利用机器学习方法揭示农业地表水中农药对人类和生态系统健康造成的全球风险

IF 10.3 1区 环境科学与生态学 Q1 ENVIRONMENTAL SCIENCES
Jian Chen, Li Zhao, Bin Wang, Xinyi He, Lei Duan, Gang Yu
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引用次数: 0

摘要

农药通常同时出现在农业地表水中,对人类和生态系统健康构成潜在威胁。由于全球农业地表水中的农药筛选是一项巨大的分析挑战,因此全球农业地表水中农药的详细风险图谱在很大程度上是缺失的。在此,我们基于 309 种农药的 27,411 个测量值和 30 个地理空间参数,使用随机森林模型绘制了首张全球农业地表水中农药对人类健康和生态环境的风险图。我们的全球风险地图确定了主要位于南亚和非洲的热点地区,这些地区农药使用广泛,废水管理基础设施薄弱。我们分别确定了 4 种和 5 种优先保护人类和生态系统健康的农药。重要的是,我们估计全球有 3.05 亿人面临与地表水农药混合物接触相关的潜在健康风险,其中绝大多数(86%)在亚洲。我们进一步确定了印度恒河流域的热点地区,那里有超过 1.7 亿人面临健康风险。由于未来人口增长和气候变化,农药的使用越来越多,以确保粮食生产,因此我们的研究结果对提高人们对农药污染的认识、确定热点地区和帮助优先进行检测具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Uncovering global risk to human and ecosystem health from pesticides in agricultural surface water using a machine learning approach

Uncovering global risk to human and ecosystem health from pesticides in agricultural surface water using a machine learning approach
Pesticides typically co-occur in agricultural surface waters and pose a potential threat to human and ecosystem health. As pesticide screening in global agricultural surface waters is an immense analytical challenge, a detailed risk picture of pesticides in global agricultural surface waters is largely missing. Here, we create the first global maps of human health and ecological risk from pesticides in agricultural surface waters using random forest models based on 27,411 measurements of 309 pesticides and 30 geospatial parameters. Our global risk maps identify the hotspots, mainly in Southern Asia and Africa, with extensive pesticide use and poor wastewater management infrastructure. We identify 4 and 5 priority pesticides for protecting the human and ecosystem health, respectively. Importantly, we estimate that 305 million people worldwide are at potential health risk associated with the surface-water pesticide mixture exposure, with the vast majority (86 %) being in Asia. We further identify the hotspots in the Ganges River basin in India, where more than 170 million people are at health risk. As pesticides are increasingly used to ensure the food production due to future population growth and climate change, our findings have implications for raising awareness of pesticide pollution, identifying the hotspots and helping to prioritize testing.
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来源期刊
Environment International
Environment International 环境科学-环境科学
CiteScore
21.90
自引率
3.40%
发文量
734
审稿时长
2.8 months
期刊介绍: Environmental Health publishes manuscripts focusing on critical aspects of environmental and occupational medicine, including studies in toxicology and epidemiology, to illuminate the human health implications of exposure to environmental hazards. The journal adopts an open-access model and practices open peer review. It caters to scientists and practitioners across all environmental science domains, directly or indirectly impacting human health and well-being. With a commitment to enhancing the prevention of environmentally-related health risks, Environmental Health serves as a public health journal for the community and scientists engaged in matters of public health significance concerning the environment.
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