학술논문

Mixed‐effects models for health care longitudinal data with an informative visiting process: A Monte Carlo simulation study.
Document Type
Article
Source
Statistica Neerlandica. Feb2020, Vol. 74 Issue 1, p5-23. 19p. 1 Chart, 3 Graphs.
Subject
*MONTE Carlo method
*ELECTRONIC health records
*MEDICAL care
*CHRONIC kidney failure
*MEDICAL research
Language
ISSN
0039-0402
Abstract
Electronic health records are being increasingly used in medical research to answer more relevant and detailed clinical questions; however, they pose new and significant methodological challenges. For instance, observation times are likely correlated with the underlying disease severity: Patients with worse conditions utilise health care more and may have worse biomarker values recorded. Traditional methods for analysing longitudinal data assume independence between observation times and disease severity; yet, with health care data, such assumptions unlikely hold. Through Monte Carlo simulation, we compare different analytical approaches proposed to account for an informative visiting process to assess whether they lead to unbiased results. Furthermore, we formalise a joint model for the observation process and the longitudinal outcome within an extended joint modelling framework. We illustrate our results using data from a pragmatic trial on enhanced care for individuals with chronic kidney disease, and we introduce user‐friendly software that can be used to fit the joint model for the observation process and a longitudinal outcome. [ABSTRACT FROM AUTHOR]