Chinese Journal of Applied Chemistry ›› 2025, Vol. 42 ›› Issue (11): 1510-1523.DOI: 10.19894/j.issn.1000-0518.250115

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Rapid and Quantitative Detection of Cypermethrin in Spinach Based on Surface-Enhanced Raman Spectroscopy Combined with Deep Learning Model

Xiu-Xiu WU1, Zhi-Min LIU1, Dong YANG1, Shun MAO1, Yan-Xin WANG1, De-Hua GUO2(), Fei XU1()   

  1. 1.School of Health Science and Engineering,Shanghai Engineering Research Center of Food Rapid Detection,University of Shanghai for Science and Technology,Shanghai 200093,China
    2.Technical Center for Animal Plant and Food Inspection and Quarantine of Shanghai Customs,Shanghai 200135,China
  • Received:2025-03-15 Accepted:2025-06-16 Published:2025-11-01 Online:2025-12-05
  • Contact: De-Hua GUO,Fei XU
  • About author:xufei8135@126.com
    guodehua@customs.gov.cn
  • Supported by:
    Program of Shanghai Artificial Intelligence to Promote the Reform of Scientific Research Paradigm Enabling Discipline Leaping Plan(Z-2025-312-023)

Abstract:

The residues of pyrethroid pesticides in vegetables and fruits can cause harm to human health. In this work, a surface-enhanced Raman spectroscopy (SERS) coupled with back propagation (BP) neural network deep learning model was established for rapid detection of cypermethrin (CPM) in spinach. Concretely, Ag/ZnO were applied as SERS substrates. Then, the collected SERS spectra were expanded, and the expanded spectral data were preprocessed by Savitzky-Golay (S-G), mean centralization (MC) and the combination of the two methods. Furthermore, BP neural network models were established for the prediction of CPM in actual samples for the original enhanced spectrum and the pretreated spectrum, respectively, and three traditional machine learning models were established for comparison. It was found that the BP model has the best prediction performance based on the original expanded spectrum, with the prediction set RP=0.9902, the root mean square error RMSEP=0.102 and the limit of detection 20 μg/L. The two-tailed paired t-tests showed that there was no significant difference between the standard method LC-MS and this method. The detection can be finished in 5~10 min. This work established an Ag/ZnO-based SERS method coupled with BP neural network model for the rapid and quantitative detection of CPM residues in spinach.

Key words: Cypermethrin, Spinach, Surface-enhanced Raman spectroscopy, Deep learning, Back propagation neural network

CLC Number: