A rigorous statistical framework for spatio-temporal pollution prediction and estimation of its long-term impact on health
A rigorous statistical framework for spatio-temporal pollution prediction and estimation of its long-term impact on health
In the United Kingdom, air pollution is linked to around 40000 premature deaths each year, but estimating its health effects is challenging in a spatio-temporal study. The challenges include spatial misalignment between the pollution and disease data; uncertainty in the estimated pollution surface; and complex residual spatio-temporal autocorrelation in the disease data. This article develops a two-stage model that addresses these issues. The first stage is a spatio-temporal fusion model linking modeled and measured pollution data, while the second stage links these predictions to the disease data. The methodology is motivated by a new five-year study investigating the effects of multiple pollutants on respiratory hospitalizations in England between 2007 and 2011, using pollution and disease data relating to local and unitary authorities on a monthly time scale.
370-385
Lee, Duncan
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Mukhopadhyay, Sabyasachi
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Rushworth, Alastair
8703efd1-2cd2-4417-b1ff-a8f867f28dbc
Sahu, Sujit
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Lee, Duncan
0cfd1c36-887e-4ffb-8b97-4f40696eeb3d
Mukhopadhyay, Sabyasachi
a12b9e01-549d-4fab-b45f-e7df03340156
Rushworth, Alastair
8703efd1-2cd2-4417-b1ff-a8f867f28dbc
Sahu, Sujit
33f1386d-6d73-4b60-a796-d626721f72bf
Lee, Duncan, Mukhopadhyay, Sabyasachi, Rushworth, Alastair and Sahu, Sujit
(2016)
A rigorous statistical framework for spatio-temporal pollution prediction and estimation of its long-term impact on health.
Biostatistics, 18 (2), .
(doi:10.1093/biostatistics/kxw048).
Abstract
In the United Kingdom, air pollution is linked to around 40000 premature deaths each year, but estimating its health effects is challenging in a spatio-temporal study. The challenges include spatial misalignment between the pollution and disease data; uncertainty in the estimated pollution surface; and complex residual spatio-temporal autocorrelation in the disease data. This article develops a two-stage model that addresses these issues. The first stage is a spatio-temporal fusion model linking modeled and measured pollution data, while the second stage links these predictions to the disease data. The methodology is motivated by a new five-year study investigating the effects of multiple pollutants on respiratory hospitalizations in England between 2007 and 2011, using pollution and disease data relating to local and unitary authorities on a monthly time scale.
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Accepted/In Press date: 11 October 2016
e-pub ahead of print date: 24 December 2016
Organisations:
Statistics
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Local EPrints ID: 406728
URI: http://eprints.soton.ac.uk/id/eprint/406728
ISSN: 1465-4644
PURE UUID: 818773b1-dd74-4a41-8c93-910fdc8def91
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Date deposited: 21 Mar 2017 02:05
Last modified: 16 Mar 2024 05:08
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Author:
Duncan Lee
Author:
Sabyasachi Mukhopadhyay
Author:
Alastair Rushworth
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