Department of Public Health, School of Medicine, Nanjing University of Chinese Medicine, 138 Xianlin Rd, Nanjing, 210023, China.
Department of Epidemiology and Biostatistics, School of Public Health, Southeast University, No.87 Dingjiaqiao, Nanjing, 210009, China.
BMC Med Res Methodol. 2024 Jan 17;24(1):12. doi: 10.1186/s12874-024-02144-2.
Seamless phase 2/3 design has become increasingly popular in clinical trials with a single endpoint. Trials that define success based on the achievement of all co-primary endpoints (CPEs) encounter the challenge of inflated type 2 error rates, often leading to an overly large sample size. To tackle this challenge, we introduced a seamless phase 2/3 design strategy that employs Bayesian predictive power (BPP) for futility monitoring and sample size re-estimation at interim analysis. The correlations among multiple CPEs are incorporated using a Dirichlet-multinomial distribution. An alternative approach based on conditional power (CP) was also discussed for comparison. A seamless phase 2/3 vaccine trial employing four binary endpoints under the non-inferior hypothesis serves as an example. Our results spotlight that, in scenarios with relatively small phase 2 sample sizes (e.g., 50 or 100 subjects), the BPP approach either outperforms or matches the CP approach in terms of overall power. Particularly, with n = 50 and ρ = 0, BPP showcases an overall power advantage over CP by as much as 8.54%. Furthermore, when the phase 2 stage enrolled more subjects (e.g., 150 or 200), especially with a phase 2 sample size of 200 and ρ = 0, the BPP approach evidences a peak difference of 5.76% in early stop probability over the CP approach, emphasizing its better efficiency in terminating futile trials. It's noteworthy that both BPP and CP methodologies maintained type 1 error rates under 2.5%. In conclusion, the integration of the Dirichlet-Multinominal model with the BPP approach offers improvement in certain scenarios over the CP approach for seamless phase 2/3 trials with multiple CPEs.
无缝设计在具有单一终点的临床试验中越来越受欢迎。基于所有主要次要终点(CPEs)的实现来定义成功的试验面临着 2 型错误率膨胀的挑战,这通常导致样本量过大。为了应对这一挑战,我们引入了一种无缝的 2/3 期设计策略,该策略在中期分析时使用贝叶斯预测力(BPP)进行无效性监测和样本量重新估计。使用狄利克雷-多项分布来整合多个 CPEs 之间的相关性。还讨论了基于条件功效(CP)的替代方法进行比较。采用非劣效假设的四个二分类终点的无缝 2/3 期疫苗试验作为示例。我们的结果表明,在 2 期样本量相对较小(例如 50 或 100 例)的情况下,BPP 方法在总体功效方面要么优于要么与 CP 方法相当。特别是,在 n = 50 和 ρ = 0 的情况下,BPP 比 CP 具有高达 8.54%的总体功效优势。此外,当 2 期阶段招募更多受试者(例如,150 或 200 例)时,尤其是当 2 期样本量为 200 且 ρ = 0 时,BPP 方法在提前停止概率上比 CP 方法有高达 5.76%的峰值差异,这强调了其在终止无效试验方面的更高效率。值得注意的是,BPP 和 CP 方法都将 1 型错误率保持在 2.5%以下。总之,与 CP 方法相比,将狄利克雷-多项模型与 BPP 方法相结合,可为具有多个 CPEs 的无缝 2/3 期试验提供某些情况下的改进。