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Integrating metabolomic data with machine learning approach for discovery of Q-markers from Jinqi Jiangtang preparation against type 2 diabetes
Yang, Lele1; Xue, Yan1; Wei, Jinchao1; Dai, Qi2; Li, Peng1
2021-12-01
Source PublicationChinese Medicine
ISSN1749-8546
Volume16Issue:1Pages:30
Abstract

Background: Jinqi Jiangtang (JQJT) has been widely used in clinical practice to prevent and treat type 2 diabetes. However, little research has been done to identify and classify its quality markers (Q-markers) associated with anti-diabetes bioactivity. In this study, a strategy combining mass spectrometry-based untargeted metabolomics with backpropagation artificial neural network (BP-ANN)-based machine learning approach was proposed to screen Q-markers from JQJT preparation. Methods: This strategy mainly involved chemical profiling of herbal medicines, statistic processing of metabolomic datasets, detection of different anti-diabetes activities and establishment of BP-ANN model. The chemical features of seventy-eight batches of JQJT extracts were first profiled by using the untargeted UPLC-LTQ-Orbitrap metabolomic approach. The chemical features obtained which were associated with different anti-diabetes activities based on three modes of action were normalized, ranked, and then pre-selected by using ReliefF feature selection. BP-ANN model was then established and optimized to screen Q-markers based on mean impact value (MIV). Results: Optimized BP-ANN architecture was established with high accuracy of R > 0.9983 and relative low error of MSE < 0.0014, which showed better performance than that of partial least square (PLS) model (R < 0.5). Meanwhile, the BP-ANN model was subsequently applied to further screen potential bioactive components from the pre-selected chemical features by calculating their MIVs. With this machine learning model, 10 potential Q-markers with bioactivity were discovered from JQJT. The tested anti-diabetes bioactivities of 78 batches of JQJT could be accurately predicted. Conclusions: This proposed artificial intelligence approach is desirable for quick and easy identification of Q-markers with bioactivity from JQJT preparation.

KeywordBackpropagation Artificial Neural Network Jinqi Jiangtang Machine Learning Mass Spectrometry Metabolomics Q-markers
DOI10.1186/s13020-021-00438-x
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaIntegrative & Complementary Medicine ; Pharmacology & Pharmacy
WOS SubjectIntegrative & Complementary Medicine ; Pharmacology & Pharmacy
WOS IDWOS:000631136000002
PublisherBMCCAMPUS, 4 CRINAN ST, LONDON N1 9XW, ENGLAND
Scopus ID2-s2.0-85102788943
Fulltext Access
Citation statistics
Document TypeJournal article
CollectionInstitute of Chinese Medical Sciences
THE STATE KEY LABORATORY OF QUALITY RESEARCH IN CHINESE MEDICINE (UNIVERSITY OF MACAU)
Corresponding AuthorLi, Peng
Affiliation1.State Key Laboratory of Quality Research in Chinese Medicine, Institute of Chinese Medical Sciences, University of Macau, Macao
2.Chengdu Institute for Food and Drug Control, Chengdu, China
First Author AffilicationInstitute of Chinese Medical Sciences
Corresponding Author AffilicationInstitute of Chinese Medical Sciences
Recommended Citation
GB/T 7714
Yang, Lele,Xue, Yan,Wei, Jinchao,et al. Integrating metabolomic data with machine learning approach for discovery of Q-markers from Jinqi Jiangtang preparation against type 2 diabetes[J]. Chinese Medicine, 2021, 16(1), 30.
APA Yang, Lele., Xue, Yan., Wei, Jinchao., Dai, Qi., & Li, Peng (2021). Integrating metabolomic data with machine learning approach for discovery of Q-markers from Jinqi Jiangtang preparation against type 2 diabetes. Chinese Medicine, 16(1), 30.
MLA Yang, Lele,et al."Integrating metabolomic data with machine learning approach for discovery of Q-markers from Jinqi Jiangtang preparation against type 2 diabetes".Chinese Medicine 16.1(2021):30.
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