Advances in the application of machine learning in the identification and authentication of synthetic cannabinoids
10.11665/j.issn.1000-5048.2023113003
- VernacularTitle:机器学习在合成大麻素识别鉴定中的应用进展
- Author:
Qing XU
1
;
Min LYU
;
Hongxiao DENG
;
Chi HU
;
Ping XIANG
;
Hang CHEN
Author Information
1. 司法鉴定科学研究院
- Publication Type:Journal Article
- Keywords:
synthetic cannabinoids / machine learning / non-targeted screening
- From:
Journal of China Pharmaceutical University
2024;55(3):316-325
- CountryChina
- Language:Chinese
-
Abstract:
Abstract: Synthetic cannabinoids (SCs) are synthetic psychoactive substances that can pose a public health risk. The SCs are structurally variable and susceptible to structural modification. The rapid emergence of structurally unknown synthetic cannabinoids has led to new challenges in their identification. In recent years, machine learning has made great progress and has been widely applied to other fields, providing new strategies for the identification of unknown synthetic cannabinoids and the inference of possible sources. This paper describes the principles of commonly used machine learning methods and the application of machine learning techniques to mass spectrometry, Raman spectroscopy, metabolomics and quantitative conformational relationships of synthetic cannabinoids, aiming to provide new ideas for the identification of unknown synthetic cannabinoids.