Application of spectroscopic technology with machine learning in Chinese herbs from seeds to medicinal materials:The case of genus Paris
10.1016/j.jpha.2024.101103
- Author:
Yangna FENG
1
;
Xinyan ZHU
;
Yuanzhong WANG
Author Information
1. Medicinal Plants Research Institute,Yunnan Academy of Agricultural Science,Kunming,650200,China;College of Traditional Chinese Medicine,Yunnan University of Chinese Medicine,Kunming,650500,China
- Publication Type:Journal Article
- Keywords:
Medicinal herbs;
Genus Paris;
Spectroscopic technology;
Quality detection;
Supply chain;
Machine learning
- From:
Journal of Pharmaceutical Analysis
2025;15(2):291-303
- CountryChina
- Language:English
-
Abstract:
To ensure the safety and efficacy of Chinese herbs,it is of great significance to conduct rapid quality detection of Chinese herbs at every link of their supply chain.Spectroscopic technology can reflect the overall chemical composition and structural characteristics of Chinese herbs,with the multi-component and multitarget characteristics of Chinese herbs.This review took the genus Paris as an example,and applications of spectroscopic technology with machine learning(ML)in supply chain of the genus Paris from seeds to medicinal materials were introduced.The specific contents included the confirmation of germplasm resources,identification of growth years,cultivar,geographical origin,and original pro-cessing and processing methods.The potential application of spectroscopic technology in genus Paris was pointed out,and the prospects of combining spectroscopic technology with blockchain were pro-posed.The summary and prospects presented in this paper will be beneficial to the quality control of the genus Paris in all links of its supply chain,so as to rationally use the genus Paris resources and ensure the safety and efficacy of medication.