2015
DOI: 10.1111/biom.12358
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Handling Missing Data in Matched Case-Control Studies Using Multiple Imputation

Abstract: Summary. Analysis of matched case-control studies is often complicated by missing data on covariates. Analysis can be restricted to individuals with complete data, but this is inefficient and may be biased. Multiple imputation (MI) is an efficient and flexible alternative. We describe two MI approaches. The first uses a model for the data on an individual and includes matching variables; the second uses a model for the data on a whole matched set and avoids the need to model the matching variables. Within each… Show more

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Cited by 24 publications
(27 citation statements)
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“…Another sensitivity analysis with food records also showed high dependency of effect estimates on model assumptions regarding the covariance structure of measurement errors (2) . In addition, although MI bias reduction in comparison with complete case analysis has been corroborated in other studies (22,23) , the bias magnitude was still large in the present study. Finally, the large number of variables with considerable percentage of missing values makes MI estimates vulnerable to bias (38) .…”
Section: Discussionsupporting
confidence: 85%
“…Another sensitivity analysis with food records also showed high dependency of effect estimates on model assumptions regarding the covariance structure of measurement errors (2) . In addition, although MI bias reduction in comparison with complete case analysis has been corroborated in other studies (22,23) , the bias magnitude was still large in the present study. Finally, the large number of variables with considerable percentage of missing values makes MI estimates vulnerable to bias (38) .…”
Section: Discussionsupporting
confidence: 85%
“…The imputation thus included some of the matching variables but excluded the identifier of matched pairs, consistent with the method described by Seaman and Keogh. 14 The numbers of imputed values are shown in Table II in the online-only Data Supplement. Conditional logistic regression models were adjusted with coefficients and standard errors for the variability between imputations, according to the combination rules by Rubin.…”
Section: Multivariable Adjustment and Stratified Analysismentioning
confidence: 99%
“…We used the multiple imputation method with full conditional specification (Schafer, 1999;Scheffer, 2002;van Buuren, 2007) to manage missing covariate data. This has been reported as the most reliable method for managing missing data (Lee & Carlin, 2010;Seaman & Keogh, 2015;Welch, Bartlett, & Petersen, 2014). With this approach, several new data sets are created from original data and missing values replaced by probable values.…”
Section: Data Imputationmentioning
confidence: 99%