Incorporating prior information into distributed lag nonlinear models with zero-inflated monotone regression trees
Daniel Mork, Ander Wilson

TL;DR
This paper introduces a Bayesian tree-based framework for distributed lag nonlinear models that incorporates prior knowledge, enforces biological monotonicity, and performs lag selection, improving the analysis of environmental health data.
Contribution
It develops a novel zero-inflated tree-of-trees model with monotonicity constraints and informative priors for DLNMs, enhancing lag identification and interpretability.
Findings
Improved lag selection accuracy in simulations
Effective incorporation of prior biological knowledge
Application to temperature-mortality data in Chicago
Abstract
In environmental health research there is often interest in the effect of an exposure on a health outcome assessed on the same day and several subsequent days or lags. Distributed lag nonlinear models (DLNM) are a well-established statistical framework for estimating an exposure-lag-response function. We propose methods to allow for prior information to be incorporated into DLNMs. First, we impose a monotonicity constraint in the exposure-response at lagged time periods which matches with knowledge on how biological mechanisms respond to increased levels of exposures. Second, we introduce variable selection into the DLNM to identify lagged periods of susceptibility with respect to the outcome of interest. The variable selection approach allows for direct application of informative priors on which lags have nonzero association with the outcome. We propose a tree-of-trees model that uses…
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Taxonomy
TopicsClimate Change and Health Impacts
