论文标题
合并历史信息以改善I期临床试验设计
Incorporating historical information to improve phase I clinical trial designs
论文作者
论文摘要
结合历史数据或现实世界证据具有提高I期临床试验效率并加速药物开发的巨大潜力。对于基于模型的设计,例如连续重新评估方法(CRM),可以通过指定“骨架”(即每种剂量的剂量限制毒性(DLT)概率的先前估计值)来方便地进行。相比之下,几乎没有完成将历史数据或现实证据纳入模型辅助设计的工作,例如贝叶斯最佳间隔(BOIN),键盘和修改的毒性概率间隔(MTPI)设计。这导致了误解,即模型辅助设计无法包含先前的信息。在本文中,我们提出了一个统一的框架,该框架允许将历史数据或实际证据纳入模型辅助设计。提出的方法使用了公认的“骨骼”方法,并结合了先前有效样本量的概念,因此易于理解和使用。更重要的是,我们的方法保持了模型辅助设计的标志:简单性---可以在试验行为之前将剂量升级/降级规则列为列表。广泛的仿真研究表明,所提出的方法可以有效地合并先前的信息,以改善模型辅助设计的操作特性,类似于基于模型的设计。
Incorporating historical data or real-world evidence has a great potential to improve the efficiency of phase I clinical trials and to accelerate drug development. For model-based designs, such as the continuous reassessment method (CRM), this can be conveniently carried out by specifying a "skeleton," i.e., the prior estimate of dose limiting toxicity (DLT) probability at each dose. In contrast, little work has been done to incorporate historical data or real-world evidence into model-assisted designs, such as the Bayesian optimal interval (BOIN), keyboard, and modified toxicity probability interval (mTPI) designs. This has led to the misconception that model-assisted designs cannot incorporate prior information. In this paper, we propose a unified framework that allows for incorporating historical data or real-world evidence into model-assisted designs. The proposed approach uses the well-established "skeleton" approach, combined with the concept of prior effective sample size, thus it is easy to understand and use. More importantly, our approach maintains the hallmark of model-assisted designs: simplicity---the dose escalation/de-escalation rule can be tabulated prior to the trial conduct. Extensive simulation studies show that the proposed method can effectively incorporate prior information to improve the operating characteristics of model-assisted designs, similarly to model-based designs.