Spatial Dynamics of Environmental Health: The Impact of Vegetation Greenness and Heat Exposure on Mental Health Outcomes Across California Census Tracts
Abstract
This study examines spatial relationships between environmental factors, socioeconomicconditions, and mental health across California census tracts using a Spatial Durbin Error Model.
Analysis of 7,963 tracts revealed significant spatial autocorrelation in mental health distress
(Moran's I = 0.4713, p < 0.001). Median household income was the strongest predictor of mental
health distress (direct effect: β = -0.0000489, p < 0.001; indirect effect: β = -0.0000193, p <
0.001). Vegetation greenness showed a significant protective direct effect (β = -3.8818, p <
0.001) without significant spillover effects, indicating localized benefits. Conversely, maximum
temperature demonstrated no significant direct effect but had significant positive indirect effects
(β = 0.1022, p = 0.0016), suggesting regional rather than local influence. The substantial spatial
error parameter (λ = 0.73511) and strong spatial autocorrelation in both vegetation (r = 0.820)
and temperature (r = 0.992) validate the spatial modeling approach. These findings enhance
understanding of how environmental factors influence mental health through different spatial
mechanisms and inform targeted intervention strategies addressing both socioeconomic and
environmental determinants of health.
Description
Thesis (Master's)--University of Washington, 2025
