论文标题
集群随机试验,旨在支持可推广的推论
Cluster randomized trials designed to support generalizable inferences
论文作者
论文摘要
背景:计划群集随机试验时,评估人员通常可以访问代表集群目标人群的列举队列。进行试验的实用性(例如,需要超过具有某些特征以改善试验经济或支持群集亚组推断的集群的需要,可能会排除从同类中的简单随机采样到试验,从而干扰对目标人群产生通用的推论的目的。 方法:我们描述了一种嵌套的试验设计,其中随机簇被嵌入到目标人群中的符合试验的符合试验的簇中,并选择将簇选中,以纳入群集中,其中包含在试验中,其中已知的采样概率可能取决于群集特征(例如,可以选择群集以允许群集以允许群集进行试验性的试验行为或检查其相关的特征)。我们开发和评估分析该设计数据的方法,以将因果推断推广到该队列的目标人群。 结果:我们提出了对平均潜在结果和平均治疗效应,集群的整个目标群体以及其非随机子集的预期的识别和估计结果。在仿真研究中,我们表明所有估计器的偏差都低,但精度明显不同。 结论:群集随机试验,其中选择了群集与依赖群集特征的已知采样概率以及有效估计方法结合使用的已知采样概率,可以精确地量化目标人群中的治疗效果,同时解决基于其特征的基础进行过度采样集群的试验行为目标。
Background: When planning a cluster randomized trial, evaluators often have access to an enumerated cohort representing the target population of clusters. Practicalities of conducting the trial, such as the need to oversample clusters with certain characteristics to improve trial economy or to support inference about subgroups of clusters, may preclude simple random sampling from the cohort into the trial, and thus interfere with the goal of producing generalizable inferences about the target population. Methods: We describe a nested trial design where the randomized clusters are embedded within a cohort of trial-eligible clusters from the target population and where clusters are selected for inclusion in the trial with known sampling probabilities that may depend on cluster characteristics (e.g., allowing clusters to be chosen to facilitate trial conduct or to examine hypotheses related to their characteristics). We develop and evaluate methods for analyzing data from this design to generalize causal inferences to the target population underlying the cohort. Results: We present identification and estimation results for the expectation of the average potential outcome and for the average treatment effect, in the entire target population of clusters and in its non-randomized subset. In simulation studies we show that all the estimators have low bias but markedly different precision. Conclusions: Cluster randomized trials where clusters are selected for inclusion with known sampling probabilities that depend on cluster characteristics, combined with efficient estimation methods, can precisely quantify treatment effects in the target population, while addressing objectives of trial conduct that require oversampling clusters on the basis of their characteristics.