Yihang Feng , Yi Wang , Burcu Beykal , Mingyu Qiao , Zhenlei Xiao , Yangchao Luo
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引用次数: 0
Abstract
Background
Food quality and safety have received much more attention in recent years thanks to the increase in food consumption and customer awareness of food quality assurance. Volatile organic compounds (VOCs) detection and analysis techniques are powerful tools for assessing the quality of food products due to their non-destructive, eco-friendly, continuous, and real-time monitoring merits. Machine learning (ML) -supported electronic nose (EN), colorimetric sensor array (CSA), and gas chromatography (GC) hyphened techniques (e.g., GC-MS and GC-IMS) are becoming a hot research area in Food Sciences.
Scope and approach
In this review, the rationales, advantages, and limitations of these technologies are introduced, as well as ML implementation details in application scenarios. In particular, ML fundamentals of data processing, modeling, and performance evaluation are discussed based on the most recent cases of food VOC detection and analysis studies, followed by the comprehensive applications of ML in different fields of food research including origin traceability, adulteration, quality control, and pathogen detection.
Key findings and conclusions
With advances in ML, e.g., parallel computing, computer vision, and odor imaging, new technologies like CSA and EN are replacing traditional GC for VOC detection and analysis. Many previously intractable problems in the food industry, e.g., food origin traceability and food adulteration, have been solved by state-of-the-art ML algorithms. However, new challenges in food VOC detection and analysis are emerging, and researchers are exploring new solutions, e.g., edge/cloud computing, EN sensor drifting, and CSA standardized fabrication, to solve more food quality and safety problems.
背景近年来,由于食品消费的增长和客户对食品质量保证的认识,食品质量和安全受到了更多的关注。挥发性有机化合物(VOCs)检测和分析技术具有无损、环保、连续和实时监测等优点,是评估食品质量的有力工具。机器学习(ML)支持的电子鼻(EN)、比色传感器阵列(CSA)和气相色谱(GC)联用技术(如 GC-MS 和 GC-IMS)正在成为食品科学的热门研究领域。特别是,根据最新的食品挥发性有机化合物检测和分析研究案例,讨论了数据处理、建模和性能评估的 ML 基本原理,随后介绍了 ML 在食品研究不同领域的全面应用,包括原产地溯源、掺假、质量控制和病原体检测。主要发现和结论随着 ML(如并行计算、计算机视觉和气味成像)的发展,CSA 和 EN 等新型食品挥发性有机化合物技术正在取代传统的气相色谱检测和分析技术。食品工业中许多以前难以解决的问题,如食品原产地可追溯性和食品掺假,都已通过最先进的 ML 算法得到解决。然而,食品挥发性有机化合物检测和分析领域的新挑战正在出现,研究人员正在探索新的解决方案,如边缘/云计算、EN 传感器漂移和 CSA 标准化制造,以解决更多食品质量和安全问题。
期刊介绍:
Trends in Food Science & Technology is a prestigious international journal that specializes in peer-reviewed articles covering the latest advancements in technology, food science, and human nutrition. It serves as a bridge between specialized primary journals and general trade magazines, providing readable and scientifically rigorous reviews and commentaries on current research developments and their potential applications in the food industry.
Unlike traditional journals, Trends in Food Science & Technology does not publish original research papers. Instead, it focuses on critical and comprehensive reviews to offer valuable insights for professionals in the field. By bringing together cutting-edge research and industry applications, this journal plays a vital role in disseminating knowledge and facilitating advancements in the food science and technology sector.