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research
Missing binary outcomes under covariate-dependent missingness in cluster randomised trials.
Authors
Andridge
Barnard
+30 more
Caille
Campbell
Campbell
Carpenter
Carpenter
Davies
Diaz-Ordaz
DiazOrdaz
Donner
Faraway
Gail
Groenwold
Gulliford
Halliday
Hayes
Hernandez
Hossain
Li
Little
Ma
Ma
Ma
Mancl
Meng
Murray
Murray
Murray
Rubin
Ukoumunne
White
Publication date
18 August 2016
Publisher
'Wiley'
Doi
View
on
arXiv
Abstract
Missing outcomes are a commonly occurring problem for cluster randomised trials, which can lead to biased and inefficient inference if ignored or handled inappropriately. Two approaches for analysing such trials are cluster-level analysis and individual-level analysis. In this study, we assessed the performance of unadjusted cluster-level analysis, baseline covariate-adjusted cluster-level analysis, random effects logistic regression and generalised estimating equations when binary outcomes are missing under a baseline covariate-dependent missingness mechanism. Missing outcomes were handled using complete records analysis and multilevel multiple imputation. We analytically show that cluster-level analyses for estimating risk ratio using complete records are valid if the true data generating model has log link and the intervention groups have the same missingness mechanism and the same covariate effect in the outcome model. We performed a simulation study considering four different scenarios, depending on whether the missingness mechanisms are the same or different between the intervention groups and whether there is an interaction between intervention group and baseline covariate in the outcome model. On the basis of the simulation study and analytical results, we give guidance on the conditions under which each approach is valid. © 2017 The Authors. Statistics in Medicine Published by John Wiley & Sons Ltd
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info:doi/10.1002%2Fsim.7334
Last time updated on 01/04/2019