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SIMEX Adaptation to Correct for Misclassification in Binary Time-Varying Prescription-Based Exposures
Prescription claims have been increasingly used in drug safety and effectiveness studies to determine individual drug exposures. However, exposures based on prescriptions do not represent actual drug intake. This is known as misclassification which results in biased inference in naive analyses. We developed methods specifically tailored to correct for misclassification in the analyses of time-varying prescription-based exposures. The approach relies on a pragmatic adaptation of the misclassification simulation-extrapolation (MC-SIMEX) method. Simulation results indicate a substantial reduction bias, and this for various exposure metrics that might be of interest in different applications. In conclusion, accounting for misclassification in time-varying prescription-based exposures is challenging, but crucial to avoid biased analyses. Pragmatic methods, such as the one proposed, are a promising avenue to more appropriately account for complex types of misclassification.
Date and Time
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Additional Authors and Speakers (not including you)
Steve Ferreira Guerra
McGill University
Robert Platt
McGill University
Michal Abrahamowicz
McGill University
Language of Oral Presentation
English
Language of Visual Aids
English

Speaker

Edit Name Primary Affiliation
Steve Ferreira Guerra McGill University