Multiple imputation is a practical, principled approach to handling missing data. When used to impute missing values in covariates of regression models, imputation models may be misspecified if they are not compatible with the substantive model of interest for the outcome. In this article, we introduce the smcfcs command, which imputes covariates by substantive-model compatible fully conditional specification. This modifies the popular fully conditional specification or chained-equations approach to multiple imputation by imputing each covariate compatibly with a user-specified substantive model. We compare the smcfcs command with standard fully conditional specification imputation using mi impute chained in a simulation study and illustrat...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Abstract. Multiple imputation (MI) is a practical, principled approach to han-dling missing data. Wh...
smcfcs is an R package that implements multiple imputation of missing covariates by Substantive Mode...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The goal of multiple imputation is to provide valid inferences for statistical estimates from incomp...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
The goal ofmultiple imputation is to provide valid inferences for statistical estimates from incompl...
Multiple imputation by chained equations (MICE) has emerged as a popular approach for handling missi...
Missing data is a common issue in epidemiological databases. Among the different ways of dealing wit...
Multiple imputation using Fully Conditional Specification (FCS) implemented by the MICE algorithm as...
Missing data are a common occurrence in real datasets. For epidemiological and prognostic factors st...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
Estimating the parameters of a regression model of interest is complicated by missing data on the va...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...
Abstract. Multiple imputation (MI) is a practical, principled approach to han-dling missing data. Wh...
smcfcs is an R package that implements multiple imputation of missing covariates by Substantive Mode...
Missing covariate data commonly occur in epidemiological and clinical research, and are often dealt ...
The goal of multiple imputation is to provide valid inferences for statistical estimates from incomp...
Multiple imputation (MI) is used to handle missing at random (MAR) data. Despite warnings from stati...
The goal ofmultiple imputation is to provide valid inferences for statistical estimates from incompl...
Multiple imputation by chained equations (MICE) has emerged as a popular approach for handling missi...
Missing data is a common issue in epidemiological databases. Among the different ways of dealing wit...
Multiple imputation using Fully Conditional Specification (FCS) implemented by the MICE algorithm as...
Missing data are a common occurrence in real datasets. For epidemiological and prognostic factors st...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
Estimating the parameters of a regression model of interest is complicated by missing data on the va...
Analysis of matched case-control studies is often complicated by missing data on covariates. Analysi...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation (MI) is a commonly used approach to impute missing data. This thesis studies mis...