BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates more than one function of a variable, it is not obvious how best to impute missing values in these covariates. Consider a regression with outcome Y and covariates X and X2. In 'passive imputation' a value X* is imputed for X and then X2 is imputed as (X*)2. A recent proposal is to treat X2 as 'just another variable' (JAV) and impute X and X2 under multivariate normality. METHODS: We use simulation to investigate the performance of three methods that can easily be implemented in standard software: 1) linear regression of X on Y to impute X then passive imputation of X2; 2) the same regression but with predictive mean matching (PMM); and 3) JAV...
Abstract Background Multiple imputation is frequently...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
Missing data occur in many types of studies and typically complicate the analysis. Multiple imputati...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Abstract Background Multiple imputation is often used for missing data. When a model contains as cov...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
AbstractMultiple imputation is a popular way to handle missing data. Automated procedures are widely...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Background: Substantive model compatible multiple imputation (SMC-MI) is a relatively novel imputat...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing data continues to be one of the main problems in data analysis as it reduces sample represen...
Multivariable model-building is an important aspect of statistical analyses and should be given care...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
Abstract Background Multiple imputation is frequently...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
Missing data occur in many types of studies and typically complicate the analysis. Multiple imputati...
BACKGROUND: Multiple imputation is often used for missing data. When a model contains as covariates ...
Abstract Background Multiple imputation is often used for missing data. When a model contains as cov...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Baseline covariates in randomized experiments are often used in the estimation of treatment effects,...
AbstractMultiple imputation is a popular way to handle missing data. Automated procedures are widely...
Multiple imputation is a commonly used approach to deal with missing values. In this approach, an im...
Background: Substantive model compatible multiple imputation (SMC-MI) is a relatively novel imputat...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
Missing data continues to be one of the main problems in data analysis as it reduces sample represen...
Multivariable model-building is an important aspect of statistical analyses and should be given care...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
Abstract Background Multiple imputation is frequently...
Sample selection arises when the outcome of interest is partially observed in a study. Although soph...
Missing data occur in many types of studies and typically complicate the analysis. Multiple imputati...