4.7 Article

Integrating metabolomic data with machine learning approach for discovery of Q-markers from Jinqi Jiangtang preparation against type 2 diabetes

Journal

CHINESE MEDICINE
Volume 16, Issue 1, Pages -

Publisher

BMC
DOI: 10.1186/s13020-021-00438-x

Keywords

Jinqi Jiangtang; Backpropagation artificial neural network; Machine learning; Q-markers; Mass spectrometry; Metabolomics

Funding

  1. Macao Science and Technology Development Fund [0147/2019/A3]
  2. Research Committee of the University of Macau [MYRG2018-00239-ICMS]
  3. Guangxi Innovation driven Development Special Foundation Project [GuiKe AA18118049]

Ask authors/readers for more resources

This study proposed a strategy combining metabolomics and machine learning methods to screen quality markers from Jinqi Jiangtang preparation. By chemical profiling, statistical processing, anti-diabetes activity detection, and BP-ANN model establishment, 10 potential Q-markers with bioactivity were discovered from Jinqi Jiangtang.
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-2 < 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.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.7
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available