右旋糖酐孤儿
甲基苯丙胺
滥用药物
美沙酮
人口
环境化学
药物滥用
毒理
化学
药品
环境卫生
药理学
医学
右美沙芬
生物
精神科
作者
Jie Zhao,Jianjiang Lu,Haijun Zhao,Yujun Yan,Hongyu Dong,Wen Li
标识
DOI:10.1016/j.scitotenv.2023.164310
摘要
Understanding the consumption patterns of substances with abuse potential in the population is critical in combating drug crimes in the region. In recent years, wastewater-based drug monitoring has become a complementary tool worldwide. This study aimed to use this approach to understand the long-term consumption patterns of abuse potential substances in Xinjiang, China (2021–2022) and to provide more detailed and practical information on the current system. High-performance liquid chromatography-tandem mass spectrometry (HPLC-MS/MS) was employed to quantify the levels of abuse potential substances in wastewater. Subsequently, the detection rate and contribution rate of the drug concentrations were evaluated through analysis. Eleven of abuse potential substances were detected in this study. The influent concentrations ranged from (0.48 ng/L) to 133.41 ng/L, with dextrorphan having the highest concentration. The highest detection frequency rates were for morphine (82 %), dextrorphan (59 %), 11-nor-Δ9-tetrahydrocannabinol-9-carboxylic acid (43 %), methamphetamine (36 %), and tramadol (24 %). According to a study on wastewater treatment plants (WWTPs) removal efficiency, compared to the total removal efficiency in 2021, the total removal efficiency of WWTP1, WWTP3, and WWTP4 increased in 2022, while WWTP2 decreased slightly, and WWTP5 did not change significantly. Upon examination of the use of 18 selected analytes, it was determined that methadone, 3,4-methylenedioxy methamphetamine, ketamine, and cocaine were the primary substances of abuse in the Xinjiang region. This study identified significant abuse substances in Xinjiang and identified research priorities. Future studies should consider expanding the study site to obtain a comprehensive understanding of the consumption patterns of these substances in Xinjiang.
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