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Centralizing environmental datasets to support (inter)national chronic disease research: Values, challenges, and recommendations.

作者信息

Brook Jeffrey R, Doiron Dany, Setton Eleanor, Lakerveld Jeroen

机构信息

Department of Chemical Engineering and Applied Chemistry, Southern Ontario Centre for Atmospheric Aerosol Research, University of Toronto, Toronto, Ontario, Canada.

Dalla Lana School of Public Health, University of Toronto, Toronto, Ontario, Canada.

出版信息

Environ Epidemiol. 2021 Jan 25;5(1):e129. doi: 10.1097/EE9.0000000000000129. eCollection 2021 Feb.


DOI:10.1097/EE9.0000000000000129
PMID:33778361
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7939427/
Abstract

UNLABELLED: Whereas environmental data are increasingly available, it is often not clear how or if datasets are available for health research. Exposure metrics are typically developed for specific research initiatives using disparate exposure assessment methods and no mechanisms are put in place for centralizing, archiving, or distributing environmental datasets. In parallel, potentially vast amounts of environmental data are emerging due to new technologies such as high resolution imagery and machine learning. OBJECTIVES: The Canadian Urban Environmental Health Research Consortium (CANUE) and the Geoscience and Health Cohort Consortium (GECCO) provide a proof of concept that centralizing and disseminating environmental data for health research is valuable and can accelerate discovery. In this essay, we argue that more efficient use of exposure data for environmental epidemiological research over the next decade requires progress in four key areas: metadata and data access portals, linkage with health databases, harmonization of exposure measures and models over large areas, and leveraging "big data" streams for exposure characterization and evaluation of temporal changes. DISCUSSION: Optimizing the use of existing environmental data and exploiting emerging data streams can provide unprecedented research opportunities in environmental epidemiology through a better characterization of individuals' exposures and the ability to study the intersecting impacts of multiple environmental features or urban attributes across different populations around the world. Proper documentation, linkage, and dissemination of new and emerging exposure data leads to a better awareness of data availability, a reduction of duplication of effort and increases research output.

摘要

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本文引用的文献

[1]
Long-term low-level ambient air pollution exposure and risk of lung cancer - A pooled analysis of 7 European cohorts.

Environ Int. 2021-1

[2]
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Int J Health Geogr. 2020-11-13

[3]
Aircraft noise control policy and mental health: a natural experiment based on the Longitudinal Aging Study Amsterdam (LASA).

J Epidemiol Community Health. 2021-5

[4]
Urban Air Pollution May Enhance COVID-19 Case-Fatality and Mortality Rates in the United States.

Innovation (Camb). 2020-11-25

[5]
An ecological analysis of long-term exposure to PM and incidence of COVID-19 in Canadian health regions.

Environ Res. 2020-8-26

[6]
Evaluating the impact of long-term exposure to fine particulate matter on mortality among the elderly.

Sci Adv. 2020-7-17

[7]
Healthy built environment: Spatial patterns and relationships of multiple exposures and deprivation in Toronto, Montreal and Vancouver.

Environ Int. 2020-10

[8]
Early life exposure to air pollution and incidence of childhood asthma, allergic rhinitis and eczema.

Eur Respir J. 2020-2

[9]
Examining the Shape of the Association between Low Levels of Fine Particulate Matter and Mortality across Three Cycles of the Canadian Census Health and Environment Cohort.

Environ Health Perspect. 2019-10-22

[10]
Complex relationships between greenness, air pollution, and mortality in a population-based Canadian cohort.

Environ Int. 2019-5-7

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