| Literature DB >> 25599634 |
David J Lary1, Fazlay S Faruque, Nabin Malakar, Alex Moore, Bryan Roscoe, Zachary L Adams, York Eggelston.
Abstract
With the increasing awareness of the health impacts of particulate matter, there is a growing need to comprehend the spatial and temporal variations of the global abundance of ground level airborne particulate matter with a diameter of 2.5 microns or less (PM2.5). Here we use a suite of remote sensing and meteorological data products together with ground-based observations of particulate matter from 8,329 measurement sites in 55 countries taken 1997-2014 to train a machine-learning algorithm to estimate the daily distributions of PM2.5 from 1997 to the present. In this first paper of a series, we present the methodology and global average results from this period and demonstrate that the new PM2.5 data product can reliably represent global observations of PM2.5 for epidemiological studies.Mesh:
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Year: 2014 PMID: 25599634 DOI: 10.4081/gh.2014.292
Source DB: PubMed Journal: Geospat Health ISSN: 1827-1987 Impact factor: 1.212