4.4 Article

Bayesian Hierarchical Models for Cost-Effectiveness Analyses that Use Data from Cluster Randomized Trials

期刊

MEDICAL DECISION MAKING
卷 30, 期 2, 页码 163-175

出版社

SAGE PUBLICATIONS INC
DOI: 10.1177/0272989X09341752

关键词

Bayesian hierarchical models; cluster randomized trials; cost-effectiveness analyses; statistical methods

资金

  1. National Institutes of Health Research (NIHR)
  2. UK Medical Research Council [U.1051.00.001]
  3. MRC [MC_U105260792] Funding Source: UKRI
  4. British Heart Foundation [RG/08/014/24067] Funding Source: researchfish
  5. Medical Research Council [MC_U105260792] Funding Source: researchfish

向作者/读者索取更多资源

Cost-effectiveness analyses (CEA) may be undertaken alongside cluster randomized trials (CRTs) where randomization is at the level of the cluster (for example, the hospital or primary care provider) rather than the individual. Costs (and outcomes) within clusters may be correlated so that the assumption made by standard bivariate regression models, that observations are independent, is incorrect. This study develops a flexible modeling framework to acknowledge the clustering in CEA that use CRTs. The authors extend previous Bayesian bivariate models for CEA of multicenter trials to recognize the specific form of clustering in CRTs. They develop new Bayesian hierarchical models (BHMs) that allow mean costs and outcomes, and also variances, to differ across clusters. They illustrate how each model can be applied using data from a large (1732 cases, 70 primary care providers) CRT evaluating alternative interventions for reducing postnatal depression. The analyses compare cost-effectiveness estimates from BHMs with standard bivariate regression models that ignore the data hierarchy. The BHMs show high levels of cost heterogeneity across clusters (intracluster correlation coefficient, 0.17). Compared with standard regression models, the BHMs yield substantially increased uncertainty surrounding the cost-effectiveness estimates, and altered point estimates. The authors conclude that ignoring clustering can lead to incorrect inferences. The BHMs that they present offer a flexible modeling framework that can be applied more generally to CEA that use CRTs.

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