论文标题

随机生物标志物引导肿瘤学试验的最佳预测概率设计

Optimal predictive probability designs for randomized biomarker-guided oncology trials

论文作者

Zabor, Emily C., Kaizer, Alexander M., Pennell, Nathan A., Hobbs, Brian P.

论文摘要

近年来,开发针对生物标志物的抗癌疗法的努力已迅速发展。在2015年至2021年之间,在75个癌症指示中批准了作用于编程死亡配体1或编程死亡的六种抗体。在加快对有希望疗法的监管审查的努力中,已经根据单臂II期试验获得了几种有针对性的癌症治疗。然而,在没有随机分组的情况下,可能没有在提交加速批准申请之前,在护理标准的化学疗法中研究患者的结果。单臂研究中使用的历史控制率通常是作为人口平均值而出现的,对目标亚组缺乏特异性。例如,最近针对转移性尿路上皮癌患者的Atezolizumab的III阶段试验发现,对生物标志物的生物标志物亚型疗法的反应率为21.6%,远高于在II阶段II阶段试验中用来宣布成功的10%的历史控制率。需要在设计方法方面进行创新,以实现针对生物标记亚群的代理的有效实施。本文提出了三个随机设计,用于早期生物标志物引导的肿瘤学临床试验。每个设计都利用最佳效率预测概率方法来监视徒劳的多个生物标志物亚群。由Atezolizumab试验中报道的结果动机的模拟研究用于评估各种设计的工作特征。我们的发现表明,在决定进行III期确认性试验之前,可以随机化和徒劳停止进行有效的统计设计,以便有效地获得与比较效力有关的更多证据。

Efforts to develop biomarker-targeted anti-cancer therapies have progressed rapidly in recent years. Six antibodies acting on programmed death ligand 1 or programmed death 1 pathways were approved in 75 cancer indications between 2015 and 2021. With efforts to expedite regulatory reviews of promising therapies, several targeted cancer therapies have been granted accelerated approval on the basis of single-arm phase II trials. And yet, in the absence of randomization, patient outcomes may not have been studied under standard of care chemotherapies for emerging biomarker subpopulations prior to the submission of an accelerated approval application. Historical control rates used in single arm studies often arise as population averages, lacking specificity to the targeted subgroup. For example, a recent phase III trial of atezolizumab in patients with metastatic urothelial carcinoma found a 21.6% response rate to standard of care chemotherapy in the biomarker subgbroup of interest, much higher than the historical control rate of 10% that had been used to declare success in the preceding phase II trial. Innovations in design methodology are needed to enable efficient implementation of randomized trials for agents that target biomarker subpopulations. This article proposes three randomized designs for early phase biomarker-guided oncology clinical trials. Each design utilizes the optimal efficiency predictive probability method to monitor multiple biomarker subpopulations for futility. A simulation study motivated by the results reported in the atezolizumab trial is used to evaluate the operating characteristics of the various designs. Our findings suggest that efficient statistical design can be conducted with randomization and futility stopping to effectively acquire more evidence pertaining to comparative efficacy before deciding to conduct a phase III confirmatory trial.

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