黄芪甲苷
化学
代谢组学
芒柄花素
单变量
毛花素
质谱法
色谱法
人工智能
机器学习
多元统计
计算机科学
高效液相色谱法
内科学
染料木素
医学
大豆黄酮
作者
Xinyue Yu,Jingxue Nai,Huimin Guo,Xuping Yang,Xiaoying Deng,Xia Yuan,Yunfei Hua,Yuan Tian,Fengguo Xu,Zunjian Zhang,Yin Huang
标识
DOI:10.1016/j.jpha.2020.07.008
摘要
Astragali radix (AR, the dried root of Astragalus) is a popular herbal remedy in both China and the United States. The commercially available AR is commonly classified into premium graded (PG) and ungraded (UG) ones only according to the appearance. To uncover novel sensitive and specific markers for AR grading, we took the integrated mass spectrometry-based untargeted and targeted metabolomics approaches to characterize chemical features of PG and UG samples in a discovery set (n=16 batches). A series of five differential compounds were screened out by univariate statistical analysis, including arginine, calycosin, ononin, formononetin, and astragaloside Ⅳ, most of which were observed to be accumulated in PG samples except for astragaloside Ⅳ. Then, we performed machine learning on the quantification data of five compounds and constructed a logistic regression prediction model. Finally, the external validation in an independent validation set of AR (n=20 batches) verified that the five compounds, as well as the model, had strong capability to distinguish the two grades of AR, with the prediction accuracy > 90%. Our findings present a panel of meaningful candidate markers that would significantly catalyze the innovation in AR grading.
科研通智能强力驱动
Strongly Powered by AbleSci AI