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- Predicting Intra-Urban Variation in Air Pollution Concentrations with Complex Spatio-Temporal Interactions
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- Abstract:
- We describe a methodology for assigning individual estimates of long-term average air pollution
concentrations that accounts for a complex spatio-temporal correlation structure and can
accommodate unbalanced observations. This methodology has been developed as part of the
Multi-Ethnic Study of Atherosclerosis and Air Pollution (MESA Air), a prospective cohort study
funded by the U.S. EPA to investigate the relationship between chronic exposure to air pollution
and cardiovascular disease. Our hierarchical model decomposes the space-time field into
a “mean” that includes dependence on covariates and spatially varying seasonal and long-term
trends and a “residual” that accounts for spatially correlated deviations from the mean model.
The model accommodates complex spatio-temporal patterns by characterizing the temporal
trend at each location as a linear combination of empirically derived temporal basis functions,
and embedding the spatial fields of coefficients for the basis functions in separate linear regression
models with spatially correlated residuals (universal kriging). This approach allows us to
implement a scalable single-stage estimation procedure that easily accommodates a significant
number of missing observations at some monitoring locations. We apply the model to predict
long-term average concentrations of oxides of nitrogen (NOx) from 2005-2007 in the Los Angeles
area, based on data from 18 EPA Air Quality System regulatory monitors. The cross-validated
R2 is 0.67. The MESA Air study is also collecting additional concentration data as part of
a supplementary monitoring campaign. We describe the sampling plan and demonstrate in a
simulation study that the additional data will contribute to improved predictions of long-term
average concentrations.
- Subject Area:
- Statistical Models
- Suggested Citation:
- Adam A. Szpiro, Paul D. Sampson, Lianne Sheppard, Thomas Lumley, Sara D. Adar, and Joel Kaufman,
"Predicting Intra-Urban Variation in Air Pollution Concentrations with Complex Spatio-Temporal Interactions"
(November 20, 2008).
UW Biostatistics Working Paper Series.
Working Paper 337.
http://www.bepress.com/uwbiostat/paper337