生成基于模型的虚拟临床试验的实用指南

M. Craig, J. Gevertz, I. Kareva, K. Wilkie
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引用次数: 2

摘要

数学建模在药物设计、开发和优化方面做出了重大贡献。虚拟临床试验整合了数学模型来探索患者异质性及其对各种治疗问题的影响,最近越来越受欢迎。在这里,我们概述了从数学模型创建虚拟患者以最终实现和执行虚拟临床试验的最佳实践。在本实用指南中,我们讨论并提供了模型设计、参数估计、参数敏感性、模型可识别性和虚拟患者队列创建的示例。我们的目标是帮助研究人员采用这些方法来进一步使用基于虚拟人群的分析和虚拟临床试验。
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A practical guide for the generation of model-based virtual clinical trials
Mathematical modeling has made significant contributions to drug design, development, and optimization. Virtual clinical trials that integrate mathematical models to explore patient heterogeneity and its impact on a variety of therapeutic questions have recently risen in popularity. Here, we outline best practices for creating virtual patients from mathematical models to ultimately implement and execute a virtual clinical trial. In this practical guide, we discuss and provide examples of model design, parameter estimation, parameter sensitivity, model identifiability, and virtual patient cohort creation. Our goal is to help researchers adopt these approaches to further the use of virtual population-based analysis and virtual clinical trials.
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