A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms

Background: Magnolia bark (Magnolia Officinalis REHD. & WILS. and Magnolia officinalis REHD. & WILS. VAR. biloba REHD. & WILS, Hou Po in Chinese), is widely applied in clinical prescriptions and Chinese patent medicines. Origin place is a crucial factor affecting the quality...

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Main Authors: Jiahui Li, Yuanyang Shao, Yuebao Yao, Yuetong Yu, Guangzhao Cao, Huiqin Zou, Yonghong Yan
Format: Article
Language:English
Published: Elsevier 2020-04-01
Series:Journal of Traditional Chinese Medical Sciences
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2095754820300259
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spelling doaj-b5e7f689575d49b4843c2cf4e8a6d0a72021-04-02T12:06:35ZengElsevierJournal of Traditional Chinese Medical Sciences2095-75482020-04-0172221227A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithmsJiahui Li0Yuanyang Shao1Yuebao Yao2Yuetong Yu3Guangzhao Cao4Huiqin Zou5Yonghong Yan6School of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaSchool of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaCorresponding author.; School of Chinese Materia Medica, Beijing University of Chinese Medicine, Beijing, 102488, ChinaBackground: Magnolia bark (Magnolia Officinalis REHD. & WILS. and Magnolia officinalis REHD. & WILS. VAR. biloba REHD. & WILS, Hou Po in Chinese), is widely applied in clinical prescriptions and Chinese patent medicines. Origin place is a crucial factor affecting the quality of Hou Po, and chemical composition is an important index for evaluating its quality, which is closely related to its clinical efficacy. This study aims to develop a novel method for rapidly, accurately and comprehensively identifying the origin places of Hou Po and predicting the contents of its important chemical components. Methods: High performance liquid chromatography was used to analyze the contents of magnolol and honokiol and ultra-performance liquid chromatography the contents of magnocurarine and magnoflorine. The cold soak method was used to determine the contents of water-soluble extracts. The E-nose and colorimeter were used to determine the odor and color characteristics, respectively, of the collected Hou Po samples. Results: Using several statistical algorithms, different discriminant models based on the E-nose and colorimeter data were established to distinguish the origin place of Hou-Po and predict the chemical components of honokiol, magnolol, magnocurarine, magnoflorine and water-soluble extracts. The results showed that the Random Forest classifier combined with the ten-fold cross-validation method provided the highest classification accuracy for origin place, accounting for 99.53% among these models. The correlation coefficients between predicted and experimental values of the five chemical components were all higher than 0.96. Conclusion: This study has indicated that the electronic nose and colorimeter are promising methods for evaluating the quality of Chinese herbal medicines both qualitatively and quantitatively.http://www.sciencedirect.com/science/article/pii/S2095754820300259Magnolia barkElectronic noseColorimeterOrigin placeQuality evaluation
collection DOAJ
language English
format Article
sources DOAJ
author Jiahui Li
Yuanyang Shao
Yuebao Yao
Yuetong Yu
Guangzhao Cao
Huiqin Zou
Yonghong Yan
spellingShingle Jiahui Li
Yuanyang Shao
Yuebao Yao
Yuetong Yu
Guangzhao Cao
Huiqin Zou
Yonghong Yan
A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
Journal of Traditional Chinese Medical Sciences
Magnolia bark
Electronic nose
Colorimeter
Origin place
Quality evaluation
author_facet Jiahui Li
Yuanyang Shao
Yuebao Yao
Yuetong Yu
Guangzhao Cao
Huiqin Zou
Yonghong Yan
author_sort Jiahui Li
title A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
title_short A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
title_full A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
title_fullStr A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
title_full_unstemmed A novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
title_sort novel quality evaluation method for magnolia bark using electronic nose and colorimeter data with multiple statistical algorithms
publisher Elsevier
series Journal of Traditional Chinese Medical Sciences
issn 2095-7548
publishDate 2020-04-01
description Background: Magnolia bark (Magnolia Officinalis REHD. & WILS. and Magnolia officinalis REHD. & WILS. VAR. biloba REHD. & WILS, Hou Po in Chinese), is widely applied in clinical prescriptions and Chinese patent medicines. Origin place is a crucial factor affecting the quality of Hou Po, and chemical composition is an important index for evaluating its quality, which is closely related to its clinical efficacy. This study aims to develop a novel method for rapidly, accurately and comprehensively identifying the origin places of Hou Po and predicting the contents of its important chemical components. Methods: High performance liquid chromatography was used to analyze the contents of magnolol and honokiol and ultra-performance liquid chromatography the contents of magnocurarine and magnoflorine. The cold soak method was used to determine the contents of water-soluble extracts. The E-nose and colorimeter were used to determine the odor and color characteristics, respectively, of the collected Hou Po samples. Results: Using several statistical algorithms, different discriminant models based on the E-nose and colorimeter data were established to distinguish the origin place of Hou-Po and predict the chemical components of honokiol, magnolol, magnocurarine, magnoflorine and water-soluble extracts. The results showed that the Random Forest classifier combined with the ten-fold cross-validation method provided the highest classification accuracy for origin place, accounting for 99.53% among these models. The correlation coefficients between predicted and experimental values of the five chemical components were all higher than 0.96. Conclusion: This study has indicated that the electronic nose and colorimeter are promising methods for evaluating the quality of Chinese herbal medicines both qualitatively and quantitatively.
topic Magnolia bark
Electronic nose
Colorimeter
Origin place
Quality evaluation
url http://www.sciencedirect.com/science/article/pii/S2095754820300259
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