Analyzing recurrent events when the history of previous episodes is unknown or not taken into account: proceed with caution

Albert Navarro*, Georgina Casanovas, Sergio Alvarado, David Moriña

*Autor corresponent d’aquest treball

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Resum

© 2016 SESPAS Objective Researchers in public health are often interested in examining the effect of several exposures on the incidence of a recurrent event. The aim of the present study is to assess how well the common-baseline hazard models perform to estimate the effect of multiple exposures on the hazard of presenting an episode of a recurrent event, in presence of event dependence and when the history of prior-episodes is unknown or is not taken into account. Methods Through a comprehensive simulation study, using specific-baseline hazard models as the reference, we evaluate the performance of common-baseline hazard models by means of several criteria: bias, mean squared error, coverage, confidence intervals mean length and compliance with the assumption of proportional hazards. Results Results indicate that the bias worsen as event dependence increases, leading to a considerable overestimation of the exposure effect; coverage levels and compliance with the proportional hazards assumption are low or extremely low, worsening with increasing event dependence, effects to be estimated, and sample sizes. Conclusions Common-baseline hazard models cannot be recommended when we analyse recurrent events in the presence of event dependence. It is important to have access to the history of prior-episodes per subject, it can permit to obtain better estimations of the effects of the exposures
Idioma originalAnglès
Pàgines (de-a)227-234
RevistaGaceta Sanitaria
Volum31
Número3
DOIs
Estat de la publicacióPublicada - 1 de maig 2017

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