In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missing data are frequent. Bootstrap and multiple imputation are well-established resampling methods for handling skewed and missing data. However, it is not clear how these techniques should be combined. This paper addresses combining multiple imputation and bootstrap to obtain confidence intervals of the mean difference in outcome for two independent treatment groups. We assessed statistical validity and efficiency of 10 candidate methods and applied these methods to a clinical data set. Single imputation nested in the bootstrap percentile method (with added noise to reflect the uncertainty of the imputation) emerged as the method with the best s...
International audienceThis paper deals with building bootstrap tests for comparing the mean costs be...
BACKGROUND: Missing values are a frequent issue in human studies. In many situations, multiple imput...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missin...
Background. Missing data is a challenging problem in many prognostic studies. Multiple imputation (M...
Cost and effect data often have missing data because economic evaluations are frequently added onto ...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
The bootstrap and multiple imputations are two techniques that can enhance the accuracy of estimated...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
The presence of some missing outcomes in randomized studies often complicates the estimation of meas...
Missing observations are common in cluster randomised trials. The problem is exacerbated when modell...
Accepted: 31 July 2021Randomized trials involving independent and paired observations occur in many ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
Participants who drop out of studies have on average a poorer outcome than completers and therefore ...
International audienceThis paper deals with building bootstrap tests for comparing the mean costs be...
BACKGROUND: Missing values are a frequent issue in human studies. In many situations, multiple imput...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...
In healthcare cost-effectiveness analysis, probability distributions are typically skewed and missin...
Background. Missing data is a challenging problem in many prognostic studies. Multiple imputation (M...
Cost and effect data often have missing data because economic evaluations are frequently added onto ...
grantor: University of TorontoMissing data or incomplete data are very common in almost ev...
The bootstrap and multiple imputations are two techniques that can enhance the accuracy of estimated...
Longitudinal binary data are commonly encountered in clinical trials. Multiple imputation is an appr...
BACKGROUND: Missing data are potentially an extensive problem in cost-effectiveness analyses con...
The presence of some missing outcomes in randomized studies often complicates the estimation of meas...
Missing observations are common in cluster randomised trials. The problem is exacerbated when modell...
Accepted: 31 July 2021Randomized trials involving independent and paired observations occur in many ...
Background Missing data can introduce bias in the results of randomised controlled trials (RCTs), b...
Participants who drop out of studies have on average a poorer outcome than completers and therefore ...
International audienceThis paper deals with building bootstrap tests for comparing the mean costs be...
BACKGROUND: Missing values are a frequent issue in human studies. In many situations, multiple imput...
It is now widely accepted that multiple imputation (MI) methods properly handle the uncertainty of m...