Toward equitable environmental exposure modeling through convergence of data, open, and citizen sciences: an example of air pollution exposure modeling amidst increasing wildfire smoke
- PMID: 40967497
- DOI: 10.1016/j.envres.2025.122881
Toward equitable environmental exposure modeling through convergence of data, open, and citizen sciences: an example of air pollution exposure modeling amidst increasing wildfire smoke
Abstract
Exposure modeling is critical in environmental epidemiology and human health but may face challenges (e.g., skewed data, unequal error, context-insensitive validation, and computational demands). Modeling decisions reflect the intended use of the models and the values that modelers prioritize. We aimed to provide a conceptual framework and machine learning (ML) modeling protocols that address these issues. With 500m-gridded hourly PM2.5 and O3 levels in Illinois before, during, and after the 2023 Canadian wildfire season as a motivating example, we conducted modeling experiments to evaluate modeling methods, guided by three domains we propose based on theories of science: 1) Data Diversity, leveraging open and citizen science data to enhance inclusivity, parsimony, and representativeness; 2) Equitable Accuracy, ensuring fairly distributed uncertainties across subpopulations; and 3) Sustainable Modeling, balancing accuracy with reducing computational demands to promote accessibility for under-resourced researchers. We found that ML with publicly available data can achieve high accuracy. Depending on methods, performance may vary substantially, even with identical input data. Large but skewed data may reduce performance. Misuse of cross-validation protocols can underestimate prediction error; although we observed R2s of ∼98 %, the modeled estimates varied significantly, indicating the need for careful model validation. By using new modeling protocols including representativeness-considered training and validation data and a new loss function, we achieved high agreement between estimates and ground-based measurements (e.g., R2 = ∼90 % for PM2.5; ∼80 % for O3), equally distributed errors across sociodemographic strata and urban-rural divides, and reduction in computation time-from several weeks or months to a few days.
Keywords: Exposure assessment; Exposure modeling; Machine learning; Preferential sampling; Uncertainty; Validation.
Copyright © 2025. Published by Elsevier Inc.
Conflict of interest statement
Declaration of competing interest The authors declare the following financial interests/personal relationships which may be considered as potential competing interests:Honghyok Kim reports financial support was provided by National Institute of Health. Chris Lim reports financial support was provided by National Institute of Health. Chris Lim reports financial support was provided by US Department of Energy Office of Science. Honghyok Kim reports financial support was provided by National Research Foundation of Korea. Honghyok Kim reports financial support was provided by National Institute of Environmental Research. Chris Lim reports financial support was provided by American Cancer Society. If there are other authors, they declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.
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