应的计算方法,可用于用虚拟患者(以及数字双胞胎的紧急使用)代替真实患者进行计算机临床试验,从而降低临床试验的时间和成本。随着对人类免疫系统机制的进一步了解和最近癌症免疫治疗的有希望的结果,QSP模型可以在免疫肿瘤学中基于模型的药物开发中发挥关键作用。在本章中,我们将讨论如何设计QSP模型来服务于不同的研究目标,包括假设检验、剂量优化和疗效预测,通过免疫肿瘤学的案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quantitative Systems Pharmacology Modeling in Immuno-Oncology: Hypothesis Testing, Dose Optimization, and Efficacy Prediction.

Despite an increasing number of clinical trials, cancer is one of the leading causes of death worldwide in the past decade. Among all complex diseases, clinical trials in oncology have among the lowest success rates, in part due to the high intra- and inter-tumoral heterogeneity. There are more than a thousand cancer drugs and treatment combinations being investigated in ongoing clinical trials for various cancer subtypes, germline mutations, metastasis, etc. Particularly, treatments relying on the (re)activation of the immune system have become increasingly present in the clinical trial pipeline. However, the complexities of the immune response and cancer-immune interactions pose a challenge to the development of these therapies. Quantitative systems pharmacology (QSP), as a computational approach to predict tumor response to treatments of interest, can be used to conduct in silico clinical trials with virtual patients (and emergent use of digital twins) in place of real patients, thus lowering the time and cost of clinical trials. In line with improved mechanistic understanding of the human immune system and promising results from recent cancer immunotherapy, QSP models can play critical roles in model-informed drug development in immuno-oncology. In this chapter, we discuss how QSP models were designed to serve different study objectives, including hypothesis testing, dose optimization, and efficacy prediction, via case studies in immuno-oncology.

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来源期刊
Handbook of experimental pharmacology
Handbook of experimental pharmacology Pharmacology, Toxicology and Pharmaceutics-Pharmacology, Toxicology and Pharmaceutics (all)
CiteScore
5.20
自引率
0.00%
发文量
54
期刊介绍: The Handbook of Experimental Pharmacology is one of the most authoritative and influential book series in pharmacology. It provides critical and comprehensive discussions of the most significant areas of pharmacological research, written by leading international authorities. Each volume in the series represents the most informative and contemporary account of its subject available, making it an unrivalled reference source.
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