An approach for jointly modeling multivariate longitudinal measurements and discrete time-to-event data
Paul S. Albert, Joanna H. Shih

TL;DR
This paper introduces a regression calibration method for jointly modeling multiple longitudinal measurements and discrete time-to-event data, effectively handling informative dropout and complex multivariate relationships in medical studies.
Contribution
It proposes a novel two-stage regression calibration approach that accounts for informative dropout and models multivariate longitudinal data jointly with time-to-event outcomes.
Findings
Method performs well in simulations
Accurately estimates relationships in multivariate data
Handles informative dropout effectively
Abstract
In many medical studies, patients are followed longitudinally and interest is on assessing the relationship between longitudinal measurements and time to an event. Recently, various authors have proposed joint modeling approaches for longitudinal and time-to-event data for a single longitudinal variable. These joint modeling approaches become intractable with even a few longitudinal variables. In this paper we propose a regression calibration approach for jointly modeling multiple longitudinal measurements and discrete time-to-event data. Ideally, a two-stage modeling approach could be applied in which the multiple longitudinal measurements are modeled in the first stage and the longitudinal model is related to the time-to-event data in the second stage. Biased parameter estimation due to informative dropout makes this direct two-stage modeling approach problematic. We propose a…
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