Journal article
Handling of missing data with multiple imputation in observational studies that address causal questions: Protocol for a scoping review
R Mainzer, M Moreno-Betancur, C Nguyen, J Simpson, J Carlin, K Lee
BMJ Open | Published : 2023
Abstract
Introduction Observational studies in health-related research often aim to answer causal questions. Missing data are common in these studies and often occur in multiple variables, such as the exposure, outcome and/or variables used to control for confounding. The standard classification of missing data as missing completely at random, missing at random (MAR) or missing not at random does not allow for a clear assessment of missingness assumptions when missingness arises in more than one variable. This presents challenges for selecting an analytic approach and determining when a sensitivity analysis under plausible alternative missing data assumptions is required. This is particularly pertine..
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Grants
Awarded by National Health and Medical Research Council
Funding Acknowledgements
This work was supported by an Australian National Health and Medical Research Council (NHMRC) Career Development Fellowship (CDF) Level 2 Grant (grant 1127984 awarded to KL), an NHMRC Investigator Grant Leadership Level 1 (grant 1196068 awarded to JS), an NHMRC Investigator Grant Emerging Leadership Level 2 (grant 2009572 awarded to MM- B) and an NHMRC Project Grant (grant 1166023). Research at the Murdoch Children's Research Institute is supported by the Victorian Government's Operational Infrastructure Support Program