Spatial analysis and probabilistic risk assessment of exposure to fluoride in drinking water using GIS and Monte Carlo simulation

被引:0
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作者
Shahjad Ali
Hamid Ali
Manizhe Pakdel
Sahar Ghale Askari
Ali Akbar Mohammadi
Shahabaldin Rezania
机构
[1] Anand Engineering College,Department of Applied Science
[2] Aligarh Muslim University,Department of Petroleum Studies, Z.H. College of Engineering & Technology
[3] Neyshabur University of Medical Sciences,Department of Nursing
[4] Shahid Sadoughi University of Medical Sciences,Environmental Science and Technology Research Center, Department of Environmental Health Engineering, School of Public Health
[5] Neyshabur University of Medical Sciences,Department of Environmental Health Engineering
[6] Sejong University,Department of Environment and Energy
关键词
Drinking water; Fluoride; Monte Carlo; Risk assessment; Sensitivity analysis;
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学科分类号
摘要
Prevalence of fluorosis is a worldwide public health problem especially in many states of India. It is necessary to find out the fluoride endemic areas to adopt remedial measures to the people on the risk of fluorosis. The target goals of this research were to assess (a) the exposure of fluoride concentration; (b) probabilistic risk assessment, sensitivity analysis, and uncertainty through intake of groundwater among population of Agra City (infants, children and adults) by Crystal Ball software; and (c) spatial distribution of HQ and fluoride concentration. A total of sixty samples from standing tube wells/hand pumps were gathered from selected and identified fluoride prevalent areas in Agra City. The concentration of fluoride scrutinized was obtained to be ranging from 1.32 to 4.60 mg/L with mean value of 2.36 in Agra City, and more than 91% of samples investigated surpassed the allowable level set for fluoride concentration in potable water 1.5 mg/L, although 9% of the samples were well within the drinking water guidelines (0.5-1.5 mg/L). The hazard quotient (HQ) was obtained to an enormous difference in the exposure dose in infants (1.66–3.91), children (1.87–4.4), and adults (0.92–2.16), correspondingly. The non-carcinogenic HQ values in the group of infants, children, and more than 90% of adults were higher than those of the safety level (i.e., HQ >1). Consequently, the non-carcinogenic risks (HQ level) of fluoride vary from the most to the least: children, infant, and adults, respectively. With 87.41% certainty, the results indicated that the HQ values are between 1 and 3.42. So, infant is the most vulnerable group to fluoride consumption in study area. Uncertainty analysis results indicated that the children group’s HQ level was between 1 and 1.90 with 38.48% certainty. To avoid further worsening of the situation as far as health is concerned, remedial actions like alternate sources of water supply and appropriate treatment of water need to be adopted besides required medical attention to affected people.
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页码:5881 / 5890
页数:9
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