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通过将人工智能、大数据和物联网纳入食品安全预警和新兴风险识别工具,使食品系统更能抵御食品安全风险。

Making food systems more resilient to food safety risks by including artificial intelligence, big data, and internet of things into food safety early warning and emerging risk identification tools.

机构信息

Wageningen Food Safety Research, Wageningen University and Research, Wageningen, The Netherlands.

Information Technology, Wageningen University, Wageningen University and Research, Wageningen, The Netherlands.

出版信息

Compr Rev Food Sci Food Saf. 2024 Jan;23(1):e13296. doi: 10.1111/1541-4337.13296.

Abstract

To enhance the resilience of food systems to food safety risks, it is vitally important for national authorities and international organizations to be able to identify emerging food safety risks and to provide early warning signals in a timely manner. This review provides an overview of existing and experimental applications of artificial intelligence (AI), big data, and internet of things as part of early warning and emerging risk identification tools and methods in the food safety domain. There is an ongoing rapid development of systems fed by numerous, real-time, and diverse data with the aim of early warning and identification of emerging food safety risks. The suitability of big data and AI to support such systems is illustrated by two cases in which climate change drives the emergence of risks, namely, harmful algal blooms affecting seafood and fungal growth and mycotoxin formation in crops. Automation and machine learning are crucial for the development of future real-time food safety risk early warning systems. Although these developments increase the feasibility and effectiveness of prospective early warning and emerging risk identification tools, their implementation may prove challenging, particularly for low- and middle-income countries due to low connectivity and data availability. It is advocated to overcome these challenges by improving the capability and capacity of national authorities, as well as by enhancing their collaboration with the private sector and international organizations.

摘要

为了增强食品系统应对食品安全风险的弹性,国家当局和国际组织必须能够及时识别新出现的食品安全风险并提供预警信号,这一点至关重要。本综述概述了人工智能 (AI)、大数据和物联网在食品安全领域作为预警和新出现风险识别工具和方法的现有和实验性应用。目前正在开发大量实时和多样化数据的系统,旨在实现对新出现的食品安全风险的预警和识别。大数据和人工智能支持此类系统的适用性通过气候变化驱动风险出现的两个案例得到了说明,即影响海鲜的有害藻类大量繁殖以及作物中真菌生长和霉菌毒素形成。自动化和机器学习对于未来实时食品安全风险预警系统的发展至关重要。尽管这些发展提高了预期预警和新出现风险识别工具的可行性和有效性,但由于连接性和数据可用性低,它们的实施可能具有挑战性,特别是对于低收入和中等收入国家而言。提倡通过提高国家当局的能力和能力,以及加强与私营部门和国际组织的合作来克服这些挑战。

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