Boonstra P S, Braun T M, Taylor J M G, Kidwell K M, Bellile E L, Daignault S, Zhao L, Griffith K A, Lawrence T S, Kalemkerian G P, Schipper M J
Departments of Biostatistics.
Radiation Oncology.
Ann Oncol. 2017 Jul 1;28(7):1427-1435. doi: 10.1093/annonc/mdx045.
Regulatory agencies and others have expressed concern about the uncritical use of dose expansion cohorts (DECs) in phase I oncology trials. Nonetheless, by several metrics-prevalence, size, and number-their popularity is increasing. Although early efficacy estimation in defined populations is a common primary endpoint of DECs, the types of designs best equipped to identify efficacy signals have not been established.
We conducted a simulation study of six phase I design templates with multiple DECs: three dose-assignment/adjustment mechanisms multiplied by two analytic approaches for estimating efficacy after the trial is complete. We also investigated the effect of sample size and interim futility analysis on trial performance. Identifying populations in which the treatment is efficacious (true positives) and weeding out inefficacious treatment/populations (true negatives) are competing goals in these trials. Thus, we estimated true and false positive rates for each design.
Adaptively updating the MTD during the DEC improved true positive rates by 8-43% compared with fixing the dose during the DEC phase while maintaining false positive rates. Inclusion of an interim futility analysis decreased the number of patients treated under inefficacious DECs without hurting performance.
A substantial gain in efficiency is obtainable using a design template that statistically models toxicity and efficacy against dose level during expansion. Design choices for dose expansion should be motivated by and based upon expected performance. Similar to the common practice in single-arm phase II trials, cohort sample sizes should be justified with respect to their primary aim and include interim analyses to allow for early stopping.
监管机构及其他方面已对在肿瘤学I期试验中不加批判地使用剂量扩展队列(DEC)表示担忧。尽管如此,从几个指标来看——患病率、规模和数量——它们的受欢迎程度正在上升。虽然在特定人群中进行早期疗效评估是DEC常见的主要终点,但最适合识别疗效信号的设计类型尚未确定。
我们对六种带有多个DEC的I期设计模板进行了模拟研究:三种剂量分配/调整机制乘以两种试验完成后估计疗效的分析方法。我们还研究了样本量和期中无效性分析对试验性能的影响。在这些试验中,识别出治疗有效的人群(真阳性)并排除无效的治疗/人群(真阴性)是相互竞争的目标。因此,我们估计了每种设计的真阳性率和假阳性率。
与在DEC阶段固定剂量相比,在DEC期间自适应更新最大耐受剂量(MTD)可将真阳性率提高8% - 43%,同时保持假阳性率。纳入期中无效性分析可减少在无效DEC下接受治疗的患者数量,且不影响试验性能。
使用一种在扩展期间针对剂量水平对毒性和疗效进行统计建模的设计模板,可大幅提高效率。剂量扩展的设计选择应以预期性能为动机并基于预期性能。与单臂II期试验的常见做法类似,队列样本量应根据其主要目标进行论证,并包括期中分析以允许早期终止试验。