Shi Changzhi, Li Wanli, Wang Yang, Chen Xi, Yu Meixiang, Zhang Hai, You Zecang, Song Maoyong, Deng Xiaojun, Fang Mingliang
Shanghai Institute for Doping Analyses, Shanghai University of Sport, Shanghai 200438, China.
Shanghai Key Laboratory of Atmospheric Particle Pollution and Prevention (LAP3), National Observations and Research Station for Wetland Ecosystems of the Yangtze Estuary, Department of Environmental Science & Engineering, Fudan University, Shanghai 200443, China.
Sci Adv. 2025 Sep 5;11(36):eadw2799. doi: 10.1126/sciadv.adw2799.
Fentanyl and its analogs are a global concern, making their accurate identification essential for public health. Here, we introduce Fentanyl-Hunter, a screening platform that uses a machine learning classifier and multilayer molecular network to select and annotate fentanyl compounds using mass spectrometry (MS). Our classification model, based on 772 fentanyl spectra and spectral binning feature engineering, achieved an score of 0.868 ± 0.02. The multilayer network, based on spectral similarity and paired mass distances, covers more than 87% of known fentanyls. Fentanyl-Hunter identified fentanyl members in biological and environmental samples. During biotransformation, 35 metabolites from four widely consumed fentanyl derivatives were identified. Norfentanyl was the major fentanyl compound in wastewater. Retrospective screening of these biomarkers across more than 605,000 MS files in public datasets revealed fentanyl, sufentanil, norfentanyl, or remifentanil acid in more than 250 samples from eight major countries, indicating the potential widespread presence of fentanyl.
芬太尼及其类似物是一个全球关注的问题,准确识别它们对公共卫生至关重要。在此,我们介绍芬太尼猎手(Fentanyl-Hunter),这是一个筛选平台,它使用机器学习分类器和多层分子网络,通过质谱(MS)对芬太尼化合物进行选择和注释。我们基于772个芬太尼光谱和光谱分箱特征工程构建的分类模型,得分达到0.868±0.02。基于光谱相似性和成对质量距离的多层网络覆盖了超过87%的已知芬太尼。芬太尼猎手在生物和环境样本中识别出了芬太尼成员。在生物转化过程中,鉴定出了四种广泛使用的芬太尼衍生物的35种代谢物。去甲芬太尼是废水中主要的芬太尼化合物。对公共数据集中超过605,000个质谱文件进行这些生物标志物的回顾性筛选发现,来自八个主要国家的250多个样本中存在芬太尼、舒芬太尼、去甲芬太尼或瑞芬太尼酸,这表明芬太尼可能广泛存在。