Journal of Zhejiang Agricultural Sciences ›› 2025, Vol. 66 ›› Issue (9): 2126-2136.DOI: 10.16178/j.issn.0528-9017.20250226

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Quality analysis of Rubus chingii Hu. based on near-infrared technology

WANG Chuanbao1(), HU Chunli2, ZHAN Jianyong3, LI Haishen1, JIANG Ling4, ZHENG Pinghan5, WANG Zhian1, SUN Jian1,6,*()   

  1. 1. Zhejiang Research Institute of Traditional Chinese Medicine Co., Ltd., Hangzhou 310023, Zhejiang
    2. Chun 'an County Food and Drug Testing Center, Chun'an 311700, Zhejiang
    3. Zhejiang Chun'an County Agricultural and Rural Bureau, Chun'an 311700, Zhejiang
    4. Chun'an County Agricultural and Rural Development Service Center, Chun'an 311700, Zhejiang
    5. Chun'an County Linqi Town Chinese Herbal Medicine Office, Chun'an 311703, Zhejiang
    6. State Key Laboratory for Quality Ensurance and Sustainable Use of Genuine Herbs, Beijing 100700
  • Received:2025-03-25 Online:2025-09-11 Published:2025-10-14

Abstract:

To establish a quantitative prediction model based on near-infrared spectroscopy data, and to realize the rapid prediction of ellagic acid and kaempferol-3-O-rutinoside content in Rubus chingii Hu., the samples from different sources were collected, the near-infrared spectroscopy was collected, and the contents of ellagic acid and kaempferol-3-O-rutinoside were detected by HPLC. Spectral data were preprocessed by MATLAB R2020b software. The competitive adaptive reweighted sampled CARS were used to screen characteristic wavelengths, and partial least squares (PLS) and random forest (RF) models were established to screen the best pretreatment methods, and then the best prediction models were selected. Results showed that the optimal prediction results of ellagic acid were obtained by SNV+FD+CARS+PLS model, and the correlation coefficient ($R_{\mathrm{p}}^{2}$) of the quantitative model test set was 0.903 8. The optimal prediction results of kaempferol-3-O-rutinoside were obtained by SG+FD+CARS+PLS model, and the $R_{\mathrm{p}}^{2}$ of the quantitative model test set was 0.758 6. The NIR data treated by the combination of normalization and first derivative can distinguish Rubus chingii Hu. qualified products in OPLS-DA model, the cumulative variance value R2Y was 0.728, and the prediction rate Q2 was 0.681. The results of this study indicated that the content of ellagic acid and kaempferol-3-O-rutinoside in Rubus chingii Hu. can be quickly predicted by NIR technique, and the quality of raspberry samples can be preliminarily judged.

Key words: Rubus chingii Hu., ellagic acid, kaempferol-3-O-rutinoside, near infrared spectrum

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