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   Prediction of fine particulate matter chemical components with a spatio-temporal model for the Multi-Ethnic Study of Atherosclerosis cohort  
   
نویسنده Kim Sun-Young ,Sheppard Lianne ,Bergen Silas ,Szpiro Adam A ,Sampson Paul D ,Kaufman Joel D ,Vedal Sverre
منبع journal of exposure science and environmental epidemiology - 2016 - دوره : 26 - شماره : 5 - صفحه:520 -528
چکیده    Although cohort studies of the health effects of pm2.5 have developed exposure prediction models to represent spatial variability across participant residences, few models exist for pm2.5 components. we aimed to develop a city-specific spatio-temporal prediction approach to estimate long-term average concentrations of four pm2.5 components including sulfur, silicon, and elemental and organic carbon for the multi-ethnic study of atherosclerosis cohort, and to compare predictions to those from a national spatial model. using 2-week average measurements from a cohort-focused monitoring campaign, the spatio-temporal model employed selected geographic covariates in a universal kriging framework with the data-driven temporal trend. relying on long-term means of daily measurements from regulatory monitoring networks, the national spatial model employed dimension-reduced predictors using universal kriging. for the spatio-temporal model, the cross-validated and temporally-adjusted r2 was relatively higher for ec and oc, and in the los angeles and baltimore areas. the cross-validated r2s for both models across the six areas were reasonably high for all components except silicon. predicted long-term concentrations at participant homes from the two models were generally highly correlated across cities but poorly correlated within cities. the spatio-temporal model may be preferred for city-specific health analyses, whereas both models could be used for multi-city studies.
آدرس Seoul National University, Korea. University of Washington, Department of Environmental and Occupational Health Sciences, USA, University of Washington, Department of Environmental and Occupational Health Sciences, Department of Biostatistics, USA, University of Washington, Department of Biostatistics, USA. Winona State University, Department of Mathematics and Statistics, USA, University of Washington, Department of Biostatistics, USA, University of Washington, Department of Statistics, USA, University of Washington, Department of Environmental and Occupational Health Sciences, Department of Medicine, Department of Epidemiology, USA, University of Washington, Department of Environmental and Occupational Health Sciences, USA
 
     
   
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