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Advanced detection tools in food fraud: A systematic review for holistic and rational detection method based on research and patents

Annadurai Vinothkanna, Owias Iqbal Dar, Zhu Liu, Ai‐Qun Jia

2024Food Chemistry59 citationsDOIOpen Access PDF

Abstract

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.

Topics & Concepts

Data scienceComputer scienceBiochemical engineeringRisk analysis (engineering)Management scienceBusinessEngineeringIdentification and Quantification in FoodFood Safety and HygieneBacillus and Francisella bacterial research
Advanced detection tools in food fraud: A systematic review for holistic and rational detection method based on research and patents | Litcius