Department of Biostatistics & Data Science, University of Kansas Medical Center, Robinson 5028, 3901 Rainbow Blvd., Kansas City, KS, 66160, USA.
Division of Biometrics II, Office of Biostatistics, Office of Translational Sciences, Center of Drug Evaluation and Research, U.S. Food and Drug Administration, Silver Spring, MD, 20993, USA.
BMC Med Res Methodol. 2022 Apr 21;22(1):118. doi: 10.1186/s12874-022-01569-x.
Pediatric population presents several barriers for clinical trial design and analysis, including ethical constraints on the sample size and slow accrual rate. Bayesian adaptive design methods could be considered to address these challenges in pediatric clinical trials.
We developed an innovative Bayesian adaptive design method and demonstrated the approach as a re-design of a published phase III pediatric trial. The innovative design used early success criteria based on skeptical prior and early futility criteria based on enthusiastic prior extrapolated from a historical adult trial, and the early and late stopping boundaries were calibrated to ensure a one-sided type I error of 2.5%. We also constructed several alternative designs which incorporated only one type of prior belief and the same stopping boundaries. To identify a preferred design, we compared operating characteristics including power, expected trial size and trial duration for all the candidate adaptive designs via simulation when performing an increasing number of equally spaced interim analyses.
When performing an increasing number of equally spaced interim analyses, the innovative Bayesian adaptive trial design incorporating both skeptical and enthusiastic priors at both interim and final analyses outperforms alternative designs which only consider one type of prior belief, because it allows more reduction in sample size and trial duration while still offering good trial design properties including controlled type I error rate and sufficient power.
Designing a Bayesian adaptive pediatric trial with both skeptical and enthusiastic priors can be an efficient and robust approach for early trial stopping, thus potentially saving time and money for trial conduction.
儿科人群在临床试验设计和分析方面存在一些障碍,包括对样本量的伦理限制和入组速度缓慢。贝叶斯自适应设计方法可用于解决儿科临床试验中的这些挑战。
我们开发了一种创新的贝叶斯自适应设计方法,并通过重新设计一项已发表的儿科三期临床试验来演示该方法。该创新设计使用了基于怀疑先验的早期成功标准和基于热情先验的早期无效标准,并从历史成人试验中推断出这些标准,早期和晚期停止边界经过校准,以确保单侧 2.5%的Ⅰ类错误率。我们还构建了几种仅采用一种先验信念和相同停止边界的替代设计。为了确定首选设计,我们通过模拟比较了所有候选自适应设计的操作特性,包括在进行越来越多均等间隔的中期分析时的功效、预期试验规模和试验持续时间。
当进行越来越多均等间隔的中期分析时,在中期和最终分析中同时考虑怀疑和热情先验的创新贝叶斯自适应试验设计优于仅考虑一种先验信念的替代设计,因为它允许在保持良好的试验设计特性(包括控制Ⅰ类错误率和足够的功效)的同时,进一步减少样本量和试验持续时间。
设计具有怀疑和热情先验的贝叶斯自适应儿科试验是一种有效的、稳健的早期试验停止方法,从而可能为试验进行节省时间和金钱。