Department of Intensive Care 4131, Copenhagen University Hospital - Rigshospitalet, Copenhagen, Denmark.
Section of Biostatistics, Department of Public Health, University of Copenhagen, Copenhagen, Denmark.
Pharm Stat. 2024 Mar-Apr;23(2):138-150. doi: 10.1002/pst.2342. Epub 2023 Oct 14.
Different combined outcome-data lags (follow-up durations plus data-collection lags) may affect the performance of adaptive clinical trial designs. We assessed the influence of different outcome-data lags (0-105 days) on the performance of various multi-stage, adaptive trial designs (2/4 arms, with/without a common control, fixed/response-adaptive randomisation) with undesirable binary outcomes according to different inclusion rates (3.33/6.67/10 patients/day) under scenarios with no, small, and large differences. Simulations were conducted under a Bayesian framework, with constant stopping thresholds for superiority/inferiority calibrated to keep type-1 error rates at approximately 5%. We assessed multiple performance metrics, including mean sample sizes, event counts/probabilities, probabilities of conclusiveness, root mean squared errors (RMSEs) of the estimated effect in the selected arms, and RMSEs between the analyses at the time of stopping and the final analyses including data from all randomised patients. Performance metrics generally deteriorated when the proportions of randomised patients with available data were smaller due to longer outcome-data lags or faster inclusion, that is, mean sample sizes, event counts/probabilities, and RMSEs were larger, while the probabilities of conclusiveness were lower. Performance metric impairments with outcome-data lags ≤45 days were relatively smaller compared to those occurring with ≥60 days of lag. For most metrics, the effects of different outcome-data lags and lower proportions of randomised patients with available data were larger than those of different design choices, for example, the use of fixed versus response-adaptive randomisation. Increased outcome-data lag substantially affected the performance of adaptive trial designs. Trialists should consider the effects of outcome-data lags when planning adaptive trials.
不同的组合结局数据滞后(随访时间加上数据收集滞后)可能会影响适应性临床试验设计的性能。我们评估了不同的结局数据滞后(0-105 天)对不同多阶段、适应性试验设计(2/4 臂,有/无共同对照,固定/反应适应性随机化)的性能的影响,这些设计用于具有不同纳入率(3.33/6.67/10 例/天)的不良二分类结局。在不存在、小和大差异的情况下,模拟是在贝叶斯框架下进行的,对于优势/劣势的固定停止阈值进行了校准,以将Ⅰ类错误率保持在约 5%。我们评估了多个性能指标,包括平均样本量、事件计数/概率、结论概率、选定臂中估计效果的均方根误差(RMSE)以及停止时的分析与最终分析之间的 RMSE,最终分析包括所有随机化患者的数据。由于更长的结局数据滞后或更快的纳入,具有可用数据的随机化患者比例较小,因此性能指标通常会恶化,即平均样本量、事件计数/概率和 RMSE 较大,而结论概率较低。与滞后≥60 天相比,滞后≤45 天的结局数据对性能指标的影响相对较小。对于大多数指标,不同的结局数据滞后和随机化患者可用数据比例较低的影响大于不同设计选择的影响,例如固定与反应适应性随机化的使用。结局数据滞后的增加大大影响了适应性试验设计的性能。试验设计者在计划适应性试验时应考虑结局数据滞后的影响。