Abstract

When planning to conduct a study, not only is it important to select a sample size that will ensure adequate statistical power, often it is important to select a sample size that results in accurate effect size estimates. In cluster-randomized designs (CRD), such planning presents special challenges. In CRD studies, instead of assigning individual objects to treatment conditions, objects are grouped in clusters, and these clusters are then assigned to different treatment conditions. Sample size in CRD studies is a function of 2 components: the number of clusters and the cluster size. Planning to conduct a CRD study is difficult because 2 distinct sample size combinations might be associated with similar costs but can result in dramatically different levels of statistical power and accuracy in effect size estimation. Thus, we present a method that assists researchers in finding the least expensive sample size combination that still results in adequate accuracy in effect size estimation. Alternatively, if researchers have a fixed budget, they can select the sample size combination that results in the most precise estimate of effect size. A free computer program that automates these procedures is available.

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