Journal article
Multiple imputation for missing data in a longitudinal cohort study: a tutorial based on a detailed case study involving imputation of missing outcome data
KJ Lee, G Roberts, LW Doyle, PJ Anderson, JB Carlin
International Journal of Social Research Methodology | Published : 2016
Abstract
Multiple imputation (MI), a two-stage process whereby missing data are imputed multiple times and the resulting estimates of the parameter(s) of interest are combined across the completed datasets, is becoming increasingly popular for handling missing data. However, MI can result in biased inference if not carried out appropriately or if the underlying assumptions are not justifiable. Despite this, there remains a scarcity of guidelines for carrying out MI. In this paper we provide a tutorial on the main issues involved in employing MI, as well as highlighting some common pitfalls and misconceptions, and areas requiring further development. When contemplating using MI we must first consider ..
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Awarded by National Health and Medical Research Council
Awarded by Centre for Research Excellence Grants
Funding Acknowledgements
This work was supported by funding from the National Health and Medical Research Council: Career Development Fellowship [ID 1053609] (KJL); Senior Research Fellowship [ID 628371] (PJA); Centre for Research Excellence Grants [IDs 546519 and 1035261]; Project Grant [ID 491246]. Research at the Murdoch Childrens Research Institute is supported by the Victorian Government's Operational Infrastructure Support Program.