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A scoping review of statistical methods for trial‐based economic evaluations: The current state of play

Author

Listed:
  • Mohamed El Alili
  • Johanna M. van Dongen
  • Jonas L. Esser
  • Martijn W. Heymans
  • Maurits W. van Tulder
  • Judith E. Bosmans

Abstract

The statistical quality of trial‐based economic evaluations is often suboptimal, while a comprehensive overview of available statistical methods is lacking. Therefore, this review summarized and critically appraised available statistical methods for trial‐based economic evaluations. A literature search was performed to identify studies on statistical methods for dealing with baseline imbalances, skewed costs and/or effects, correlated costs and effects, clustered data, longitudinal data, missing data and censoring in trial‐based economic evaluations. Data was extracted on the statistical methods described, their advantages, disadvantages, relative performance and recommendations of the study. Sixty‐eight studies were included. Of them, 27 (40%) assessed methods for baseline imbalances, 39 (57%) assessed methods for skewed costs and/or effects, 27 (40%) assessed methods for correlated costs and effects, 18 (26%) assessed methods for clustered data, 7 (10%) assessed methods for longitudinal data, 26 (38%) assessed methods for missing data and 10 (15%) assessed methods for censoring. All identified methods were narratively described. This review provides a comprehensive overview of available statistical methods for dealing with the most common statistical complexities in trial‐based economic evaluations. Herewith, it can provide valuable input for researchers when deciding which statistical methods to use in a trial‐based economic evaluation.

Suggested Citation

  • Mohamed El Alili & Johanna M. van Dongen & Jonas L. Esser & Martijn W. Heymans & Maurits W. van Tulder & Judith E. Bosmans, 2022. "A scoping review of statistical methods for trial‐based economic evaluations: The current state of play," Health Economics, John Wiley & Sons, Ltd., vol. 31(12), pages 2680-2699, December.
  • Handle: RePEc:wly:hlthec:v:31:y:2022:i:12:p:2680-2699
    DOI: 10.1002/hec.4603
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