Literature DB >> 28017360

Estimation of daily PM10 concentrations in Italy (2006-2012) using finely resolved satellite data, land use variables and meteorology.

Massimo Stafoggia1, Joel Schwartz2, Chiara Badaloni3, Tom Bellander4, Ester Alessandrini3, Giorgio Cattani5, Francesca De' Donato3, Alessandra Gaeta5, Gianluca Leone5, Alexei Lyapustin6, Meytar Sorek-Hamer7, Kees de Hoogh8, Qian Di2, Francesco Forastiere3, Itai Kloog9.   

Abstract

Health effects of air pollution, especially particulate matter (PM), have been widely investigated. However, most of the studies rely on few monitors located in urban areas for short-term assessments, or land use/dispersion modelling for long-term evaluations, again mostly in cities. Recently, the availability of finely resolved satellite data provides an opportunity to estimate daily concentrations of air pollutants over wide spatio-temporal domains. Italy lacks a robust and validated high resolution spatio-temporally resolved model of particulate matter. The complex topography and the air mixture from both natural and anthropogenic sources are great challenges difficult to be addressed. We combined finely resolved data on Aerosol Optical Depth (AOD) from the Multi-Angle Implementation of Atmospheric Correction (MAIAC) algorithm, ground-level PM10 measurements, land-use variables and meteorological parameters into a four-stage mixed model framework to derive estimates of daily PM10 concentrations at 1-km2 grid over Italy, for the years 2006-2012. We checked performance of our models by applying 10-fold cross-validation (CV) for each year. Our models displayed good fitting, with mean CV-R2=0.65 and little bias (average slope of predicted VS observed PM10=0.99). Out-of-sample predictions were more accurate in Northern Italy (Po valley) and large conurbations (e.g. Rome), for background monitoring stations, and in the winter season. Resulting concentration maps showed highest average PM10 levels in specific areas (Po river valley, main industrial and metropolitan areas) with decreasing trends over time. Our daily predictions of PM10 concentrations across the whole Italy will allow, for the first time, estimation of long-term and short-term effects of air pollution nationwide, even in areas lacking monitoring data.
Copyright © 2016 Elsevier Ltd. All rights reserved.

Entities:  

Keywords:  Aerosol Optical Depth; Air pollution; Epidemiology; Exposure assessment; Particulate matter; Satellite

Mesh:

Substances:

Year:  2016        PMID: 28017360     DOI: 10.1016/j.envint.2016.11.024

Source DB:  PubMed          Journal:  Environ Int        ISSN: 0160-4120            Impact factor:   9.621


  22 in total

1.  Spatial estimation of surface ozone concentrations in Quito Ecuador with remote sensing data, air pollution measurements and meteorological variables.

Authors:  Cesar I Alvarez-Mendoza; Ana Teodoro; Lenin Ramirez-Cando
Journal:  Environ Monit Assess       Date:  2019-02-11       Impact factor: 2.513

2.  Air pollution and in utero programming of poor fetal growth.

Authors:  Heather H Burris; Andrea A Baccarelli
Journal:  Epigenomics       Date:  2017-02-17       Impact factor: 4.778

3.  Epidemiology in wonderland: Big Data and precision medicine.

Authors:  Rodolfo Saracci
Journal:  Eur J Epidemiol       Date:  2018-04-05       Impact factor: 8.082

4.  Ensemble averaging based assessment of spatiotemporal variations in ambient PM2.5 concentrations over Delhi, India, during 2010-2016.

Authors:  Siddhartha Mandal; Kishore K Madhipatla; Sarath Guttikunda; Itai Kloog; Dorairaj Prabhakaran; Joel D Schwartz
Journal:  Atmos Environ (1994)       Date:  2020-01-27       Impact factor: 4.798

5.  Comment on "Deep Ensemble Machine Learning Framework for the Estimation of PM2.5 Concentrations".

Authors:  Massimo Stafoggia; Giorgio Cattani; Carla Ancona; Antonio Gasparrini; Andrea Ranzi
Journal:  Environ Health Perspect       Date:  2022-06-02       Impact factor: 11.035

6.  Advancing methodologies for applying machine learning and evaluating spatiotemporal models of fine particulate matter (PM2.5) using satellite data over large regions.

Authors:  Allan C Just; Kodi B Arfer; Johnathan Rush; Michael Dorman; Alex Shtein; Alexei Lyapustin; Itai Kloog
Journal:  Atmos Environ (1994)       Date:  2020-07-17       Impact factor: 5.755

7.  The value of using seasonality and meteorological variables to model intra-urban PM2.5 variation.

Authors:  Hector A Olvera Alvarez; Orrin B Myers; Margaret Weigel; Rodrigo X Armijos
Journal:  Atmos Environ (1994)       Date:  2018-03-08       Impact factor: 4.798

8.  Exposure to Particulate Matter Is Associated With Elevated Blood Pressure and Incident Hypertension in Urban India.

Authors:  Dorairaj Prabhakaran; Siddhartha Mandal; Bhargav Krishna; Melina Magsumbol; Kalpana Singh; Nikhil Tandon; K M Venkat Narayan; Roopa Shivashankar; Dimple Kondal; Mohammed K Ali; Kolli Srinath Reddy; Joel D Schwartz
Journal:  Hypertension       Date:  2020-08-17       Impact factor: 10.190

9.  Ambient air particulate matter (PM10) satellite monitoring and respiratory health effects assessment.

Authors:  Mahssa Mohebbichamkhorami; Mohsen Arbabi; Mohsen Mirzaei; Ali Ahmadi; Mohammad Sadegh Hassanvand; Hamid Rouhi
Journal:  J Environ Health Sci Eng       Date:  2020-10-03

10.  PM10 and PM2.5 real-time prediction models using an interpolated convolutional neural network.

Authors:  Sangwon Chae; Joonhyeok Shin; Sungjun Kwon; Sangmok Lee; Sungwon Kang; Donghyun Lee
Journal:  Sci Rep       Date:  2021-06-07       Impact factor: 4.379

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