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Meta-analysis of test accuracy studies using imputation for partial reporting of multiple thresholds
- Source :
- Research Synthesis Methods
- Publication Year :
- 2018
- Publisher :
- Wiley, 2018.
-
Abstract
- Introduction For tests reporting continuous results, primary studies usually provide test performance at multiple but often different thresholds. This creates missing data when performing a meta-analysis at each threshold. A standard meta-analysis (no imputation [NI]) ignores such missing data. A single imputation (SI) approach was recently proposed to recover missing threshold results. Here, we propose a new method that performs multiple imputation of the missing threshold results using discrete combinations (MIDC). Methods The new MIDC method imputes missing threshold results by randomly selecting from the set of all possible discrete combinations which lie between the results for 2 known bounding thresholds. Imputed and observed results are then synthesised at each threshold. This is repeated multiple times, and the multiple pooled results at each threshold are combined using Rubin's rules to give final estimates. We compared the NI, SI, and MIDC approaches via simulation. Results Both imputation methods outperform the NI method in simulations. There was generally little difference in the SI and MIDC methods, but the latter was noticeably better in terms of estimating the between-study variances and generally gave better coverage, due to slightly larger standard errors of pooled estimates. Given selective reporting of thresholds, the imputation methods also reduced bias in the summary receiver operating characteristic curve. Simulations demonstrate the imputation methods rely on an equal threshold spacing assumption. A real example is presented. Conclusions The SI and, in particular, MIDC methods can be used to examine the impact of missing threshold results in meta-analysis of test accuracy studies.
- Subjects :
- Research methodology
imputation
01 natural sciences
Sensitivity and Specificity
Education
010104 statistics & probability
03 medical and health sciences
0302 clinical medicine
Bias
Meta-Analysis as Topic
Bounding overwatch
Statistics
Prevalence
Humans
Computer Simulation
False Positive Reactions
030212 general & internal medicine
Imputation (statistics)
0101 mathematics
Research Articles
Mathematics
publication bias
multiple thresholds
Models, Statistical
Receiver operating characteristic
R735
Missing data
R1
diagnostic test accuracy
Standard error
ROC Curve
meta‐analysis
Meta-analysis
Sample Size
Linear Models
Test performance
Algorithms
Software
Research Article
Subjects
Details
- Language :
- English
- ISSN :
- 17592887
- Database :
- OpenAIRE
- Journal :
- Research Synthesis Methods
- Accession number :
- edsair.doi.dedup.....2ebed808c798962edd893ceba6d51224