食品科学 ›› 2026, Vol. 47 ›› Issue (2): 322-333.doi: 10.7506/spkx1002-6630-20250803-007

• 专题论述 • 上一篇    下一篇

融合机器学习的表面增强拉曼光谱检测技术在食品安全检测中的应用进展

张萌,姚凯,郭巧珍,张晶,牛宇敏,邵兵,孙洁芳   

  1. (1.首都医科大学公共卫生学院,北京 100069;2.北京市疾病预防控制中心,食品安全诊断与溯源技术北京市重点实验室,北京 100013)
  • 出版日期:2026-01-25 发布日期:2026-02-05
  • 基金资助:
    “十四五”国家重点研发计划重点专项(2022YFF1101000)

Machine Learning-Integrated Surface-Enhanced Raman Spectroscopy for Food Safety Detection: A Review

ZHANG Meng, YAO Kai, GUO Qiaozhen, ZHANG Jing, NIU Yumin, SHAO Bing, SUN Jiefang   

  1. (1. School of Public Health, Capital Medical University, Beijing 100069, China; 2. Beijing Key Laboratory of Diagnostic and Traceability Technologies for Food Poisoning, Beijing Center for Disease Prevention and Control, Beijing 100013, China)
  • Online:2026-01-25 Published:2026-02-05

摘要: 表面增强拉曼光谱(surface-enhanced Raman spectroscopy,SERS)因其高灵敏度、经济性和特异性,在食品安全风险因子的现场快速筛查中展现出显著优势。然而,该技术的广泛应用仍面临诸多挑战,包括高维光谱数据的管理与信息挖掘、复杂食品基质对痕量目标物检测的干扰,以及光谱峰重叠导致的解析困难等问题。近年来,深度学习(deep learning,DL)及机器学习(machine learning,ML)的快速发展为SERS数据分析提供了新的解决方案。通过将ML方法(尤其是多元分析工具)与SERS技术深度融合,能够高效处理复杂光谱数据,从而显著提升检测性能,这一方向已成为当前研究的热点。本综述首先简要回顾了SERS和ML基本原理;其次,重点总结了SERS-ML在食品安全风险因子检测中的典型应用,包括病原体(如细菌、病毒)、有机/无机毒物(如农药、抗生素)以及微塑料等的高效识别与定量分析;此外,还探讨了SERS-ML技术在复杂食品体系中应用的关键影响因素和面临的挑战。最后,本文展望了SERS与ML融合技术在实际检测中的潜力,旨在推动该领域的进一步研究和技术创新。

关键词: 表面增强拉曼光谱;机器学习;食品安全;风险因素

Abstract: Surface-enhanced Raman spectroscopy (SERS) offers significant advantages in the on-site rapid screening of food-safety risk factors due to its high sensitivity, specificity, and cost-effectiveness. However, the widespread application of this technique still faces challenges, including high-dimensional spectral data handling, interference from complex food matrices in trace-level detection, and difficulties in resolving overlapping spectral peaks. Recent advances in deep learning (DL) and machine learning (ML) have provided innovative solutions for SERS data analysis. The integration of ML methods (especially multivariate tools) with SERS enables efficient processing of complex spectral data, significantly improving detection performance, and has become a research hotspot. This review first briefly introduces the fundamentals of SERS and ML. Next, it highlights the application of SERS combined with ML (SERS-ML) in detecting food safety risk factors, such as pathogens (e.g., bacteria, viruses), organic/inorganic toxins (e.g., pesticides, antibiotics), and microplastics (MPs), with an emphasis on their identification and quantification. Furthermore, the key challenges and factors for the application of SERS-ML to complex food systems are discussed. Finally, the practical application potential of SERS-ML integration is outlined to inspire further research and technological innovation.

Key words: surface-enhanced Raman spectroscopy; machine learning; food safety; risk factors

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