UPLC-Q-TOF-MS/MS combined with machine learning methods for screening quality indicators of Hypericum perforatum L.

被引:4
|
作者
Zhang, Zhiyong [1 ]
Ying, Zehua [1 ]
He, Mulan [1 ]
Zhang, Yijing [1 ]
Nie, Wennan [1 ]
Tang, Zhenhao [1 ]
Liu, Wengang [3 ]
Chen, Jingchao [3 ]
Ye, Jianming [3 ]
Li, Wenlong [1 ,2 ]
机构
[1] Tianjin Univ Tradit Chinese Med, Coll Pharmaceut Engn Tradit Chinese Med, Tianjin 301617, Peoples R China
[2] Haihe Lab Modern Chinese Med, Tianjin 301617, Peoples R China
[3] Chengdu Kanghong Pharmaceut Co Ltd, Chengdu 610036, Peoples R China
关键词
Hypericum perforatum L; UPLC-Q-TOF-MS/MS; Machine learning; Quality indicators;
D O I
10.1016/j.jpba.2024.116313
中图分类号
O65 [分析化学];
学科分类号
070302 ; 081704 ;
摘要
Hypericum perforatum L. (HPL), also known as St. John's wort, is one of the extensively researched domestically and internationally as a medicinal plant. In this study, non-targeted metabolomics combined with machine learning methods were used to identify reasonable quality indicators for the holistic quality control of HPL. First, the high-resolution MS data from different samples of HPL were collected, and visualized the chemical compounds through the MS molecular network. A total of 122 compounds were identified. Then, the orthogonal partial least squares-discriminant analysis (OPLS-DA) model was established for comparing the differences in metabolite expression between flower, leaf, and branches. A total of 46 differential metabolites were screened out. Subsequently, analyzing the pharmacological activities of these differential metabolites based on proteinprotein interaction (PPI) network. A total of 25 compounds associated with 473 gene targets were retrieved. Among them, 13 highly active compounds were selected as potential quality markers, and five compounds were ultimately selected as quality control markers for HPL. Finally, three different classifiers (support vector machine (SVM), random forest (RF), and K-nearest neighbor (KNN)) were used to validate whether the selected quality control markers are qualified. When the feature count is set to 122 and 46, the RF model demonstrates optimal performance. As the number of variables decreases, the performance of the RF model degrades. The KNN model and the SVM model also exhibit a decrease in performance but still manage to satisfy the intended requirements. The strategy can be applied to the quality control of HPL and can provide a reference for the quality control of other herbal medicines.
引用
收藏
页数:12
相关论文
共 50 条
  • [21] Development of a Suspect Screening Strategy for Pesticide Metabolites in Fruit and Vegetables by UPLC-Q-Tof-MS
    Bauer, Anna
    Luetjohann, Jens
    Rohn, Sascha
    Jantzen, Eckard
    Kuballa, Juergen
    FOOD ANALYTICAL METHODS, 2018, 11 (06) : 1591 - 1607
  • [22] UPLC-Q-TOF-MS法测定Salinosporamide A的含量
    庄鸿
    黄楷
    乐占线
    福建分析测试, 2020, 29 (03) : 36 - 40
  • [23] Analysis of phospholipids in microalga Nitzschia closterium by UPLC-Q-TOF-MS
    Yan Xiaojun
    Li Haiying
    Xu Jilin
    Zhou Chengxu
    CHINESE JOURNAL OF OCEANOLOGY AND LIMNOLOGY, 2010, 28 (01): : 106 - 112
  • [24] UPLC-Q-TOF-MS/MS fingerprinting for rapid identification of the chemical constituents of Ermiao Wan
    Yan, Guangli
    Zou, Di
    Zhang, Aihua
    Tan, Yunlong
    Sun, Hui
    Wang, Xijun
    ANALYTICAL METHODS, 2015, 7 (03) : 846 - 862
  • [25] Analysis of phospholipids in microalga Nitzschia closterium by UPLC-Q-TOF-MS
    严小军
    李海英
    徐继林
    周成旭
    Journal of Oceanology and Limnology, 2010, (01) : 106 - 112
  • [26] Systematic characterization of the chemical constituents in vitro and in vivo of Qianghuo by UPLC-Q-TOF-MS/MS
    Wu, Meng-Ru
    Tang, Lu-Huan
    Chen, Yan-Yan
    Shu, Le-Xin
    Xu, Yan-Yan
    Yao, Ya-Qi
    Li, Yu -Bo
    FITOTERAPIA, 2024, 172
  • [27] Phytochemical exploration of Neolitsea pallens leaves using UPLC-Q-TOF-MS/MS approach
    Thakur N.
    Murali K.
    Bhadoriya K.
    Tripathi Y.C.
    Varshney V.K.
    Scientific Reports, 14 (1)
  • [28] UPLC-Q-TOF-MS/MS and NMR studies for the structural characterization of degradation impurities of rimegepant
    Vuyyala, Bhuvaneshwari
    Mohanta, Tarzan
    Kollu, Sai Ram Prasad
    Reddy, Jithender G.
    Swain, Debasish
    ANALYTICAL AND BIOANALYTICAL CHEMISTRY, 2025,
  • [29] Complementation of UPLC-Q-TOF-MS and CESI-Q-TOF-MS on identification and determination of peptides from bovine lactoferrin
    Chen, Hui
    Shi, Pujie
    Fan, Fengjiao
    Tu, Maolin
    Xu, Zhe
    Xu, Xianbing
    Du, Ming
    JOURNAL OF CHROMATOGRAPHY B-ANALYTICAL TECHNOLOGIES IN THE BIOMEDICAL AND LIFE SCIENCES, 2018, 1084 : 150 - 157
  • [30] Phytochemical exploration of Neolitsea pallens leaves using UPLC-Q-TOF-MS/MS approach
    Thakur, Nisha
    Murali, K.
    Bhadoriya, Khushaboo
    Tripathi, Y. C.
    Varshney, V. K.
    SCIENTIFIC REPORTS, 2024, 14 (01):