A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks

Exploring better models for evaluating the distribution of pesticide residues in soil and sediment is necessary to assess and avoid population health risk. Frequentist philosophy and probability are widely used in many studies to apply a log-normal distribution associated with the maximum likelihood...

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Main Author: Zijian Li
Format: Article
Language:English
Published: Elsevier 2018-12-01
Series:Environment International
Online Access:http://www.sciencedirect.com/science/article/pii/S0160412018314272
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spelling doaj-b6d73f8bc93c4115a049253ca2a0cfec2020-11-24T21:10:33ZengElsevierEnvironment International0160-41202018-12-01121620634A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risksZijian Li0Parsons Corporation, Chicago, IL 60606, USA; Department of Civil Engineering, Case Western Reserve University, Cleveland, OH 44106, USAExploring better models for evaluating the distribution of pesticide residues in soil and sediment is necessary to assess and avoid population health risk. Frequentist philosophy and probability are widely used in many studies to apply a log-normal distribution associated with the maximum likelihood estimation, which assumes fixed parameters and relies on a large sample size for long-run frequency. However, frequentist probability might not be suitable for analyzing pesticide residue distribution, whose parameters are affected by many complex factors and should be treated as unfixed. This study aimed to implement a Bayesian generalized log-normal (GLN) model to better understand the distribution of pesticide residues in soil and quantify population risks. The Bayesian GLN model, including location, scale, and shape parameters, was applied for the first time to dynamically evaluate pesticide residue distribution in soil and sediments. In addition, a comprehensive human health risk assessment of exposure to lindane via soil was conducted using the lifetime cancer risk for carcinogenic effect, margin of exposure for non-carcinogenic effect, and disability-adjusted life year for health damage. The Bayesian posterior analysis results indicated that the distribution of the concentration of some pesticide was better fitted to a log-Laplace (e.g., the mode value of shape parameter for lindane is 1.079) or showed mixtures of distributions within the family of log-normal distributions (e.g., the mode value of shape parameter for p,p′-DDE is 2.395), which can better explain the long-tail phenomenon of pesticide residue distribution and dynamically evaluate distribution models. For lindane, the 95% uncertainty bounds on the 95th percentile computed from 95% highest probability density regions (credible intervals) of three parameters by using the Bayesian p-box method were [2.063, 1558.609] ng/g, which is several orders of magnitude larger than the computed frequentist 95% confidence interval of [4.690, 8.095] ng/g and indicates that the population could have cancer risk concerns. These uncertainty analysis results from the Bayesian GLN approach indicated a larger variation of Lindane soil residues, which might reflect the complex and unpredictable mechanism of pesticide residue distribution including both unfixed models and distribution parameters. In summary, Bayesian GLN model is more flexible for the dynamic evaluation of pesticide soil residue distribution, retains posteriors for future data analysis, and could better quantify the uncertainties in population health risks. Therefore, this study can provide a novel and dynamical perspective of pesticide residue distribution and help better quantify health risks. Keywords: Pesticide residue, Generalized log-normal distribution, Bayesian analysis, Bayesian p-box, Human health risk and damagehttp://www.sciencedirect.com/science/article/pii/S0160412018314272
collection DOAJ
language English
format Article
sources DOAJ
author Zijian Li
spellingShingle Zijian Li
A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
Environment International
author_facet Zijian Li
author_sort Zijian Li
title A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
title_short A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
title_full A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
title_fullStr A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
title_full_unstemmed A Bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
title_sort bayesian generalized log-normal model to dynamically evaluate the distribution of pesticide residues in soil associated with population health risks
publisher Elsevier
series Environment International
issn 0160-4120
publishDate 2018-12-01
description Exploring better models for evaluating the distribution of pesticide residues in soil and sediment is necessary to assess and avoid population health risk. Frequentist philosophy and probability are widely used in many studies to apply a log-normal distribution associated with the maximum likelihood estimation, which assumes fixed parameters and relies on a large sample size for long-run frequency. However, frequentist probability might not be suitable for analyzing pesticide residue distribution, whose parameters are affected by many complex factors and should be treated as unfixed. This study aimed to implement a Bayesian generalized log-normal (GLN) model to better understand the distribution of pesticide residues in soil and quantify population risks. The Bayesian GLN model, including location, scale, and shape parameters, was applied for the first time to dynamically evaluate pesticide residue distribution in soil and sediments. In addition, a comprehensive human health risk assessment of exposure to lindane via soil was conducted using the lifetime cancer risk for carcinogenic effect, margin of exposure for non-carcinogenic effect, and disability-adjusted life year for health damage. The Bayesian posterior analysis results indicated that the distribution of the concentration of some pesticide was better fitted to a log-Laplace (e.g., the mode value of shape parameter for lindane is 1.079) or showed mixtures of distributions within the family of log-normal distributions (e.g., the mode value of shape parameter for p,p′-DDE is 2.395), which can better explain the long-tail phenomenon of pesticide residue distribution and dynamically evaluate distribution models. For lindane, the 95% uncertainty bounds on the 95th percentile computed from 95% highest probability density regions (credible intervals) of three parameters by using the Bayesian p-box method were [2.063, 1558.609] ng/g, which is several orders of magnitude larger than the computed frequentist 95% confidence interval of [4.690, 8.095] ng/g and indicates that the population could have cancer risk concerns. These uncertainty analysis results from the Bayesian GLN approach indicated a larger variation of Lindane soil residues, which might reflect the complex and unpredictable mechanism of pesticide residue distribution including both unfixed models and distribution parameters. In summary, Bayesian GLN model is more flexible for the dynamic evaluation of pesticide soil residue distribution, retains posteriors for future data analysis, and could better quantify the uncertainties in population health risks. Therefore, this study can provide a novel and dynamical perspective of pesticide residue distribution and help better quantify health risks. Keywords: Pesticide residue, Generalized log-normal distribution, Bayesian analysis, Bayesian p-box, Human health risk and damage
url http://www.sciencedirect.com/science/article/pii/S0160412018314272
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