TitleLand use regression models to assess air pollution exposure in Mexico City using finer spatial and temporal input parameters.
Publication TypeJournal Article
Year of Publication2018
AuthorsSon, Y, Osornio-Vargas, ÁR, O'Neill, MS, Hystad, P, Texcalac-Sangrador, JL, Ohman-Strickland, P, Meng, Q, Schwander, S
JournalSci Total Environ
Date Published10/2018

The Mexico City Metropolitan Area (MCMA) is one of the largest and most populated urban environments in the world and experiences high air pollution levels. To develop models that estimate pollutant concentrations at fine spatiotemporal scales and provide improved air pollution exposure assessments for health studies in Mexico City. We developed finer spatiotemporal land use regression (LUR) models for PM, PM, O, NO, CO and SO using mixed effect models with the Least Absolute Shrinkage and Selection Operator (LASSO). Hourly traffic density was included as a temporal variable besides meteorological and holiday variables. Models of hourly, daily, monthly, 6-monthly and annual averages were developed and evaluated using traditional and novel indices. The developed spatiotemporal LUR models yielded predicted concentrations with good spatial and temporal agreements with measured pollutant levels except for the hourly PM, PM and SO. Most of the LUR models met performance goals based on the standardized indices. LUR models with temporal scales greater than one hour were successfully developed using mixed effect models with LASSO and showed superior model performance compared to earlier LUR models, especially for time scales of a day or longer. The newly developed LUR models will be further refined with ongoing Mexico City air pollution sampling campaigns to improve personal exposure assessments.

Alternate JournalSci. Total Environ.
PubMed ID29778680