作者
Oya Kalaycioglu, Andrew Copas, Michael King, Rumana Z Omar
发表日期
2016/6
期刊
Journal of the Royal Statistical Society Series A: Statistics in Society
卷号
179
期号
3
页码范围
683-706
出版商
Oxford University Press
简介
Multiple-imputation (MI) methods for imputing missing data in observational health studies with repeated measurements were evaluated with particular focus on incomplete time varying explanatory variables. Standard and random-effects imputation by chained equations, multivariate normal imputation and Bayesian MI were compared regarding bias and efficiency of regression coefficient estimates by using simulation studies. Flexibility of the methods in handling different types of variables (binary, categorical, skewed and normally distributed) and correlations between the repeated measurements of the incomplete variables were also compared. Multivariate normal imputation produced the least bias in most situations, is theoretically well justified and allows flexible correlation for the repeated measurements. It can be recommended for imputing continuous variables. Bayesian MI is efficient and may be …
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