Fine particulate matter (PM) is a well-established risk factor for public health. To support both health risk assessment and epidemiological studies, data are needed on spatial and temporal patterns of PM exposures. This review article surveys publicly available exposure datasets for surface PM mass concentrations over the contiguous U.S., summarizes their applications and limitations, and provides suggestions on future research needs. The complex landscape of satellite instruments, model capabilities, monitor networks, and data synthesis methods offers opportunities for research development, but would benefit from guidance for new users. Guidance is provided to access publicly available PM datasets, to explain and compare different approaches for dataset generation, and to identify sources of uncertainties associated with various types of datasets. Three main sources used to create PM exposure data are ground-based measurements (especially regulatory monitoring), satellite retrievals (especially aerosol optical depth, AOD), and atmospheric chemistry models. We find inconsistencies among several publicly available PM estimates, highlighting uncertainties in the exposure datasets that are often overlooked in health effects analyses. Major differences among PM estimates emerge from the choice of data (ground-based, satellite, and/or model), the spatiotemporal resolutions, and the algorithms used to fuse data sources.: Fine particulate matter (PM) has large impacts on human morbidity and mortality. Even though the methods for generating the PM exposure estimates have been significantly improved in recent years, there is a lack of review articles that document PM exposure datasets that are publicly available and easily accessible by the health and air quality communities. In this article, we discuss the main methods that generate PM data, compare several publicly available datasets, and show the applications of various data fusion approaches. Guidance to access and critique these datasets are provided for stakeholders in public health sectors.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC7072999 | PMC |
http://dx.doi.org/10.1080/10962247.2019.1668498 | DOI Listing |
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