| Literature DB >> 25885116 |
Maryam Shekarrizfard1, Marie-France Valois2, Mark S Goldberg3, Dan Crouse4, Nancy Ross5, Marie-Elise Parent6, Shamsunnahar Yasmin7, Marianne Hatzopoulou8.
Abstract
In two earlier case-control studies conducted in Montreal, nitrogen dioxide (NO2), a marker for traffic-related air pollution was found to be associated with the incidence of postmenopausal breast cancer and prostate cancer. These studies relied on a land use regression model (LUR) for NO2 that is commonly used in epidemiologic studies for deriving estimates of traffic-related air pollution. Here, we investigate the use of a transportation model developed during the summer season to generate a measure of traffic emissions as an alternative to the LUR model. Our traffic model provides estimates of emissions of nitrogen oxides (NOx) at the level of individual roads, as does the LUR model. Our main objective was to compare the distribution of the spatial estimates of NOx computed from our transportation model to the distribution obtained from the LUR model. A secondary objective was to compare estimates of risk using these two exposure estimates. We observed that the correlation (spearman) between our two measures of exposure (NO2 and NOx) ranged from less than 0.3 to more than 0.9 across Montreal neighborhoods. The most important factor affecting the "agreement" between the two measures in a specific area was found to be the length of roads. Areas affected by a high level of traffic-related air pollution had a far better agreement between the two exposure measures. A comparison of odds ratios (ORs) obtained from NO2 and NOx used in two case-control studies of breast and prostate cancer, showed that the differences between the ORs associated with NO2 exposure vs NOx exposure differed by 5.2-8.8%.Entities:
Keywords: Air pollution; Land-use regression; MOVES; Traffic-related emissions; Trip-level NO(x) emissions
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Year: 2015 PMID: 25885116 DOI: 10.1016/j.envres.2015.04.002
Source DB: PubMed Journal: Environ Res ISSN: 0013-9351 Impact factor: 6.498