Institute for Soil Physics and Rural Water Management, University of Natural Resources and Life Sciences, Vienna (BOKU), Muthgasse 18, 1180 Vienna, Austria.
Faculty of Agrobiology, Food and Natural Resources, Dept. of Soil Science and Soil Protection, Czech University of Life Sciences Prague, Kamýcká 129, CZ-16500 Prague 6, Czech Republic.
Environ Sci Technol. 2021 Mar 2;55(5):2991-3000. doi: 10.1021/acs.est.0c07420. Epub 2021 Feb 15.
Food contamination is a major worldwide risk for human health. Dynamic plant uptake of pollutants from contaminated environments is the preferred pathway into the human and animal food chain. Mechanistic models represent a fundamental tool for risk assessment and the development of mitigation strategies. However, difficulty in obtaining comprehensive observations in the soil-plant continuum hinders their calibration, undermining their generalizability and raising doubts about their widespread applicability. To address these issues, a Bayesian probabilistic framework is used, for the first time, to calibrate and assess the predictive uncertainty of a mechanistic soil-plant model against comprehensive observations from an experiment on the translocation of carbamazepine in green pea plants. Results demonstrate that the model can reproduce the dynamics of water flow and solute reactive transport in the soil-plant domain accurately and with limited uncertainty. The role of different physicochemical processes in bioaccumulation of carbamazepine in fruits is investigated through Global Sensitivity Analysis, which shows how soil hydraulic properties and soil solute sorption regulate transpiration streams and bioavailability of carbamazepine. Overall, the analysis demonstrates the usefulness of mechanistic models and proposes a comprehensive numerical framework for their assessment and use.
食物污染是全球范围内人类健康的主要风险。污染物从污染环境中动态地被植物吸收是进入人类和动物食物链的首选途径。机理模型代表了风险评估和缓解策略制定的基本工具。然而,在土壤-植物连续体中获得全面观测的困难阻碍了它们的校准,破坏了它们的通用性,并对它们的广泛适用性提出了质疑。为了解决这些问题,首次使用贝叶斯概率框架来校准和评估针对绿豌豆植物中卡马西平迁移的实验进行全面观测的机理土壤-植物模型的预测不确定性。结果表明,该模型可以准确地再现土壤-植物域中水流和反应性溶质迁移的动态,且不确定性有限。通过全局敏感性分析研究了不同物理化学过程在卡马西平在水果中生物累积中的作用,该分析表明土壤水力特性和土壤溶质吸附如何调节蒸腾流和卡马西平的生物利用度。总体而言,该分析证明了机理模型的有用性,并提出了一个全面的数值框架来评估和使用它们。