Abstract
Background: Disparities in adverse COVID-19 health outcomes have been associated with multiple social and environmental stressors. However, research is needed to evaluate the consistency and efficiency of methods for studying these associations at local scales. Objective: To assess socioexposomic associations with COVID-19 outcomes across New Jersey and evaluate consistency of findings from multiple modeling approaches. Methods: We retrieved data for COVID-19 cases and deaths for the 565 municipalities of New Jersey up to the end of the first phase of the pandemic, and calculated mortality rates with and without long-term-care (LTC) facility deaths. We considered 84 spatially heterogeneous environmental, demographic and socioeconomic factors from publicly available databases, including air pollution, proximity to industrial sites/facilities, transportation-related noise, occupation and commuting, neighborhood and housing characteristics, age structure, racial/ethnic composition, poverty, etc. Six geostatistical models (Poisson/Negative-Binomial regression, Poison/Negative-Binomial mixed effect model, Poisson/Negative-Binomial Bersag-York-Mollie spatial model) and two Machine Learning (ML) methods (Random Forest, Extreme Gradient Boosting) were implemented to assess association patterns. The Shapley effects plot was established for explainable ML and change of support validation was introduced to compare performances of different approaches. Results: We found robust positive associations of COVID-19 mortality with historic exposures to NO2, population density, percentage of minority and below high school education, and other social and environmental factors. Exclusion of LTC deaths does not significantly affect correlations for most factors but findings can be substantially influenced by model structures and assumptions. The best performing geostatistical models involved flexible structures representing data variations. ML methods captured association patterns consistent with the best performing geostatistical models, and furthermore detected consistent nonlinear associations not captured by geostatistical models. Significance: The findings of this work improve the understanding of how social and environmental disparities impacted COVID-19 outcomes across New Jersey. (Figure presented.)
Original language | English (US) |
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Pages (from-to) | 197-207 |
Number of pages | 11 |
Journal | Journal of Exposure Science and Environmental Epidemiology |
Volume | 34 |
Issue number | 2 |
DOIs | |
State | Published - Mar 2024 |
All Science Journal Classification (ASJC) codes
- Epidemiology
- Toxicology
- Pollution
- Public Health, Environmental and Occupational Health
Keywords
- Bayesian geospatial modeling
- COVID-19
- Explainable machine learning
- Exposome and socioexposome
- Social/environmental health disparities