When and how should multiple imputation be used for handling missing data in randomised clinical trials – a practical guide with flowcharts
Rigshospitalet · Copenhagen University Hospital
Abstract
Missing data may seriously compromise inferences from randomised clinical trials, especially if missing data are not handled appropriately. The potential bias due to missing data depends on the mechanism causing the data to be missing, and the analytical methods applied to amend the missingness. Therefore, the analysis of trial data with missing values requires careful planning and attention.
The authors had several meetings and discussions considering optimal ways of handling missing data to minimise the bias potential. We also searched PubMed (key words: missing data; randomi*; statistical analysis) and reference lists of known studies for papers (theoretical papers; empirical studies; simulation studies; etc.) on how to deal with missing data when analysing randomised clinical trials.
Citation impact
- FWCI
- 75.44
- Percentile
- 100%
- References
- 29
Authors
4Topics & keywords
- Missing data
- Imputation (statistics)
- Computer science
- Flowchart
- Data mining
- Clinical trial
- Statistics
- Medicine