Analysis on Feasibility of Electronic Nose Technology for Rapid Identification of Bletillae Rhizoma and Its Approximate Decoction Pieces / 中国实验方剂学杂志
Chinese Journal of Experimental Traditional Medical Formulae
; (24): 157-165, 2023.
Article
em Zh
| WPRIM
| ID: wpr-973757
Biblioteca responsável:
WPRO
ABSTRACT
ObjectiveTo investigate the feasibility of applying electronic nose technology to rapidly identify Bletillae Rhizoma and its approximate decoction pieces. MethodA total of 134 batches of Bletillae Rhizoma and its approximate decoction pieces, including 45 batches of Bletillae Rhizoma, 30 batches of Gastrodiae Rhizoma, 30 batches of Polygonati Odorati Rhizoma and 29 batches of Bletillae Ochraceae Rhizoma, were collected as test samples. The olfactory sensory data of the samples were collected by PEN3 electronic nose as the independent variable(X). Based on the identification results of the 2020 edition of Chinese Pharmacopoeia and local standards, as well as the high performance liquid chromatography(HPLC) fingerprint and original purchase information of 134 batches of the decoction pieces, the benchmark data Y of the identification model were obtained, and four chemometric methods of principal component analysis-discriminant analysis(PCA-DA), partial least squares-discriminant analysis(PLS-DA), least square-support vector machine(LS-SVM) and K-nearest neighbor(KNN) were used to establish the binary identification model for 45 batches of Bletillae Rhizoma and 89 batches of non-Bletillae Rhizoma and the quadratic identification model of the four kinds of decoction pieces, that is, Y=F(X). ResultAfter leave-one-out cross validation, the positive discrimination rates of the above four models were 97.01%, 97.01%, 98.51% and 97.01% in the binary identification, and 97.76%, 89.55%, 98.51% and 97.01% in the quadratic identification, respectively. The highest positive discrimination rate could reach 98.51% for the binary and quadratic identification models, and LS-SVM algorithm is both the optimal one, the most suitable kernel functions were chosen as radial basis function and linear kernel function, respectively. The optimal models discriminated well with no unclassified samples. ConclusionElectronic nose technology can accurately and rapidly identify Bletillae Rhizoma and its approximate decoction pieces, which can provide new ideas and methods for rapid quality evaluation of other decoction pieces.
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Base de dados:
WPRIM
Idioma:
Zh
Ano de publicação:
2023
Tipo de documento:
Article