Crisp Amy M, Halloran M Elizabeth, Hitchings Matt D T, Longini Ira M, Dean Natalie E
Department of Biostatistics, University of Florida, Gainesville, Florida, USA.
Department of Biostatistics, University of Washington, Seattle, Washington, USA.
BMC Med Res Methodol. 2025 Jan 22;25(1):16. doi: 10.1186/s12874-025-02465-w.
Cluster randomized trials, which often enroll a small number of clusters, can benefit from constrained randomization, selecting a final randomization scheme from a set of known, balanced randomizations. Previous literature has addressed the suitability of adjusting the analysis for the covariates that were balanced in the design phase when the outcome is continuous or binary. Here we extended this work to time-to-event outcomes by comparing two model-based tests and a newly derived permutation test. A current cluster randomized trial of vector control for the prevention of mosquito-borne disease in children in Mexico is used as a motivating example.
We assessed type I error rates and power between simple randomization and constrained randomization using both prognostic and non-prognostic covariates via a simulation study. We compared the performance of a semi-parametric Cox proportional hazards model with robust variance, a mixed effects Cox model, and a permutation test utilizing deviance residuals.
The permutation test generally maintained nominal type I error-with the exception of the unadjusted analysis for constrained randomization-and also provided power comparable to the two Cox model-based tests. The model-based tests had inflated type I error when there were very few clusters per trial arm. All three methods performed well when there were 25 clusters per trial arm, as in the case of the motivating example.
For time-to-event outcomes, covariate-constrained randomization was shown to improve power relative to simple randomization. The permutation test developed here was more robust to inflation of type I error compared to model-based tests. Gaining power by adjusting for covariates in the analysis phase was largely dependent on the number of clusters per trial arm.
整群随机试验通常纳入少量群组,可从受限随机化中获益,即从一组已知的、平衡的随机化方案中选择最终的随机化方案。以往文献探讨了在结局为连续型或二分类时,针对设计阶段平衡的协变量调整分析的适用性。在此,我们通过比较两种基于模型的检验和一种新推导的置换检验,将这项工作扩展到了事件发生时间结局。以墨西哥一项当前正在进行的预防儿童蚊媒疾病的整群随机矢量控制试验作为实例。
我们通过模拟研究,使用预后和非预预后协变量评估了简单随机化和受限随机化之间的I型错误率和检验效能。我们比较了半参数Cox比例风险模型(采用稳健方差)、混合效应Cox模型以及利用偏差残差的置换检验的性能。
置换检验一般能维持名义I型错误率——受限随机化的未调整分析除外——并且检验效能与两种基于Cox模型的检验相当。当每个试验组的群组数量非常少时,基于模型的检验会出现I型错误膨胀。如同实例那样,当每个试验组有25个群组时,所有三种方法的表现都很好。
对于事件发生时间结局,与简单随机化相比,协变量受限随机化显示出能提高检验效能。与基于模型的检验相比,此处开发的置换检验对I型错误膨胀更具稳健性。在分析阶段通过调整协变量来提高检验效能在很大程度上取决于每个试验组的群组数量。