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Distributed lag non-linear models with Laplacian-P-splines for analysis of spatially structured time series

Published: June 5, 2025 | arXiv ID: 2506.04814v1

By: Sara Rutten , Bryan Sumalinab , Oswaldo Gressani and more

Potential Business Impact:

Models weather's effect on health, even far away.

Business Areas:
Multi-level Marketing Sales and Marketing

Distributed lag non-linear models (DLNM) have gained popularity for modeling nonlinear lagged relationships between exposures and outcomes. When applied to spatially referenced data, these models must account for spatial dependence, a challenge that has yet to be thoroughly explored within the penalized DLNM framework. This gap is mainly due to the complex model structure and high computational demands, particularly when dealing with large spatio-temporal datasets. To address this, we propose a novel Bayesian DLNM-Laplacian-P-splines (DLNM-LPS) approach that incorporates spatial dependence using conditional autoregressive (CAR) priors, a method commonly applied in disease mapping. Our approach offers a flexible framework for capturing nonlinear associations while accounting for spatial dependence. It uses the Laplace approximation to approximate the conditional posterior distribution of the regression parameters, eliminating the need for Markov chain Monte Carlo (MCMC) sampling, often used in Bayesian inference, thus improving computational efficiency. The methodology is evaluated through simulation studies and applied to analyze the relationship between temperature and mortality in London.

Country of Origin
🇧🇪 Belgium

Page Count
35 pages

Category
Statistics:
Methodology