Mütze Tobias, Friede Tim
Institut für Medizinische Statistik, Universitätsmedizin Göttingen, Humboldtallee 32, Göttingen, 37073, Germany.
DZHK (German Centre for Cardiovascular Research), partner site Göttingen, Göttingen, Germany.
Stat Med. 2017 Oct 15;36(23):3636-3653. doi: 10.1002/sim.7356. Epub 2017 Jun 12.
In this article, we study blinded sample size re-estimation in the 'gold standard' design with internal pilot study for normally distributed outcomes. The 'gold standard' design is a three-arm clinical trial design that includes an active and a placebo control in addition to an experimental treatment. We focus on the absolute margin approach to hypothesis testing in three-arm trials at which the non-inferiority of the experimental treatment and the assay sensitivity are assessed by pairwise comparisons. We compare several blinded sample size re-estimation procedures in a simulation study assessing operating characteristics including power and type I error. We find that sample size re-estimation based on the popular one-sample variance estimator results in overpowered trials. Moreover, sample size re-estimation based on unbiased variance estimators such as the Xing-Ganju variance estimator results in underpowered trials, as it is expected because an overestimation of the variance and thus the sample size is in general required for the re-estimation procedure to eventually meet the target power. To overcome this problem, we propose an inflation factor for the sample size re-estimation with the Xing-Ganju variance estimator and show that this approach results in adequately powered trials. Because of favorable features of the Xing-Ganju variance estimator such as unbiasedness and a distribution independent of the group means, the inflation factor does not depend on the nuisance parameter and, therefore, can be calculated prior to a trial. Moreover, we prove that the sample size re-estimation based on the Xing-Ganju variance estimator does not bias the effect estimate. Copyright © 2017 John Wiley & Sons, Ltd.
在本文中,我们研究了在具有内部预试验的“金标准”设计中,针对正态分布结局进行盲法样本量重新估计的问题。“金标准”设计是一种三臂临床试验设计,除了试验性治疗外,还包括一个活性对照和一个安慰剂对照。我们关注三臂试验中假设检验的绝对差值法,通过两两比较来评估试验性治疗的非劣效性和检测灵敏度。我们在一项模拟研究中比较了几种盲法样本量重新估计程序,评估包括检验效能和I型错误在内的操作特征。我们发现,基于常用的单样本方差估计器进行样本量重新估计会导致检验效能过高的试验。此外,基于无偏方差估计器(如邢-甘菊方差估计器)进行样本量重新估计会导致检验效能不足的试验,正如预期的那样,因为重新估计程序通常需要高估方差从而高估样本量,才能最终达到目标检验效能。为克服这一问题,我们为使用邢-甘菊方差估计器进行样本量重新估计提出了一个膨胀因子,并表明这种方法会产生检验效能适当的试验。由于邢-甘菊方差估计器具有诸如无偏性以及分布与组均值无关等良好特性,该膨胀因子不依赖于干扰参数,因此可以在试验前进行计算。此外,我们证明基于邢-甘菊方差估计器进行样本量重新估计不会使效应估计产生偏差。版权所有© 2017约翰威立父子有限公司。