Spencer Amy V, Harbron Chris, Mander Adrian, Wason James, Peers Ian
AstraZeneca, Global Medicines Development, Biometrics and Information Sciences, Mereside, Alderley Park, Macclesfield, SK10 4TG, U.K..
Roche Pharmaceuticals, 6 Falcon Way, Welwyn Garden City, AL7 1TW, U.K.
Stat Med. 2016 Nov 30;35(27):4909-4923. doi: 10.1002/sim.7042. Epub 2016 Jul 14.
Potential predictive biomarkers are often measured on a continuous scale, but in practice, a threshold value to divide the patient population into biomarker 'positive' and 'negative' is desirable. Early phase clinical trials are increasingly using biomarkers for patient selection, but at this stage, it is likely that little will be known about the relationship between the biomarker and the treatment outcome. We describe a single-arm trial design with adaptive enrichment, which can increase power to demonstrate efficacy within a patient subpopulation, the parameters of which are also estimated. Our design enables us to learn about the biomarker and optimally adjust the threshold during the study, using a combination of generalised linear modelling and Bayesian prediction. At the final analysis, a binomial exact test is carried out, allowing the hypothesis that 'no population subset exists in which the novel treatment has a desirable response rate' to be tested. Through extensive simulations, we are able to show increased power over fixed threshold methods in many situations without increasing the type-I error rate. We also show that estimates of the threshold, which defines the population subset, are unbiased and often more precise than those from fixed threshold studies. We provide an example of the method applied (retrospectively) to publically available data from a study of the use of tamoxifen after mastectomy by the German Breast Study Group, where progesterone receptor is the biomarker of interest. © 2016 The Authors. Statistics in Medicine published by John Wiley & Sons Ltd.
潜在的预测生物标志物通常以连续尺度进行测量,但在实际应用中,需要一个阈值将患者群体划分为生物标志物“阳性”和“阴性”。早期临床试验越来越多地使用生物标志物进行患者选择,但在这个阶段,对于生物标志物与治疗结果之间的关系可能知之甚少。我们描述了一种具有适应性富集的单臂试验设计,该设计可以提高在患者亚群中证明疗效的能力,同时还能估计亚群的参数。我们的设计使我们能够在研究过程中,通过结合广义线性模型和贝叶斯预测来了解生物标志物并优化调整阈值。在最终分析时,进行二项式精确检验,以检验“不存在新治疗方法具有理想反应率的人群子集”这一假设。通过广泛的模拟,我们能够表明在许多情况下,与固定阈值方法相比,我们的方法在不增加I型错误率的情况下提高了检验效能。我们还表明,定义人群子集的阈值估计是无偏的,并且通常比固定阈值研究的估计更精确。我们提供了一个将该方法(回顾性地)应用于德国乳腺癌研究组一项关于乳房切除术后使用他莫昔芬研究的公开数据的例子,其中孕激素受体是感兴趣的生物标志物。© 2016作者。《医学统计学》由约翰·威利父子有限公司出版