Frontiers in Chemistry (Apr 2023)

Authenticity and species identification of Fritillariae cirrhosae: a data fusion method combining electronic nose, electronic tongue, electronic eye and near infrared spectroscopy

  • Xin-Jing Gui,
  • Xin-Jing Gui,
  • Xin-Jing Gui,
  • Xin-Jing Gui,
  • Xin-Jing Gui,
  • Han Li,
  • Rui Ma,
  • Liang-Yu Tian,
  • Fu-Guo Hou,
  • Hai-Yang Li,
  • Xue-Hua Fan,
  • Yan-Li Wang,
  • Yan-Li Wang,
  • Yan-Li Wang,
  • Yan-Li Wang,
  • Jing Yao,
  • Jing Yao,
  • Jing Yao,
  • Jing Yao,
  • Jun-Han Shi,
  • Jun-Han Shi,
  • Jun-Han Shi,
  • Jun-Han Shi,
  • Lu Zhang,
  • Lu Zhang,
  • Lu Zhang,
  • Lu Zhang,
  • Xue-Lin Li,
  • Xue-Lin Li,
  • Xue-Lin Li,
  • Xue-Lin Li,
  • Rui-Xin Liu,
  • Rui-Xin Liu,
  • Rui-Xin Liu,
  • Rui-Xin Liu,
  • Rui-Xin Liu

DOI
https://doi.org/10.3389/fchem.2023.1179039
Journal volume & issue
Vol. 11

Abstract

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This paper focuses on determining the authenticity and identifying the species of Fritillariae cirrhosae using electronic nose, electronic tongue, and electronic eye sensors, near infrared and mid-level data fusion. 80 batches of Fritillariae cirrhosae and its counterfeits (including several batches of Fritillaria unibracteata Hsiao et K.C. Hsia, Fritillaria przewalskii Maxim, Fritillaria delavayi Franch and Fritillaria ussuriensis Maxim) were initially identified by Chinese medicine specialists and by criteria in the 2020 edition of Chinese Pharmacopoeia. After obtaining the information from several sensors we constructed single-source PLS-DA models for authenticity identification and single-source PCA-DA models for species identification. We selected variables of interest by VIP value and Wilk’s lambda value, and we subsequently constructed the three-source fusion model of intelligent senses and the four-source fusion model of intelligent senses and near-infrared spectroscopy. We then explained and analyzed the four-source fusion models based on the sensitive substances detected by key sensors. The accuracies of single-source authenticity PLS-DA identification models based on electronic nose, electronic eye, electronic tongue sensors and near-infrared were respectively 96.25%, 91.25%, 97.50% and 97.50%. The accuracies of single-source PCA-DA species identification models were respectively 85%, 71.25%, 97.50% and 97.50%. After three-source data fusion, the accuracy of the authenticity identification of the PLS-DA identification model was 97.50% and the accuracy of the species identification of the PCA-DA model was 95%. After four-source data fusion, the accuracy of the authenticity of the PLS-DA identification model was 98.75% and the accuracy of the species identification of the PCA-DA model was 97.50%. In terms of authenticity identification, four-source data fusion can improve the performance of the model, while for the identification of the species the four-source data fusion failed to optimize the performance of the model. We conclude that electronic nose, electronic tongue, electronic eye data and near-infrared spectroscopy combined with data fusion and chemometrics methods can identify the authenticity and determine the species of Fritillariae cirrhosae. Our model explanation and analysis can help other researchers identify key quality factors for sample identification. This study aims to provide a reference method for the quality evaluation of Chinese herbs.

Keywords