Multilevel Conditional Autoregressive models for longitudinal and spatially referenced epidemiological data
Dany Djeudeu, Susanne Moebus, Katja Ickstadt

TL;DR
This paper develops and compares multilevel conditional autoregressive models for longitudinal and cross-sectional spatial epidemiological data, demonstrating improved performance in simulations and real data analysis.
Contribution
It introduces MLM tCARs for longitudinal data with time-varying spatial effects and provides a decision tree for model selection in spatial epidemiology.
Findings
MLM tCARs outperform classical models in simulations.
Restricted CAR models better handle spatial confounding.
All models show a negative association between greenness and depression.
Abstract
The classical multilevel model fails to capture the proximity effect in epidemiological studies, where subjects are nested within geographical units. Multilevel Conditional Autoregressive models are alternatives to help explain the spatial effect better. They have been developed for cross-sectional studies but not for longitudinal studies so far. This paper has two goals. Firstly, it further develops the multilevel (growth) models for longitudinal data by adding existing area level random effect terms with CAR prior specification, whose structure is changing over time. We name these models MLM tCARs for longitudinal data. We compare the developed MLM tCARs to the classical multilevel growth model via simulation studies in common spatial data situations. The results indicate the better performance of the MLM tCARs, to retrieve the true regression coefficients and with better fit in…
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