HerbMet: Enhancing metabolomics data analysis for accurate identification of Chinese herbal medicines using deep learning
Yuyang Sha,
Meiting Jiang,
Gang Luo
et al.
Abstract:IntroductionChinese herbal medicines have been utilized for thousands of years to prevent and treat diseases. Accurate identification is crucial since their medicinal effects vary between species and varieties. Metabolomics is a promising approach to distinguish herbs. However, current metabolomics data analysis and modeling in Chinese herbal medicines are limited by small sample sizes, high dimensionality, and overfitting.ObjectivesThis study aims to use metabolomics data to develop HerbMet, a high‐performanc… Show more
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