Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network

The use of Bayesian networks (BN) for environmental risk assessment has increased in recent years as they offer a more transparent way to characterize risk and evaluate uncertainty than the traditional risk assessment paradigms. In this study, a novel probabilistic approach applying a BN for risk ca...

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Main Authors: Sophie Mentzel, Merete Grung, Roger Holten, Knut Erik Tollefsen, Marianne Stenrød, S. Jannicke Moe
Format: Article
Language:English
Published: Frontiers Media S.A. 2022-09-01
Series:Frontiers in Environmental Science
Subjects:
Online Access:https://www.frontiersin.org/articles/10.3389/fenvs.2022.957926/full
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author Sophie Mentzel
Merete Grung
Roger Holten
Knut Erik Tollefsen
Knut Erik Tollefsen
Marianne Stenrød
S. Jannicke Moe
author_facet Sophie Mentzel
Merete Grung
Roger Holten
Knut Erik Tollefsen
Knut Erik Tollefsen
Marianne Stenrød
S. Jannicke Moe
author_sort Sophie Mentzel
collection DOAJ
description The use of Bayesian networks (BN) for environmental risk assessment has increased in recent years as they offer a more transparent way to characterize risk and evaluate uncertainty than the traditional risk assessment paradigms. In this study, a novel probabilistic approach applying a BN for risk calculation was further developed and explored by linking the calculation a risk quotient to alternative future scenarios. This extended version of the BN model uses predictions from a process-based pesticide exposure model (World Integrated System for Pesticide Exposure - WISPE) in the exposure characterization and toxicity test data in the effect characterization. The probability distributions for exposure and effect are combined into a risk characterization (i.e. the probability distribution of a risk quotient), a common measure of the exceedance of an environmentally safe exposure threshold. The BN model was used to account for variabilities of the predicted pesticide exposure in agricultural streams, and inter-species variability in sensitivity to the pesticide among freshwater species. In Northern Europe, future climate scenarios typically predict increased temperature and precipitation, which can be expected to cause an increase in weed infestations, plant disease and insect pests. Such climate-related changes in pest pressure in turn can give rise to altered agricultural practices, such as increased pesticide application rates, as an adaptation to climate change. The WISPE model was used to link a set of scenarios consisting of two climate models, three pesticide application scenarios and three periods (year ranges), for a case study in South-East Norway. The model was set up for the case study by specifying environmental factors such as soil properties and field slope together with chemical properties of pesticides to predict the pesticide exposure in streams adjacent to the agricultural fields. The model was parameterized and evaluated for five selected pesticides: the three herbicides clopyralid, fluroxypyr-meptyl, and 2-(4-chloro-2-methylphenoxy) acetic acid (MCPA), and the two fungicides prothiocanzole and trifloxystrobin. This approach enabled the calculation and visualization of probability distribution of the risk quotients for the future time horizons 2050 and 2085. The risk posed by the pesticides were in general low for this case study, with highest probability of the risk quotient exceeding 1 for the two herbicides fluroxypyr-meptyl and MCPA. The future climate projections used here resulted in only minor changes in predicted exposure concentrations and thereby future risk. However, a stronger increase in risk was predicted for the scenarios with increased pesticide application, which can represent an adaptation to a future climate with higher pest pressures. In the current study, the specific BN model predictions were constrained by an existing set of climate projections which represented only one IPCC scenario (A1B) and two climate models. Further advancement of the BN modelling demonstrated herein, including more recent climate scenarios and a larger set of climate models, is anticipated to result in more relevant risk characterization also for future climate conditions. This probabilistic approach will have the potential to aid targeted management of ecological risks in support of future research, industry and regulatory needs.
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spelling doaj.art-7c1892acad90441699d048e4dfd67a812022-12-22T04:04:21ZengFrontiers Media S.A.Frontiers in Environmental Science2296-665X2022-09-011010.3389/fenvs.2022.957926957926Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian networkSophie Mentzel0Merete Grung1Roger Holten2Knut Erik Tollefsen3Knut Erik Tollefsen4Marianne Stenrød5S. Jannicke Moe6Norwegian Institute for Water Research, Section for Ecotoxicology and Risk Assessment, Oslo, NorwayNorwegian Institute for Water Research, Section for Ecotoxicology and Risk Assessment, Oslo, NorwayNorwegian Institute of Bioeconomy Research, Division for Biotechnology and Plant Health, Ås, NorwayNorwegian Institute for Water Research, Section for Ecotoxicology and Risk Assessment, Oslo, NorwayNorwegian University of Life Sciences (NMBU), Faculty of Environmental Sciences and Natural Resource Management, Ås, NorwayNorwegian Institute of Bioeconomy Research, Division for Biotechnology and Plant Health, Ås, NorwayNorwegian Institute for Water Research, Section for Ecotoxicology and Risk Assessment, Oslo, NorwayThe use of Bayesian networks (BN) for environmental risk assessment has increased in recent years as they offer a more transparent way to characterize risk and evaluate uncertainty than the traditional risk assessment paradigms. In this study, a novel probabilistic approach applying a BN for risk calculation was further developed and explored by linking the calculation a risk quotient to alternative future scenarios. This extended version of the BN model uses predictions from a process-based pesticide exposure model (World Integrated System for Pesticide Exposure - WISPE) in the exposure characterization and toxicity test data in the effect characterization. The probability distributions for exposure and effect are combined into a risk characterization (i.e. the probability distribution of a risk quotient), a common measure of the exceedance of an environmentally safe exposure threshold. The BN model was used to account for variabilities of the predicted pesticide exposure in agricultural streams, and inter-species variability in sensitivity to the pesticide among freshwater species. In Northern Europe, future climate scenarios typically predict increased temperature and precipitation, which can be expected to cause an increase in weed infestations, plant disease and insect pests. Such climate-related changes in pest pressure in turn can give rise to altered agricultural practices, such as increased pesticide application rates, as an adaptation to climate change. The WISPE model was used to link a set of scenarios consisting of two climate models, three pesticide application scenarios and three periods (year ranges), for a case study in South-East Norway. The model was set up for the case study by specifying environmental factors such as soil properties and field slope together with chemical properties of pesticides to predict the pesticide exposure in streams adjacent to the agricultural fields. The model was parameterized and evaluated for five selected pesticides: the three herbicides clopyralid, fluroxypyr-meptyl, and 2-(4-chloro-2-methylphenoxy) acetic acid (MCPA), and the two fungicides prothiocanzole and trifloxystrobin. This approach enabled the calculation and visualization of probability distribution of the risk quotients for the future time horizons 2050 and 2085. The risk posed by the pesticides were in general low for this case study, with highest probability of the risk quotient exceeding 1 for the two herbicides fluroxypyr-meptyl and MCPA. The future climate projections used here resulted in only minor changes in predicted exposure concentrations and thereby future risk. However, a stronger increase in risk was predicted for the scenarios with increased pesticide application, which can represent an adaptation to a future climate with higher pest pressures. In the current study, the specific BN model predictions were constrained by an existing set of climate projections which represented only one IPCC scenario (A1B) and two climate models. Further advancement of the BN modelling demonstrated herein, including more recent climate scenarios and a larger set of climate models, is anticipated to result in more relevant risk characterization also for future climate conditions. This probabilistic approach will have the potential to aid targeted management of ecological risks in support of future research, industry and regulatory needs.https://www.frontiersin.org/articles/10.3389/fenvs.2022.957926/fullbayesian network modelsexposure modellingenvironmental risk assessmentpesticidesuncertainty
spellingShingle Sophie Mentzel
Merete Grung
Roger Holten
Knut Erik Tollefsen
Knut Erik Tollefsen
Marianne Stenrød
S. Jannicke Moe
Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
Frontiers in Environmental Science
bayesian network models
exposure modelling
environmental risk assessment
pesticides
uncertainty
title Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
title_full Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
title_fullStr Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
title_full_unstemmed Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
title_short Probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
title_sort probabilistic risk assessment of pesticides under future agricultural and climate scenarios using a bayesian network
topic bayesian network models
exposure modelling
environmental risk assessment
pesticides
uncertainty
url https://www.frontiersin.org/articles/10.3389/fenvs.2022.957926/full
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