Propensity scores used for analysis of cluster randomized trials with selection bias: a simulation study |
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Authors: | C. Leyrat A. Caille A. Donner B. Giraudeau |
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Affiliation: | 1. INSERM UMR‐S 738, , Paris, France;2. INSERM CIC 202, , Tours, France;3. Université Fran?ois‐Rabelais, PRES Centre‐Val de Loire Université, , Tours, France;4. CHRU de Tours, , Tours, France;5. Department of Epidemiology and Biostatistics, University of Western Ontario, , London, Canada |
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Abstract: | Cluster randomized trials (CRTs) are often prone to selection bias despite randomization. Using a simulation study, we investigated the use of propensity score (PS) based methods in estimating treatment effects in CRTs with selection bias when the outcome is quantitative. Of four PS‐based methods (adjustment on PS, inverse weighting, stratification, and optimal full matching method), three successfully corrected the bias, as did an approach using classical multivariable regression. However, they showed poorer statistical efficiency than classical methods, with higher standard error for the treatment effect, and type I error much smaller than the 5% nominal level. Copyright © 2013 John Wiley & Sons, Ltd. |
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Keywords: | cluster randomized trial Monte‐Carlo simulations selection bias propensity score |
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