EcoSta 2022: Start Registration
View Submission - EcoSta2022
A0506
Title: Efficiency loss with binary pre-processing of continuous monitoring data Authors:  Elizabeth Juarez-Colunga Juarez-Colunga - University of Colorado Anschutz Medical Campus (United States) [presenting]
Paula Langner - University of Colorado Anschutz Medical Campus (United States)
Abstract: In studies with a repeatedly measured recurrent event outcome, events may be captured as counts during subsequent intervals or follow-up times either by design or for ease of analysis. In many cases, recurrent events may be further coarsened such that only an indicator of one or more events in an interval is observed at the follow-up time, resulting in a loss of information relative to a record of all events. We examine efficiency loss when coarsening longitudinally observed counts to binary indicators and aspects of the design which impact the ability to estimate a treatment effect of interest. The investigation is motivated by a study of patients with Cardiac Implantable Electronic Devices (CIEDs) in which investigators aimed to examine the effect of treatment on events detected by the devices over time. In order to study components of such a recurrent event process impacted by data coarsening, we derive the asymptotic relative efficiency (ARE) of a treatment effect estimator utilizing a count outcome, which represents a longitudinal recurrent event process, relative to a coarsened binary outcome. We compare the efficiencies and consider conditions where the binary process maintains good efficiency in estimating a treatment effect.