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A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States

Exposure to traffic-related air pollutants (TRAPs) has been associated with numerous adverse health effects. TRAP concentrations are highest meters away from major roads, and disproportionately affect minority (i.e., non-white) populations often considered the most vulnerable to TRAP exposure. To de...

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Detalles Bibliográficos
Autores principales: Valencia, Alejandro, Serre, Marc, Arunachalam, Saravanan
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10234552/
https://www.ncbi.nlm.nih.gov/pubmed/37262039
http://dx.doi.org/10.1371/journal.pone.0286406
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author Valencia, Alejandro
Serre, Marc
Arunachalam, Saravanan
author_facet Valencia, Alejandro
Serre, Marc
Arunachalam, Saravanan
author_sort Valencia, Alejandro
collection PubMed
description Exposure to traffic-related air pollutants (TRAPs) has been associated with numerous adverse health effects. TRAP concentrations are highest meters away from major roads, and disproportionately affect minority (i.e., non-white) populations often considered the most vulnerable to TRAP exposure. To demonstrate an improved assessment of on-road emissions and to quantify exposure inequity in this population, we develop and apply a hybrid data fusion approach that utilizes the combined strength of air quality observations and regional/local scale models to estimate air pollution exposures at census block resolution for the entire U.S. We use the regional photochemical grid model CMAQ (Community Multiscale Air Quality) to predict the spatiotemporal impacts at local/regional scales, and the local scale dispersion model, R-LINE (Research LINE source) to estimate concentrations that capture the sharp TRAP gradients from roads. We further apply the Regionalized Air quality Model Performance (RAMP) Hybrid data fusion technique to consider the model’s nonhomogeneous, nonlinear performance to not only improve exposure estimates, but also achieve significant model performance improvement. With a R(2) of 0.51 for PM(2.5) and 0.81 for NO(2), the RAMP hybrid method improved R(2) by ~0.2 for both pollutants (an increase of up to ~70% for PM(2.5) and ~31% NO(2)). Using the RAMP Hybrid method, we estimate 264,516 [95% confidence interval [CI], 223,506–307,577] premature deaths attributable to PM(2.5) from all sources, a ~1% overall decrease in CMAQ-estimated premature mortality compared to RAMP Hybrid, despite increases and decreases in some locations. For NO(2), RAMP Hybrid estimates 138,550 [69,275–207,826] premature deaths, a ~19% increase (22,576 [11,288 – 33,864]) compared to CMAQ. Finally, using our RAMP hybrid method to estimate exposure inequity across the U.S., we estimate that Minorities within 100 m from major roads are exposed to up to 15% more PM(2.5) and up to 35% more NO(2) than their White counterparts.
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spelling pubmed-102345522023-06-02 A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States Valencia, Alejandro Serre, Marc Arunachalam, Saravanan PLoS One Research Article Exposure to traffic-related air pollutants (TRAPs) has been associated with numerous adverse health effects. TRAP concentrations are highest meters away from major roads, and disproportionately affect minority (i.e., non-white) populations often considered the most vulnerable to TRAP exposure. To demonstrate an improved assessment of on-road emissions and to quantify exposure inequity in this population, we develop and apply a hybrid data fusion approach that utilizes the combined strength of air quality observations and regional/local scale models to estimate air pollution exposures at census block resolution for the entire U.S. We use the regional photochemical grid model CMAQ (Community Multiscale Air Quality) to predict the spatiotemporal impacts at local/regional scales, and the local scale dispersion model, R-LINE (Research LINE source) to estimate concentrations that capture the sharp TRAP gradients from roads. We further apply the Regionalized Air quality Model Performance (RAMP) Hybrid data fusion technique to consider the model’s nonhomogeneous, nonlinear performance to not only improve exposure estimates, but also achieve significant model performance improvement. With a R(2) of 0.51 for PM(2.5) and 0.81 for NO(2), the RAMP hybrid method improved R(2) by ~0.2 for both pollutants (an increase of up to ~70% for PM(2.5) and ~31% NO(2)). Using the RAMP Hybrid method, we estimate 264,516 [95% confidence interval [CI], 223,506–307,577] premature deaths attributable to PM(2.5) from all sources, a ~1% overall decrease in CMAQ-estimated premature mortality compared to RAMP Hybrid, despite increases and decreases in some locations. For NO(2), RAMP Hybrid estimates 138,550 [69,275–207,826] premature deaths, a ~19% increase (22,576 [11,288 – 33,864]) compared to CMAQ. Finally, using our RAMP hybrid method to estimate exposure inequity across the U.S., we estimate that Minorities within 100 m from major roads are exposed to up to 15% more PM(2.5) and up to 35% more NO(2) than their White counterparts. Public Library of Science 2023-06-01 /pmc/articles/PMC10234552/ /pubmed/37262039 http://dx.doi.org/10.1371/journal.pone.0286406 Text en © 2023 Valencia et al https://creativecommons.org/licenses/by/4.0/This is an open access article distributed under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Valencia, Alejandro
Serre, Marc
Arunachalam, Saravanan
A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title_full A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title_fullStr A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title_full_unstemmed A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title_short A hyperlocal hybrid data fusion near-road PM(2.5) and NO(2) annual risk and environmental justice assessment across the United States
title_sort hyperlocal hybrid data fusion near-road pm(2.5) and no(2) annual risk and environmental justice assessment across the united states
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10234552/
https://www.ncbi.nlm.nih.gov/pubmed/37262039
http://dx.doi.org/10.1371/journal.pone.0286406
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