利用人工智能改进霉菌毒素管理:综述。

IF 3.1 4区 医学 Q2 MYCOLOGY
M Focker, C Liu, X Wang, H J van der Fels-Klerx
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引用次数: 0

摘要

随着人们对霉菌毒素的了解不断增加,影响霉菌毒素发生的因素不断变化,以及技术的不断发展,供应链中霉菌毒素污染的管理也在不断发展。其中一项技术发展是在霉菌毒素管理中使用人工智能(AI)的潜力。人工智能可用于真菌毒素管理的各个领域,包括真菌毒素的预测建模以及分析检测和分析。本综述旨在探讨人工智能在霉菌毒素管理中的应用现状。本综述侧重于(1)收获前和收获后商品中真菌毒素存在的预测模型,以及(2)通过处理由样品成像数据或化学分析产生的大型数据集来检测样品中的真菌毒素。对相关文献进行系统综述,共获得相关文献70篇,其中霉菌毒素预测模型相关文献15篇,霉菌毒素检测相关文献54篇,内容从影像学到化学分析,均有相关综述。介绍了人工智能的应用和最流行的人工智能算法。正如本综述所示,人工智能能够在收获前和收获后水平上改进霉菌毒素预测模型,并使诸如成像检测或电子鼻等非侵入性快速检测方法的出现成为可能。人工智能模型在实际环境中的适用性和可扩展性仍然是一个主要挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The use of artificial intelligence to improve mycotoxin management: a review.

The management of mycotoxin contamination in the supply chain is continuously evolving in response to growing knowledge about mycotoxins, shifting factors that influence mycotoxin occurrence, and ongoing technological developments. One of the technological developments is the potential for using artificial intelligence (AI) in mycotoxin management. AI can be used in various fields of mycotoxin management, including for predictive modelling of mycotoxins and for analytical detection and analyses. This review aimed to investigate the state-of-the-art of the use of AI for mycotoxin management. This review focuses on (1) predictive models for the presence of mycotoxins in commodities at both pre-harvest and post-harvest levels and (2) the detection of mycotoxins in samples by processing large datasets resulting from imaging data or chemical analyses of the sample. A systematic review was conducted, resulting in a total of 70 relevant references, including 15 references focusing on mycotoxin prediction models and 54 references focusing on mycotoxin detection, ranging from imaging to chemical analysis, and including relevant reviews. The AI applications and the most popular AI algorithms are presented. As shown by this review, AI is able to improve mycotoxin prediction models both at pre- and post-harvest levels and makes the emergence of non-invasive and fast detection methods such as imaging detection or electronic noses possible. A major challenge remains in the applicability and scalability of AI models to practical settings.

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来源期刊
Mycotoxin Research
Mycotoxin Research MYCOLOGYTOXICOLOGY-TOXICOLOGY
CiteScore
6.40
自引率
6.70%
发文量
29
期刊介绍: Mycotoxin Research, the official publication of the Society for Mycotoxin Research, is a peer-reviewed, scientific journal dealing with all aspects related to toxic fungal metabolites. The journal publishes original research articles and reviews in all areas dealing with mycotoxins. As an interdisciplinary platform, Mycotoxin Research welcomes submission of scientific contributions in the following research fields: - Ecology and genetics of mycotoxin formation - Mode of action of mycotoxins, metabolism and toxicology - Agricultural production and mycotoxins - Human and animal health aspects, including exposure studies and risk assessment - Food and feed safety, including occurrence, prevention, regulatory aspects, and control of mycotoxins - Environmental safety and technology-related aspects of mycotoxins - Chemistry, synthesis and analysis.
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