REDUCED-RANK SPATIO-TEMPORAL MODELING OF AIR POLLUTION CONCENTRATIONS IN THE MULTI-ETHNIC STUDY OF ATHEROSCLEROSIS AND AIR POLLUTION

成果类型:
Article
署名作者:
Olives, Casey; Sheppard, Lianne; Lindstrom, Johan; Sampson, Paul D.; Kaufman, Joel D.; Szpiro, Adam A.
署名单位:
University of Washington; University of Washington Seattle; University of Washington; University of Washington Seattle; Lund University; University of Washington; University of Washington Seattle
刊物名称:
ANNALS OF APPLIED STATISTICS
ISSN/ISSBN:
1932-6157
DOI:
10.1214/14-AOAS786
发表日期:
2014
页码:
2509-2537
关键词:
long-term exposure mortality likelihood
摘要:
There is growing evidence in the epidemiologic literature of the relationship between air pollution and adverse health outcomes. Prediction of individual air pollution exposure in the Environmental Protection Agency (EPA) funded Multi-Ethnic Study of Atheroscelerosis and Air Pollution (MESA Air) study relies on a flexible spatio-temporal prediction model that integrates land-use regression with kriging to account for spatial dependence in pollutant concentrations. Temporal variability is captured using temporal trends estimated via modified singular value decomposition and temporally varying spatial residuals. This model utilizes monitoring data from existing regulatory networks and supplementary MESA Air monitoring data to predict concentrations for individual cohort members. In general, spatio-temporal models are limited in their efficacy for large data sets due to computational intractability. We develop reduced-rank versions of the MESA Air spatio-temporal model. To do so, we apply low-rank kriging to account for spatial variation in the mean process and discuss the limitations of this approach. As an alternative, we represent spatial variation using thin plate regression splines. We compare the performance of the outlined models using EPA and MESA Air monitoring data for predicting concentrations of oxides of nitrogen (NOx)-a pollutant of primary interest in MESA Air-in the Los Angeles metropolitan area via cross-validated R-2. Our findings suggest that use of reduced-rank models can improve computational efficiency in certain cases. Low-rank kriging and thin plate regression splines were competitive across the formulations considered, although TPRS appeared to be more robust in some settings.