Application of predictive biosimulation within pharmaceutical clinical development: examples of significance for translational medicine and clinical trial design.

A R Kansal, J Trimmer
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引用次数: 35

Abstract

The challenge of accurately predicting human clinical outcome based on preclinical data has led to a high failure rate of compounds in human clinical trials. A series of methods are described by which biosimulation can address these challenges and guide the design and evaluation of experimental and clinical protocols. Early compound development often proceeds on the basis of preclinical data from animal models. The systematic evaluation possible in a simulation can assist in the critical step of translating the preclinical outcomes to human physiology. Later in the process, clinical trials definitively establish a therapy's beneficial effects, as well as any adverse side effects. Biosimulation allows for the optimal design of clinical trials to ensure that key issues are addressed effectively and efficiently, and in doing so, improves the success rate of the trials.

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预测性生物模拟在药物临床开发中的应用:对转化医学和临床试验设计有意义的例子。
基于临床前数据准确预测人类临床结果的挑战导致了人类临床试验中化合物的高失败率。一系列的方法描述了生物模拟可以解决这些挑战,并指导设计和评估实验和临床方案。早期的化合物开发通常是基于动物模型的临床前数据进行的。系统的评估可能在模拟可以帮助在翻译临床前结果到人体生理学的关键步骤。在这个过程的后期,临床试验明确地确定了一种疗法的有益效果,以及任何不利的副作用。生物模拟允许临床试验的最佳设计,以确保关键问题得到有效和高效的解决,这样做,提高了试验的成功率。
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