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Is using multiple imputation better than complete case analysis for estimating a prevalence (risk) difference in randomized controlled trials when binary outcome observations are missing?
- Source :
- Trials
- Publisher :
- Springer Nature
-
Abstract
- Background Missing outcomes can seriously impair the ability to make correct inferences from randomized controlled trials (RCTs). Complete case (CC) analysis is commonly used, but it reduces sample size and is perceived to lead to reduced statistical efficiency of estimates while increasing the potential for bias. As multiple imputation (MI) methods preserve sample size, they are generally viewed as the preferred analytical approach. We examined this assumption, comparing the performance of CC and MI methods to determine risk difference (RD) estimates in the presence of missing binary outcomes. We conducted simulation studies of 5000 simulated data sets with 50 imputations of RCTs with one primary follow-up endpoint at different underlying levels of RD (3–25 %) and missing outcomes (5–30 %). Results For missing at random (MAR) or missing completely at random (MCAR) outcomes, CC method estimates generally remained unbiased and achieved precision similar to or better than MI methods, and high statistical coverage. Missing not at random (MNAR) scenarios yielded invalid inferences with both methods. Effect size estimate bias was reduced in MI methods by always including group membership even if this was unrelated to missingness. Surprisingly, under MAR and MCAR conditions in the assessed scenarios, MI offered no statistical advantage over CC methods. Conclusions While MI must inherently accompany CC methods for intention-to-treat analyses, these findings endorse CC methods for per protocol risk difference analyses in these conditions. These findings provide an argument for the use of the CC approach to always complement MI analyses, with the usual caveat that the validity of the mechanism for missingness be thoroughly discussed. More importantly, researchers should strive to collect as much data as possible.
- Subjects :
- Risk
Risk difference
Medicine (miscellaneous)
01 natural sciences
law.invention
Missing binary outcome
010104 statistics & probability
03 medical and health sciences
0302 clinical medicine
Randomized controlled trial
Bias
law
Statistics
Medicine
Humans
Pharmacology (medical)
030212 general & internal medicine
0101 mathematics
Randomized Controlled Trials as Topic
Protocol (science)
Missing completely at random
business.industry
Data Collection
Absolute risk reduction
Methodology
Missing not at random
Reproducibility of Results
Missing data
Missing at random
Efficiency
Complete case analysis
Sample size determination
Data Interpretation, Statistical
Sample Size
Multiple imputation
business
Case analysis
Subjects
Details
- Language :
- English
- ISSN :
- 17456215
- Volume :
- 17
- Issue :
- 1
- Database :
- OpenAIRE
- Journal :
- Trials
- Accession number :
- edsair.doi.dedup.....0727560c9d5402fcbd99726bbbfeb83f
- Full Text :
- https://doi.org/10.1186/s13063-016-1473-3