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G-computation and doubly robust standardisation for continuous-time data: A comparison with inverse probability weighting.

Arthur ChattonFlorent Le BorgneClemence LeyratYohann Foucher
Published in: Statistical methods in medical research (2021)
In time-to-event settings, g-computation and doubly robust estimators are based on discrete-time data. However, many biological processes are evolving continuously over time. In this paper, we extend the g-computation and the doubly robust standardisation procedures to a continuous-time context. We compare their performance to the well-known inverse-probability-weighting estimator for the estimation of the hazard ratio and restricted mean survival times difference, using a simulation study. Under a correct model specification, all methods are unbiased, but g-computation and the doubly robust standardisation are more efficient than inverse-probability-weighting. We also analyse two real-world datasets to illustrate the practical implementation of these approaches. We have updated the R package RISCA to facilitate the use of these methods and their dissemination.
Keyphrases
  • electronic health record
  • big data
  • healthcare
  • primary care
  • machine learning
  • quality improvement