Department of Computer Engineering and Systems Science, University of Pavia, Pavia, Italy.
J Pharmacokinet Pharmacodyn. 2011 Oct;38(5):595-612. doi: 10.1007/s10928-011-9210-8. Epub 2011 Aug 21.
The approval and differentiation of new compounds in clinical development often demands non-inferiority trials, in which the test drug is compared against a reference treatment. However, non-inferiority trials impose major operational burden with serious ethical and scientific implications for the development of new medicines. Traditional approaches make limited use of historical information on placebo and neglect inter-trial variability, relying on the constancy assumption that the control-to-placebo effect size is maintained across trials. We propose a model-based approach that overcomes such limitations and may be used as a tool to explore differentiation during clinical development. Parameter distributions are introduced which reflect the heterogeneity of trials. The method is illustrated using data from impetigo trials. Based on simulation scenarios, this Bayesian technique yields a definitive, consistent increase in the statistical power over two accepted statistical methods, allowing lower sample size requirements for the assessment of non-inferiority.
新化合物在临床开发中的批准和分化通常需要非劣效性试验,其中将试验药物与参比治疗进行比较。然而,非劣效性试验会带来重大的操作负担,并对新药的开发产生严重的伦理和科学影响。传统方法对安慰剂的历史信息利用有限,忽视了试验间的变异性,依赖于对照到安慰剂效应大小在整个试验中保持不变的假设。我们提出了一种基于模型的方法,可以克服这些限制,并可作为探索临床开发过程中分化的工具。引入了反映试验异质性的参数分布。该方法使用脓疱疮试验的数据进行了说明。基于模拟场景,与两种公认的统计方法相比,这种贝叶斯技术在统计功效上有明确、一致的提高,允许在评估非劣效性时减少样本量的要求。