Multiple imputation (MI) has become popular for analyses with missing data in medical research. The standard implementation of MI is based on the assumption of data being missing at random (MAR). However, for missing data generated by missing not at random mechanisms, MI performed assuming MAR might not be satisfactory. For an incomplete variable in a given data set, its corresponding population marginal distribution might also be available in an external data source. We show how this information can be readily utilised in the imputation model to calibrate inference to the population by incorporating an appropriately calculated offset termed the "calibrated-δ adjustment." We describe the derivation of this offset from the population distrib...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
ABSTRACT Background Ethnicity is an important factor to be considered in health research because ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
Abstract Background Incomplete categorical variables with more than two categories are common in pub...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Multiple imputation (MI) has become popular for analyses with missing data in medical research. The ...
Multiple imputation (MI) is increasingly used for handling missing data in medical research. The sta...
ABSTRACT Background Ethnicity is an important factor to be considered in health research because ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
Missing data is a common occurrence in clinical research. Missing data occurs when the value of the ...
Abstract Background Incomplete categorical variables with more than two categories are common in pub...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
A practical guide to analysing partially observed data. Collecting, analysing and drawing inference...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Following the seminal publications of Rubin about thirty years ago, statisticians have become increa...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
In many observational studies, analysts estimate causal effects using propensity score matching. Est...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...