Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts: mixture analysis exploration

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Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts : mixture analysis exploration. / Jin, Tingfan; Amini, Heresh; Kosheleva, Anna; Yazdi, Mahdieh Danesh; Wei, Yaguang; Castro, Edgar; Di, Qian; Shi, Liuhua; Schwartz, Joel.

I: Environmental Health, Bind 21, Nr. 1, 96, 2022.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Jin, T, Amini, H, Kosheleva, A, Yazdi, MD, Wei, Y, Castro, E, Di, Q, Shi, L & Schwartz, J 2022, 'Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts: mixture analysis exploration', Environmental Health, bind 21, nr. 1, 96. https://doi.org/10.1186/s12940-022-00907-2

APA

Jin, T., Amini, H., Kosheleva, A., Yazdi, M. D., Wei, Y., Castro, E., Di, Q., Shi, L., & Schwartz, J. (2022). Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts: mixture analysis exploration. Environmental Health, 21(1), [96]. https://doi.org/10.1186/s12940-022-00907-2

Vancouver

Jin T, Amini H, Kosheleva A, Yazdi MD, Wei Y, Castro E o.a. Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts: mixture analysis exploration. Environmental Health. 2022;21(1). 96. https://doi.org/10.1186/s12940-022-00907-2

Author

Jin, Tingfan ; Amini, Heresh ; Kosheleva, Anna ; Yazdi, Mahdieh Danesh ; Wei, Yaguang ; Castro, Edgar ; Di, Qian ; Shi, Liuhua ; Schwartz, Joel. / Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts : mixture analysis exploration. I: Environmental Health. 2022 ; Bind 21, Nr. 1.

Bibtex

@article{13e711f20a6f432b8668e73ed494f22c,
title = "Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts: mixture analysis exploration",
abstract = "Background: Numerous studies have documented PM2.5's links with adverse health outcomes. Comparatively fewer studies have evaluated specific PM2.5 components. The lack of exposure measurements and high correlation among different PM2.5 components are two limitations. Methods: We applied a novel exposure prediction model to obtain annual Census tract-level concentrations of 15 PM2.5 components (Zn, V, Si, Pb, Ni, K, Fe, Cu, Ca, Br, SO42-, NO3-, NH4+, OC, EC) in Massachusetts from 2000 to 2015, to which we matched geocoded deaths. All non-accidental mortality, cardiovascular mortality, and respiratory mortality were examined for the population aged 18 or over. Weighted quantile sum (WQS) regression models were used to examine the cumulative associations between PM2.5 components mixture and outcomes and each component's contributions to the cumulative associations. We have fit WQS models on 15 PM2.5 components and a priori identified source groups (heavy fuel oil combustion, biomass burning, crustal matter, non-tailpipe traffic source, tailpipe traffic source, secondary particles from power plants, secondary particles from agriculture, unclear source) for the 15 PM2.5 components. Total PM2.5 mass analysis and single component associations were also conducted through quasi-Poisson regression models. Results: Positive cumulative associations between the components mixture and all three outcomes were observed from the WQS models. Components with large contribution to the cumulative associations included K, OC, and Fe. Biomass burning, traffic emissions, and secondary particles from power plants were identified as important source contributing to the cumulative associations. Mortality rate ratios for cardiovascular mortality were of greater magnitude than all non-accidental mortality and respiratory mortality, which is also observed in cumulative associations estimated from WQS, total PM2.5 mass analysis, and single component associations. Conclusion: We have found positive associations between the mixture of 15 PM2.5 components and all non-accidental mortality, cardiovascular mortality, and respiratory mortality. Among these components, Fe, K, and OC have been identified as having important contribution to the cumulative associations. The WQS results also suggests potential source effects from biomass burning, traffic emissions, and secondary particles from power plants.",
keywords = "Air pollution, Particle components, Weighted quantile sum regression, 19 EUROPEAN COHORTS, PARTICULATE MATTER, AIR-POLLUTION, CARDIOVASCULAR MORTALITY, CHEMICAL-CONSTITUENTS, EPITHELIAL-CELLS, SOLUBLE METALS, FINE PARTICLES, TIME-SERIES, ADMISSIONS",
author = "Tingfan Jin and Heresh Amini and Anna Kosheleva and Yazdi, {Mahdieh Danesh} and Yaguang Wei and Edgar Castro and Qian Di and Liuhua Shi and Joel Schwartz",
year = "2022",
doi = "10.1186/s12940-022-00907-2",
language = "English",
volume = "21",
journal = "Environmental Health",
issn = "1476-069X",
publisher = "BioMed Central Ltd.",
number = "1",

}

RIS

TY - JOUR

T1 - Associations between long-term exposures to airborne PM2.5 components and mortality in Massachusetts

T2 - mixture analysis exploration

AU - Jin, Tingfan

AU - Amini, Heresh

AU - Kosheleva, Anna

AU - Yazdi, Mahdieh Danesh

AU - Wei, Yaguang

AU - Castro, Edgar

AU - Di, Qian

AU - Shi, Liuhua

AU - Schwartz, Joel

PY - 2022

Y1 - 2022

N2 - Background: Numerous studies have documented PM2.5's links with adverse health outcomes. Comparatively fewer studies have evaluated specific PM2.5 components. The lack of exposure measurements and high correlation among different PM2.5 components are two limitations. Methods: We applied a novel exposure prediction model to obtain annual Census tract-level concentrations of 15 PM2.5 components (Zn, V, Si, Pb, Ni, K, Fe, Cu, Ca, Br, SO42-, NO3-, NH4+, OC, EC) in Massachusetts from 2000 to 2015, to which we matched geocoded deaths. All non-accidental mortality, cardiovascular mortality, and respiratory mortality were examined for the population aged 18 or over. Weighted quantile sum (WQS) regression models were used to examine the cumulative associations between PM2.5 components mixture and outcomes and each component's contributions to the cumulative associations. We have fit WQS models on 15 PM2.5 components and a priori identified source groups (heavy fuel oil combustion, biomass burning, crustal matter, non-tailpipe traffic source, tailpipe traffic source, secondary particles from power plants, secondary particles from agriculture, unclear source) for the 15 PM2.5 components. Total PM2.5 mass analysis and single component associations were also conducted through quasi-Poisson regression models. Results: Positive cumulative associations between the components mixture and all three outcomes were observed from the WQS models. Components with large contribution to the cumulative associations included K, OC, and Fe. Biomass burning, traffic emissions, and secondary particles from power plants were identified as important source contributing to the cumulative associations. Mortality rate ratios for cardiovascular mortality were of greater magnitude than all non-accidental mortality and respiratory mortality, which is also observed in cumulative associations estimated from WQS, total PM2.5 mass analysis, and single component associations. Conclusion: We have found positive associations between the mixture of 15 PM2.5 components and all non-accidental mortality, cardiovascular mortality, and respiratory mortality. Among these components, Fe, K, and OC have been identified as having important contribution to the cumulative associations. The WQS results also suggests potential source effects from biomass burning, traffic emissions, and secondary particles from power plants.

AB - Background: Numerous studies have documented PM2.5's links with adverse health outcomes. Comparatively fewer studies have evaluated specific PM2.5 components. The lack of exposure measurements and high correlation among different PM2.5 components are two limitations. Methods: We applied a novel exposure prediction model to obtain annual Census tract-level concentrations of 15 PM2.5 components (Zn, V, Si, Pb, Ni, K, Fe, Cu, Ca, Br, SO42-, NO3-, NH4+, OC, EC) in Massachusetts from 2000 to 2015, to which we matched geocoded deaths. All non-accidental mortality, cardiovascular mortality, and respiratory mortality were examined for the population aged 18 or over. Weighted quantile sum (WQS) regression models were used to examine the cumulative associations between PM2.5 components mixture and outcomes and each component's contributions to the cumulative associations. We have fit WQS models on 15 PM2.5 components and a priori identified source groups (heavy fuel oil combustion, biomass burning, crustal matter, non-tailpipe traffic source, tailpipe traffic source, secondary particles from power plants, secondary particles from agriculture, unclear source) for the 15 PM2.5 components. Total PM2.5 mass analysis and single component associations were also conducted through quasi-Poisson regression models. Results: Positive cumulative associations between the components mixture and all three outcomes were observed from the WQS models. Components with large contribution to the cumulative associations included K, OC, and Fe. Biomass burning, traffic emissions, and secondary particles from power plants were identified as important source contributing to the cumulative associations. Mortality rate ratios for cardiovascular mortality were of greater magnitude than all non-accidental mortality and respiratory mortality, which is also observed in cumulative associations estimated from WQS, total PM2.5 mass analysis, and single component associations. Conclusion: We have found positive associations between the mixture of 15 PM2.5 components and all non-accidental mortality, cardiovascular mortality, and respiratory mortality. Among these components, Fe, K, and OC have been identified as having important contribution to the cumulative associations. The WQS results also suggests potential source effects from biomass burning, traffic emissions, and secondary particles from power plants.

KW - Air pollution

KW - Particle components

KW - Weighted quantile sum regression

KW - 19 EUROPEAN COHORTS

KW - PARTICULATE MATTER

KW - AIR-POLLUTION

KW - CARDIOVASCULAR MORTALITY

KW - CHEMICAL-CONSTITUENTS

KW - EPITHELIAL-CELLS

KW - SOLUBLE METALS

KW - FINE PARTICLES

KW - TIME-SERIES

KW - ADMISSIONS

U2 - 10.1186/s12940-022-00907-2

DO - 10.1186/s12940-022-00907-2

M3 - Journal article

C2 - 36221093

VL - 21

JO - Environmental Health

JF - Environmental Health

SN - 1476-069X

IS - 1

M1 - 96

ER -

ID: 322940581