UNLABELLED: BACKGROUND: Multiple imputation is becoming increasingly popular for handling missing data. However, it is often implemented without adequate consideration of whether it offers any advantage over complete case analysis for the research question of interest, or whether potential gains may be offset by bias from a poorly fitting imputation model, particularly as the amount of missing data increases. METHODS: Simulated datasets (n = 1000) drawn from a synthetic population were used to explore information recovery from multiple imputation in estimating the coefficient of a binary exposure variable when various proportions of data (10-90%) were set missing at random in a highly-skewed continuous covariate or in the binary exposure. ...
Although missing outcome data are an important problem in randomized trials and observational studie...
Introduction: The COVID-19 pandemic raises various challenges for clinical trials, including more mi...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Abstract Background Multiple imputation is frequently...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Background: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
BACKGROUND: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
BACKGROUND: Multiple imputation is a popular approach to handling missing data in medical research, ...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Although missing outcome data are an important problem in randomized trials and observational studie...
Introduction: The COVID-19 pandemic raises various challenges for clinical trials, including more mi...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...
Abstract Background Multiple imputation is frequently...
The use of multiple imputation has increased markedly in recent years, and journal reviewers may exp...
Missing data are a common problem in organizational research. Missing data can occur due to attritio...
Despite a well-designed and controlled study, missing values are consistently present inresearch. It...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
When exploring missing data techniques in a realistic scenario, the current literature is limited: m...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Background: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
BACKGROUND: Missing data often cause problems in longitudinal cohort studies with repeated follow-up...
BACKGROUND: Multiple imputation is a popular approach to handling missing data in medical research, ...
Multiple imputation has entered mainstream practice for the analysis of incomplete data. We have use...
Although missing outcome data are an important problem in randomized trials and observational studie...
Introduction: The COVID-19 pandemic raises various challenges for clinical trials, including more mi...
Missing data is common in real-world studies and can create issues in statistical inference. Discard...