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Published in: European Journal of Epidemiology 1/2017

01-01-2017 | METHODS

Multiple imputation of cognitive performance as a repeatedly measured outcome

Authors: Andreea Monica Rawlings, Yingying Sang, Albert Richey Sharrett, Josef Coresh, Michael Griswold, Anna Maria Kucharska-Newton, Priya Palta, Lisa Miller Wruck, Alden Lawrence Gross, Jennifer Anne Deal, Melinda Carolyn Power, Karen Jean Bandeen-Roche

Published in: European Journal of Epidemiology | Issue 1/2017

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Abstract

Longitudinal studies of cognitive performance are sensitive to dropout, as participants experiencing cognitive deficits are less likely to attend study visits, which may bias estimated associations between exposures of interest and cognitive decline. Multiple imputation is a powerful tool for handling missing data, however its use for missing cognitive outcome measures in longitudinal analyses remains limited. We use multiple imputation by chained equations (MICE) to impute cognitive performance scores of participants who did not attend the 2011–2013 exam of the Atherosclerosis Risk in Communities Study. We examined the validity of imputed scores using observed and simulated data under varying assumptions. We examined differences in the estimated association between diabetes at baseline and 20-year cognitive decline with and without imputed values. Lastly, we discuss how different analytic methods (mixed models and models fit using generalized estimate equations) and choice of for whom to impute result in different estimands. Validation using observed data showed MICE produced unbiased imputations. Simulations showed a substantial reduction in the bias of the 20-year association between diabetes and cognitive decline comparing MICE (3–4 % bias) to analyses of available data only (16–23 % bias) in a construct where missingness was strongly informative but realistic. Associations between diabetes and 20-year cognitive decline were substantially stronger with MICE than in available-case analyses. Our study suggests when informative data are available for non-examined participants, MICE can be an effective tool for imputing cognitive performance and improving assessment of cognitive decline, though careful thought should be given to target imputation population and analytic model chosen, as they may yield different estimands.
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Metadata
Title
Multiple imputation of cognitive performance as a repeatedly measured outcome
Authors
Andreea Monica Rawlings
Yingying Sang
Albert Richey Sharrett
Josef Coresh
Michael Griswold
Anna Maria Kucharska-Newton
Priya Palta
Lisa Miller Wruck
Alden Lawrence Gross
Jennifer Anne Deal
Melinda Carolyn Power
Karen Jean Bandeen-Roche
Publication date
01-01-2017
Publisher
Springer Netherlands
Published in
European Journal of Epidemiology / Issue 1/2017
Print ISSN: 0393-2990
Electronic ISSN: 1573-7284
DOI
https://doi.org/10.1007/s10654-016-0197-8

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