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利用拉曼/表面增强拉曼光谱法对食品质量属性和危害物检测的化学计量学算法的深入了解。

Insights into chemometric algorithms for quality attributes and hazards detection in foodstuffs using Raman/surface enhanced Raman spectroscopy.

机构信息

College of Biosystems Engineering and Food Science, Key Laboratory of Agro-Products Postharvest Handling of Ministry of Agriculture and Rural Affairs, Zhejiang Key Laboratory for Agri-Food Processing, National-Local Joint Engineering Laboratory of Intelligent Food Technology and Equipment, Zhejiang University, Hangzhou, People's Republic of China.

School of Food and Biological Engineering, Jiangsu University, Zhenjiang, People's Republic of China.

出版信息

Compr Rev Food Sci Food Saf. 2021 May;20(3):2476-2507. doi: 10.1111/1541-4337.12741. Epub 2021 Apr 21.

Abstract

Raman spectroscopy and surface-enhanced Raman spectroscopy (SERS) have been extensively explored in the design of accurate, transparent, and conclusive food safety and quality control assays. Its hyphenation with chemometric algorithms is instrumental in securing safe food campaigns. To provide valuable recommendations and meet the growing demands for food screening, the current study begins with a brief description of the Raman spectroscopy and SERS theory followed by a comprehensive overview of spectral preprocessing, qualitative algorithms, variable selection methods, and quantitative algorithms. The review emphasizes on the importance of food monitoring practices using multivariate regression models. The applicability of the distinct chemometrics modes toward monitoring pesticide, food and illicit additives, heavy metals, pathogens, and its metabolites in Raman spectroscopy and SERS is covered in dairy, poultry, oil, honey, beverages, and other selected food matrices. Its pertinence toward classification and/or discrimination in food quality and safety monitoring and authentication is examined. Finally, it also complies with the limitations, key challenges, and prospects. The chemometrics processing spectra implemented with simpler or no complicated sample pretreatment step make Raman spectroscopy/SERS technique a potential approach that is expected to achieve simultaneous and fast detection of multiple analytes in food matrices.

摘要

拉曼光谱和表面增强拉曼光谱(SERS)在设计准确、透明和明确的食品安全和质量控制分析方面得到了广泛的探索。它与化学计量学算法的结合对于确保安全食品活动至关重要。为了提供有价值的建议并满足对食品筛选的不断增长的需求,本研究首先简要描述了拉曼光谱和 SERS 理论,然后全面概述了光谱预处理、定性算法、变量选择方法和定量算法。该综述强调了使用多元回归模型进行食品监测实践的重要性。不同化学计量模式在拉曼光谱和 SERS 中监测农药、食品和非法添加剂、重金属、病原体及其代谢物的适用性涵盖了乳制品、家禽、油、蜂蜜、饮料和其他选定的食品基质。它在食品质量和安全监测和认证中的分类和/或区分适用性进行了检查。最后,它还符合限制、关键挑战和前景。化学计量学处理光谱采用更简单或无需复杂样品预处理步骤,使拉曼光谱/SERS 技术成为一种潜在的方法,有望在食品基质中实现多种分析物的同时快速检测。

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