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基于高光谱成像技术的厚朴产地判别研究

HU Jia-qi XUE Zhen-zhen WANG You-you ZHOU Cong YANG Jian YANG Bin

中国中药杂志2025,Vol.50Issue(24):6833-6841,9.
中国中药杂志2025,Vol.50Issue(24):6833-6841,9.DOI:10.19540/j.cnki.cjcmm.20250827.401

基于高光谱成像技术的厚朴产地判别研究

Geographical origin discrimination of Magnoliae Officinalis Cortex based on hyperspectral imaging technology

HU Jia-qi 1XUE Zhen-zhen 2WANG You-you 3ZHOU Cong 3YANG Jian 3YANG Bin1

作者信息

  • 1. State Key Laboratory for Quality Ensurance and Sustainable Use of Dao-di Herbs,Institute of Chinese Materia Medica,China Academy of Chinese Medical Sciences,Beijing 100700,China
  • 2. Artemisinin Research Center,China Academy of Chinese Medical Sciences,Beijing 100700,China
  • 3. National Resource Center for Chinese Materia Medica,China Academy of Chinese Medical Sciences,Beijing 100700,China
  • 折叠

摘要

Abstract

As a commonly used bark medicinal material in clinical practice,Magnoliae Officinalis Cortex(MOC)is widely distributed across different production areas,with noticeable quality differences among origins.However,it is difficult to determine its origin based solely on macroscopic characteristics.In this study,MOC samples(stem bark collected above 1 m from trees aged 15-25 years,shade-dried)from 26 production areas in 8 provinces were selected as research objects.Hyperspectral data of the outer surface,cross-section,and inner surface were collected,and six preprocessing algorithms were applied for spectral denoising.Partial least squares discriminant analysis,support vector machine,random forest,and extreme gradient boosting were then employed to construct provincial-scale origin discrimination models of MOC.Prediction accuracy was used as the evaluation index to screen the optimal model,and classification performance was assessed using confusion matrices.The results showed that,among models established with single-surface hyperspectral data,the optimal model was built with full-band inner-surface data preprocessed by first derivative and modeled with random forest.Among dual-surface combinations,the optimal model was established with full-band"inner surface+cross-section"data preprocessed by first derivative and modeled with random forest.The prediction accuracies of these two models were comparable,95.68%(inner surface)and 95.99%(inner surface+cross-section),slightly lower than that of the three-surface combination model("inner surface+cross-section+outer surface",97.22%).To eliminate redundant hyperspectral information and improve modeling efficiency,competitive adaptive reweighted sampling,successive projection algorithm,and uninformative variable elimination were applied to extract characteristic wavelengths from the inner surface dataset and the three-surface combination dataset.The results indicated that the prediction accuracy of the inner-surface characteristic wavelength model was 94.14%,slightly lower than that of the full-band model,while that of the three-surface combination characteristic wavelength model reached 97.53%,comparable to the full-band model.This study provides a rapid and effective discrimination model for determining the origin of MOC,as well as experimental evidence for constructing models based on characteristic wavelengths.

关键词

厚朴/高光谱成像技术/化学计量学/产地判别/数据融合/特征波长

Key words

Magnoliae Officinalis Cortex/hyperspectral imaging technology/chemometrics/origin discrimination/data fusion/characteristic wavelength

引用本文复制引用

HU Jia-qi,XUE Zhen-zhen,WANG You-you,ZHOU Cong,YANG Jian,YANG Bin..基于高光谱成像技术的厚朴产地判别研究[J].中国中药杂志,2025,50(24):6833-6841,9.

基金项目

国家重点研发计划项目(2022YFC3500904) (2022YFC3500904)

中国中药杂志

OA北大核心

1001-5302

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