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A multiple regression imputation method with application to sensitivity analysis under intermittent missingness

Author

Listed:
  • Rolando Uranga
  • Geert Molenberghs
  • Sira Allende

Abstract

Missing data is a common problem in general applied studies, and specially in clinical trials. For implementing sensitivity analysis, several multiple imputation methods exist, like sequential imputation, which restricts to monotone missingness, and Bayesian, where the imputation and analysis models differ, entailing overestimation of variance. Also, full conditional specification provides a conditional interpretation of sensitivity parameters, requiring further calibration to get the desired marginal interpretation. We propose in this paper a multiple imputation procedure, based on a multivariate linear regression model, which keeps compatibility in sensitivity analysis under intermittent missingness, providing a marginal interpretation of the elicited parameters. Simulation studies show that the method behaves well with longitudinal data and remains robust under demanding constraints. We conclude the possibility of situations not covered by the existing methods and well suited for our proposal, which allows more efficient handling of a given multivariate linear regression structure. Its use is illustrated in a real case study, where a sensitivity analysis is accomplished.

Suggested Citation

  • Rolando Uranga & Geert Molenberghs & Sira Allende, 2022. "A multiple regression imputation method with application to sensitivity analysis under intermittent missingness," Communications in Statistics - Theory and Methods, Taylor & Francis Journals, vol. 51(15), pages 5146-5161, June.
  • Handle: RePEc:taf:lstaxx:v:51:y:2022:i:15:p:5146-5161
    DOI: 10.1080/03610926.2020.1834581
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