食品安全
背景(考古学)
软件部署
数据科学
机器学习
计算机科学
领域(数学分析)
人工智能
风险分析(工程)
业务
医学
软件工程
地理
数学分析
病理
考古
数学
作者
Xiangyu Deng,Shuhao Cao,Abigail L. Horn
标识
DOI:10.1146/annurev-food-071720-024112
摘要
Food safety continues to threaten public health. Machine learning holds potential in leveraging large, emerging data sets to improve the safety of the food supply and mitigate the impact of food safety incidents. Foodborne pathogen genomes and novel data streams, including text, transactional, and trade data, have seen emerging applications enabled by a machine learning approach, such as prediction of antibiotic resistance, source attribution of pathogens, and foodborne outbreak detection and risk assessment. In this article, we provide a gentle introduction to machine learning in the context of food safety and an overview of recent developments and applications. With many of these applications still in their nascence, general and domain-specific pitfalls and challenges associated with machine learning have begun to be recognized and addressed, which are critical to prospective use and future deployment of large data sets and their associated machine learning models for food safety applications.
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