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Consequences of kriging and land use regression for PM2.5 predictions in epidemiologic analyses: insights into spatial variability using high-resolution satellite data
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نویسنده
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Alexeeff Stacey E ,Schwartz Joel ,Kloog Itai ,Chudnovsky Alexandra ,Koutrakis Petros ,Coull Brent A
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منبع
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journal of exposure science and environmental epidemiology - 2015 - دوره : 25 - شماره : 2 - صفحه:138 -144
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چکیده
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Many epidemiological studies use predicted air pollution exposures as surrogates for true air pollution levels. these predicted exposures contain exposure measurement error, yet simulation studies have typically found negligible bias in resulting health effect estimates. however, previous studies typically assumed a statistical spatial model for air pollution exposure, which may be oversimplified. we address this shortcoming by assuming a realistic, complex exposure surface derived from fine-scale (1 km × 1 km) remote-sensing satellite data. using simulation, we evaluate the accuracy of epidemiological health effect estimates in linear and logistic regression when using spatial air pollution predictions from kriging and land use regression models. we examined chronic (long-term) and acute (short-term) exposure to air pollution. results varied substantially across different scenarios. exposure models with low out-of-sample r2 yielded severe biases in the health effect estimates of some models, ranging from 60% upward bias to 70% downward bias. one land use regression exposure model with >0.9 out-of-sample r2 yielded upward biases up to 13% for acute health effect estimates. almost all models drastically underestimated the ses. land use regression models performed better in chronic effect simulations. these results can help researchers when interpreting health effect estimates in these types of studies.
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آدرس
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Harvard School of Public Health, Department of Biostatistics, USA. Institute for Mathematics Applied to Geosciences, USA, Harvard School of Public Health, Department of Environmental Health, USA, Harvard School of Public Health, Department of Environmental Health, USA. Ben-Gurion University of the Negev, Department of Geography and Environmental Development, Israel, Harvard School of Public Health, Department of Environmental Health, USA, Harvard School of Public Health, Department of Environmental Health, USA, Harvard School of Public Health, Department of Biostatistics, USA
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Authors
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