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抗癌药物临床开发的疗效与安全性的数学建模

Mathematical modeling of efficacy and safety for anticancer drugs clinical development.

作者信息

Lavezzi Silvia Maria, Borella Elisa, Carrara Letizia, De Nicolao Giuseppe, Magni Paolo, Poggesi Italo

机构信息

a Dipartimento di Ingegneria Industriale e dell'Informazione , Università degli Studi di Pavia , Pavia , Italy.

b Global Clinical Pharmacology , Janssen Research and Development , Cologno Monzese , Italy.

出版信息

Expert Opin Drug Discov. 2018 Jan;13(1):5-21. doi: 10.1080/17460441.2018.1388369. Epub 2017 Oct 12.

Abstract

Drug attrition in oncology clinical development is higher than in other therapeutic areas. In this context, pharmacometric modeling represents a useful tool to explore drug efficacy in earlier phases of clinical development, anticipating overall survival using quantitative model-based metrics. Furthermore, modeling approaches can be used to characterize earlier the safety and tolerability profile of drug candidates, and, thus, the risk-benefit ratio and the therapeutic index, supporting the design of optimal treatment regimens and accelerating the whole process of clinical drug development. Areas covered: Herein, the most relevant mathematical models used in clinical anticancer drug development during the last decade are described. Less recent models were considered in the review if they represent a standard for the analysis of certain types of efficacy or safety measures. Expert opinion: Several mathematical models have been proposed to predict overall survival from earlier endpoints and validate their surrogacy in demonstrating drug efficacy in place of overall survival. An increasing number of mathematical models have also been developed to describe the safety findings. Modeling has been extensively used in anticancer drug development to individualize dosing strategies based on patient characteristics, and design optimal dosing regimens balancing efficacy and safety.

摘要

肿瘤学临床开发中的药物淘汰率高于其他治疗领域。在此背景下,药代动力学建模是一种有用的工具,可在临床开发的早期阶段探索药物疗效,使用基于定量模型的指标预测总生存期。此外,建模方法可用于更早地表征候选药物的安全性和耐受性概况,从而表征风险效益比和治疗指数,支持优化治疗方案的设计并加速临床药物开发的整个过程。涵盖领域:本文描述了过去十年临床抗癌药物开发中使用的最相关数学模型。如果较早期的模型代表了某些类型疗效或安全性分析的标准,则在综述中也会予以考虑。专家意见:已经提出了几种数学模型来从早期终点预测总生存期,并验证它们在替代总生存期证明药物疗效方面的替代作用。还开发了越来越多的数学模型来描述安全性结果。建模已广泛应用于抗癌药物开发,以根据患者特征个性化给药策略,并设计平衡疗效和安全性的最佳给药方案。

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