Mielke Johanna, Schmidli Heinz, Jones Byron
Statistical Methodology, Novartis Pharma AG, 4002, Basel, Switzerland.
Biom J. 2018 May;60(3):564-582. doi: 10.1002/bimj.201700152. Epub 2018 Mar 13.
For the approval of biosimilars, it is, in most cases, necessary to conduct large Phase III clinical trials in patients to convince the regulatory authorities that the product is comparable in terms of efficacy and safety to the originator product. As the originator product has already been studied in several trials beforehand, it seems natural to include this historical information into the showing of equivalent efficacy. Since all studies for the regulatory approval of biosimilars are confirmatory studies, it is required that the statistical approach has reasonable frequentist properties, most importantly, that the Type I error rate is controlled-at least in all scenarios that are realistic in practice. However, it is well known that the incorporation of historical information can lead to an inflation of the Type I error rate in the case of a conflict between the distribution of the historical data and the distribution of the trial data. We illustrate this issue and confirm, using the Bayesian robustified meta-analytic-predictive (MAP) approach as an example, that simultaneously controlling the Type I error rate over the complete parameter space and gaining power in comparison to a standard frequentist approach that only considers the data in the new study, is not possible. We propose a hybrid Bayesian-frequentist approach for binary endpoints that controls the Type I error rate in the neighborhood of the center of the prior distribution, while improving the power. We study the properties of this approach in an extensive simulation study and provide a real-world example.
对于生物类似药的批准,在大多数情况下,有必要在患者中开展大规模III期临床试验,以使监管机构相信该产品在疗效和安全性方面与原研产品具有可比性。由于原研产品此前已在多项试验中进行过研究,因此将这些历史信息纳入等效疗效的证明中似乎是自然而然的。由于所有用于生物类似药监管批准的研究都是验证性研究,因此要求统计方法具有合理的频率论性质,最重要的是,I型错误率要得到控制——至少在实际中所有现实的情况下。然而,众所周知,在历史数据的分布与试验数据的分布存在冲突的情况下,纳入历史信息可能会导致I型错误率膨胀。我们阐述了这个问题,并以贝叶斯稳健化元分析预测(MAP)方法为例进行了验证,即要在整个参数空间同时控制I型错误率并相较于仅考虑新研究数据的标准频率论方法提高检验效能是不可能的。我们针对二元终点提出了一种混合贝叶斯-频率论方法,该方法在控制先验分布中心附近的I型错误率的同时提高了检验效能。我们在一项广泛的模拟研究中研究了该方法的性质,并提供了一个实际案例。