Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China

Metal mines release toxic substances into the environment and can therefore negatively impact the health of residents in nearby regions. This paper sought to investigate whether there was excess disease mortality in populations in the vicinity of the mining area in Suxian District, South China. The...

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Main Authors: Wei Chen, Yaohuan Huang, Dafang Zhuang, Yong Wang, Daping Song, Dong Jiang
Format: Article
Language:English
Published: MDPI AG 2013-10-01
Series:International Journal of Environmental Research and Public Health
Subjects:
Online Access:http://www.mdpi.com/1660-4601/10/10/5163
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spelling doaj-c01ea9ffa2f04aa6b73898600f6c20e92020-11-24T23:09:21ZengMDPI AGInternational Journal of Environmental Research and Public Health1660-46012013-10-0110105163517710.3390/ijerph10105163Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South ChinaWei ChenYaohuan HuangDafang ZhuangYong WangDaping SongDong JiangMetal mines release toxic substances into the environment and can therefore negatively impact the health of residents in nearby regions. This paper sought to investigate whether there was excess disease mortality in populations in the vicinity of the mining area in Suxian District, South China. The spatial distribution of metal mining and related activities from 1985 to 2012, which was derived from remote sensing imagery, was overlapped with disease mortality data. Three hotspot areas with high disease mortality were identified around the Shizhuyuan mine sites, i.e., the Dengjiatang metal smelting sites, and the Xianxichong mine sites. Disease mortality decreased with the distance to the mining and smelting areas. Population exposure to pollution was estimated on the basis of distance from town of residence to pollution source. The risk of dying according to disease mortality rates was analyzed within 7–25 km buffers. The results suggested that there was a close relationship between the risk of disease mortality and proximity to the Suxian District mining industries. These associations were dependent on the type and scale of mining activities, the area influenced by mining and so on.http://www.mdpi.com/1660-4601/10/10/5163metal mining areaheavy metalland usemortality
collection DOAJ
language English
format Article
sources DOAJ
author Wei Chen
Yaohuan Huang
Dafang Zhuang
Yong Wang
Daping Song
Dong Jiang
spellingShingle Wei Chen
Yaohuan Huang
Dafang Zhuang
Yong Wang
Daping Song
Dong Jiang
Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
International Journal of Environmental Research and Public Health
metal mining area
heavy metal
land use
mortality
author_facet Wei Chen
Yaohuan Huang
Dafang Zhuang
Yong Wang
Daping Song
Dong Jiang
author_sort Wei Chen
title Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
title_short Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
title_full Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
title_fullStr Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
title_full_unstemmed Study on Association between Spatial Distribution of Metal Mines and Disease Mortality: A Case Study in Suxian District, South China
title_sort study on association between spatial distribution of metal mines and disease mortality: a case study in suxian district, south china
publisher MDPI AG
series International Journal of Environmental Research and Public Health
issn 1660-4601
publishDate 2013-10-01
description Metal mines release toxic substances into the environment and can therefore negatively impact the health of residents in nearby regions. This paper sought to investigate whether there was excess disease mortality in populations in the vicinity of the mining area in Suxian District, South China. The spatial distribution of metal mining and related activities from 1985 to 2012, which was derived from remote sensing imagery, was overlapped with disease mortality data. Three hotspot areas with high disease mortality were identified around the Shizhuyuan mine sites, i.e., the Dengjiatang metal smelting sites, and the Xianxichong mine sites. Disease mortality decreased with the distance to the mining and smelting areas. Population exposure to pollution was estimated on the basis of distance from town of residence to pollution source. The risk of dying according to disease mortality rates was analyzed within 7–25 km buffers. The results suggested that there was a close relationship between the risk of disease mortality and proximity to the Suxian District mining industries. These associations were dependent on the type and scale of mining activities, the area influenced by mining and so on.
topic metal mining area
heavy metal
land use
mortality
url http://www.mdpi.com/1660-4601/10/10/5163
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