Alexandros Gryparis1, Konstantina Dimakopoulou2, Xanthi Pedeli2, Klea Katsouyanni2. 1. Department of Hygiene, Epidemiology and Medical Statistics, Bldg 12, Medical School of Athens, 75 Mikras Asias, Athens 11527, Greece. Electronic address: alexandros@post.harvard.edu. 2. Department of Hygiene, Epidemiology and Medical Statistics, Bldg 12, Medical School of Athens, 75 Mikras Asias, Athens 11527, Greece.
Abstract
BACKGROUND AND AIMS: Studies of air pollution effects on health are often based on ecological measurements. Our aim was to develop spatio-temporal models that estimate daily levels of NO2 and PM10 at every point in space, within the greater Athens area. METHODS: We applied a semiparametric approach using spatial and temporal covariates and a bivariate smooth thin plate function. We evaluated the predictions of our models against the exposure estimates that are typically used in health studies. For model validation we used a temporal and a spatial approach. RESULTS: The adjusted-R(2) of the developed exposure models was 0.53 and 0.75 for PM10 and NO2 respectively; the spatial terms in our models explained 41.5% and 64.5% and the temporal explained 52.85% and 32.0% of the variability in PM10 and NO2, respectively. There was no temporal or spatial left over autocorrelation in the residuals. We performed a leave-one-out cross validation and the adjusted-R(2) were 0.41 for PM10 and 0.71 for NO2. The developed model showed good validity when comparing predicted and observed measures for the 2010 data. Our models performed better compared to the "ecological" estimates and estimates based on the "nearest monitoring site". CONCLUSIONS: Our spatio-temporal model makes valid predictions, it introduces substantial geographical variability, it reduces the bias when compared with the "ecological" estimates and the estimates based on the "nearest monitoring site" and it can be used for a more personalized exposure assessment in health studies.
BACKGROUND AND AIMS: Studies of air pollution effects on health are often based on ecological measurements. Our aim was to develop spatio-temporal models that estimate daily levels of NO2 and PM10 at every point in space, within the greater Athens area. METHODS: We applied a semiparametric approach using spatial and temporal covariates and a bivariate smooth thin plate function. We evaluated the predictions of our models against the exposure estimates that are typically used in health studies. For model validation we used a temporal and a spatial approach. RESULTS: The adjusted-R(2) of the developed exposure models was 0.53 and 0.75 for PM10 and NO2 respectively; the spatial terms in our models explained 41.5% and 64.5% and the temporal explained 52.85% and 32.0% of the variability in PM10 and NO2, respectively. There was no temporal or spatial left over autocorrelation in the residuals. We performed a leave-one-out cross validation and the adjusted-R(2) were 0.41 for PM10 and 0.71 for NO2. The developed model showed good validity when comparing predicted and observed measures for the 2010 data. Our models performed better compared to the "ecological" estimates and estimates based on the "nearest monitoring site". CONCLUSIONS: Our spatio-temporal model makes valid predictions, it introduces substantial geographical variability, it reduces the bias when compared with the "ecological" estimates and the estimates based on the "nearest monitoring site" and it can be used for a more personalized exposure assessment in health studies.
Authors: Konstantina Dimakopoulou; Evangelia Samoli; Antonis Analitis; Joel Schwartz; Sean Beevers; Nutthida Kitwiroon; Andrew Beddows; Benjamin Barratt; Sophia Rodopoulou; Sofia Zafeiratou; John Gulliver; Klea Katsouyanni Journal: Int J Environ Res Public Health Date: 2022-04-28 Impact factor: 4.614
Authors: Rita Jaqueline Cabello-Torres; Manuel Angel Ponce Estela; Odón Sánchez-Ccoyllo; Edison Alessandro Romero-Cabello; Fausto Fernando García Ávila; Carlos Alberto Castañeda-Olivera; Lorgio Valdiviezo-Gonzales; Carlos Enrique Quispe Eulogio; Alex Rubén Huamán De La Cruz; Javier Linkolk López-Gonzales Journal: Sci Rep Date: 2022-10-06 Impact factor: 4.996