色谱法
化学
苯甲酰胍
固相萃取
萃取(化学)
样品制备
高效液相色谱法
可待因
电喷雾电离
醋酸铵
三级四极质谱仪
质谱法
选择性反应监测
串联质谱法
代谢物
药理学
医学
生物化学
吗啡
作者
Nora Badawi,Kirsten Wiese Simonsen,Anni Steentoft,Inger Marie Bernhoft,Kristían Línnet
出处
期刊:Clinical Chemistry
[American Association for Clinical Chemistry]
日期:2009-10-01
卷期号:55 (11): 2004-2018
被引量:118
标识
DOI:10.1373/clinchem.2008.122341
摘要
The European DRUID (Driving under the Influence of Drugs, Alcohol And Medicines) project calls for analysis of oral fluid (OF) samples, collected randomly and anonymously at the roadside from drivers in Denmark throughout 2008-2009. To analyze these samples we developed an ultra performance liquid chromatography-tandem mass spectrometry (UPLC-MS/MS) method for detection of 29 drugs and illicit compounds in OF. The drugs detected were opioids, amphetamines, cocaine, benzodiazepines, and Delta-9-tetrahydrocannabinol.Solid-phase extraction was performed with a Gilson ASPEC XL4 system equipped with Bond Elut Certify sample cartridges. OF samples (200 mg) diluted with 5 mL of ammonium acetate/methanol (vol/vol 90:10) buffer were applied to the columns and eluted with 3 mL of acetonitrile with aqueous ammonium hydroxide. Target drugs were quantified by use of a Waters ACQUITY UPLC system coupled to a Waters Quattro Premier XE triple quadrupole (positive electrospray ionization mode, multiple reaction monitoring mode).Extraction recoveries were 36%-114% for all analytes, including Delta-9-tetrahydrocannabinol and benzoylecgonine. The lower limit of quantification was 0.5 mug/kg for all analytes. Total imprecision (CV) was 5.9%-19.4%. With the use of deuterated internal standards for most compounds, the performance of the method was not influenced by matrix effects. A preliminary account of OF samples collected at the roadside showed the presence of amphetamine, cocaine, codeine, Delta-9-tetrahydrocannabinol, tramadol, and zopiclone.The UPLC-MS/MS method makes it possible to detect all 29 analytes in 1 chromatographic run (15 min), including Delta-9-tetrahydrocannabinol and benzoylecgonine, which previously have been difficult to incorporate into multicomponent methods.
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