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Artikel ; Online: Rapid Determination of Polysaccharides in Cistanche Tubulosa Using Near-Infrared Spectroscopy Combined with Machine Learning.

Wang, Yu / Tian, Zhan-Ping / Xie, Jia-Jia / Luo, Ying / Yao, Jun / Shen, Jing

Journal of AOAC International

2022  Band 106, Heft 4, Seite(n) 1118–1125

Abstract: Background: Cistanche tubulosa, as a homology of medicine and food, not only has a unique medicinal value but also is widely used in healthcare products. Polysaccharide is one of its important quality indicators.: Objective: In this study, an ... ...

Abstract Background: Cistanche tubulosa, as a homology of medicine and food, not only has a unique medicinal value but also is widely used in healthcare products. Polysaccharide is one of its important quality indicators.
Objective: In this study, an analytical model based on near-infrared (NIR) spectroscopy combined with machine learning was established to predict the polysaccharide content of C. tubulosa.
Methods: The polysaccharide content in the samples determined by the phenol-sulfuric acid method was used as a reference value, and machine learning was applied to relate the spectral information to the reference value. Dividing the samples into a calibration set and a prediction set using the Kennard-Stone algorithm. The model was optimized by various preprocessing methods, including Savitzky-Golay (SG), standard normal variate (SNV), multiple scattering correction (MSC), first-order derivative (FD), second-order derivative (SD), and combinations of them. Variable selection was performed through the successive projections algorithm (SPA) and stability competitive adaptive reweighted sampling (sCARS). Four machine learning models were used to build quantitative models, including the random forest (RF), partial least-squares (PLS), principal component regression (PCR), and support vector machine (SVM). The evaluation indexes of the model were the coefficient of determination (R2), root-mean-square error (RMSE), and residual prediction deviation (RPD).
Results: RF performs best among the four machine learning models. R2c (calibration set coefficient of determination) and RMSEC (root mean square error of the calibration set), %, were 0.9763. and 0.3527 for calibration, respectively. R2p (prediction set coefficient of determination), RMSEP (root mean square error of the prediction set), %, and RPD were 0.9230, 0.5130, and 3.33 for prediction, respectively.
Conclusion: The results indicate that NIR combined with the RF is an effective method applied to the quality evaluation of the polysaccharides of C. tubulosa.
Highlights: Four quantitative models were developed to predict the polysaccharide content in C. tubulosa, and good results were obtained. The characteristic variables were basically determined by the sCARS algorithm, and the corresponding characteristic groups were analyzed.
Mesh-Begriff(e) Machine Learning ; Spectroscopy, Near-Infrared ; Cistanche/chemistry ; Polysaccharides/chemistry ; Time Factors
Chemische Substanzen Polysaccharides
Sprache Englisch
Erscheinungsdatum 2022-11-09
Erscheinungsland England
Dokumenttyp Journal Article
ZDB-ID 1103149-9
ISSN 1944-7922 ; 1060-3271
ISSN (online) 1944-7922
ISSN 1060-3271
DOI 10.1093/jaoacint/qsac144
Signatur
Zs.A 1229: Hefte anzeigen Standort:
Je nach Verfügbarkeit (siehe Angabe bei Bestand)
bis Jg. 1994: Bestellungen von Artikeln über das Online-Bestellformular
Jg. 1995 - 2021: Lesesall (1.OG)
ab Jg. 2022: Lesesaal (EG)
Datenquelle MEDical Literature Analysis and Retrieval System OnLINE

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