Vinothkanna Annadurai, Dar Owias Iqbal, Liu Zhu, Jia Ai-Qun
School of Life and Health Sciences, Hainan University, Haikou 570228, China; Hainan General Hospital, Hainan Affiliated Hospital of Hainan Medical University, Haikou 570311, China.
School of Chemistry and Chemical Engineering, Hainan University, Haikou 570228, China.
Food Chem. 2024 Jul 15;446:138893. doi: 10.1016/j.foodchem.2024.138893. Epub 2024 Mar 1.
Modern food chain supply management necessitates the dire need for mitigating food fraud and adulterations. This holistic review addresses different advanced detection technologies coupled with chemometrics to identify various types of adulterated foods. The data on research, patent and systematic review analyses (2018-2023) revealed both destructive and non-destructive methods to demarcate a rational approach for food fraud detection in various countries. These intricate hygiene standards and AI-based technology are also summarized for further prospective research. Chemometrics or AI-based techniques for extensive food fraud detection are demanded. A systematic assessment reveals that various methods to detect food fraud involving multiple substances need to be simple, expeditious, precise, cost-effective, eco-friendly and non-intrusive. The scrutiny resulted in 39 relevant experimental data sets answering key questions. However, additional research is necessitated for an affirmative conclusion in food fraud detection system with modern AI and machine learning approaches.
现代食品链供应管理迫切需要减轻食品欺诈和掺假行为。本全面综述探讨了不同的先进检测技术以及化学计量学,以识别各类掺假食品。关于研究、专利和系统综述分析(2018 - 2023年)的数据揭示了在各国区分食品欺诈检测合理方法的破坏性和非破坏性方法。这些复杂的卫生标准和基于人工智能的技术也进行了总结,以供进一步的前瞻性研究。需要用于广泛食品欺诈检测的化学计量学或基于人工智能的技术。系统评估表明,检测涉及多种物质的食品欺诈的各种方法需要简单、快速、精确、经济高效、环保且非侵入性。审查得出了39个相关实验数据集,回答了关键问题。然而,要通过现代人工智能和机器学习方法在食品欺诈检测系统中得出肯定结论,还需要进行更多研究。