Department of Preventive Medicine, Northwestern University Feinberg School of Medicine, 680 N Lake Shore Drive, Suite 1400, Chicago, IL, USA.
Department of Medicine, Northwestern University Feinberg School of Medicine, 750 N Lake Shore Drive, 10th floor, Chicago, IL, USA.
Trials. 2024 Sep 6;25(1):593. doi: 10.1186/s13063-024-08415-z.
Cluster randomized trials (CRTs) are randomized trials where randomization takes place at an administrative level (e.g., hospitals, clinics, or schools) rather than at the individual level. When the number of available clusters is small, researchers may not be able to rely on simple randomization to achieve balance on cluster-level covariates across treatment conditions. If these cluster-level covariates are predictive of the outcome, covariate imbalance may distort treatment effects, threaten internal validity, lead to a loss of power, and increase the variability of treatment effects. Covariate-constrained randomization (CR) is a randomization strategy designed to reduce the risk of imbalance in cluster-level covariates when performing a CRT. Existing methods for CR have been developed and evaluated for two- and multi-arm CRTs but not for factorial CRTs.
Motivated by the BEGIN study-a CRT for weight loss among patients with pre-diabetes-we develop methods for performing CR in 2 × 2 factorial cluster randomized trials with a continuous outcome and continuous cluster-level covariates. We apply our methods to the BEGIN study and use simulation to assess the performance of CR versus simple randomization for estimating treatment effects by varying the number of clusters, the degree to which clusters are associated with the outcome, the distribution of cluster level covariates, the size of the constrained randomization space, and analysis strategies.
Compared to simple randomization of clusters, CR in the factorial setting is effective at achieving balance across cluster-level covariates between treatment conditions and provides more precise inferences. When cluster-level covariates are included in the analyses model, CR also results in greater power to detect treatment effects, but power is low compared to unadjusted analyses when the number of clusters is small.
CR should be used instead of simple randomization when performing factorial CRTs to avoid highly imbalanced designs and to obtain more precise inferences. Except when there are a small number of clusters, cluster-level covariates should be included in the analysis model to increase power and maintain coverage and type 1 error rates at their nominal levels.
整群随机试验(CRT)是一种将随机化发生在行政层面(如医院、诊所或学校)而非个体层面的随机试验。当可用的群组数量较少时,研究人员可能无法依靠简单随机化来实现治疗条件下群组水平协变量的平衡。如果这些群组水平协变量对结果具有预测性,则协变量不均衡可能会扭曲治疗效果,威胁内部有效性,导致功效降低,并增加治疗效果的变异性。协变量约束随机化(CR)是一种随机化策略,旨在降低在进行 CRT 时群组水平协变量不平衡的风险。现有的 CR 方法已经针对两臂和多臂 CRT 进行了开发和评估,但尚未针对析因 CRT 进行评估。
受 BEGIN 研究(一项针对糖尿病前期患者减肥的 CRT)的启发,我们开发了一种用于具有连续结局和连续群组水平协变量的 2×2 析因群组随机试验中进行 CR 的方法。我们将我们的方法应用于 BEGIN 研究,并通过模拟来评估 CR 与简单随机化在估计治疗效果方面的表现,模拟的因素包括群组数量、群组与结局的关联程度、群组水平协变量的分布、约束随机化空间的大小以及分析策略。
与简单随机化群组相比,析因设置中的 CR 能够有效地在治疗条件之间实现群组水平协变量的平衡,并提供更精确的推断。当在分析模型中包含群组水平协变量时,CR 还可以提高检测治疗效果的功效,但当群组数量较小时,与未调整的分析相比,功效较低。
在进行析因 CRT 时,应使用 CR 替代简单随机化,以避免高度不平衡的设计,并获得更精确的推断。除非群组数量较少,否则应在分析模型中包含群组水平协变量,以提高功效并保持覆盖率和 1 型错误率在其名义水平。