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一种通过 LC-MS/MS 测量血清尼古丁、可替宁和降烟碱的简单、快速和灵敏的方法。

A simple, fast, and sensitive method for the measurement of serum nicotine, cotinine, and nornicotine by LC-MS/MS.

机构信息

Department of Clinical Pathology, Cleveland Clinic, Cleveland, OH 44195, USA.

出版信息

J Sep Sci. 2013 Aug;36(15):2394-400. doi: 10.1002/jssc.201300220. Epub 2013 Jul 1.

Abstract

The measurement of nicotine and its metabolites has been used to monitor tobacco use. A high-sensitivity method (<1 ng/mL) is necessary for the measurement in serum or plasma to differentiate nonsmokers from passive smokers. Here, we report a novel LC-MS/MS method to quantify nicotine, cotinine, and nornicotine in serum with high sensitivity. Sample preparation involved only protein precipitation, followed by online turbulent flow extraction and analysis on a porous graphitic carbon column in alkaline conditions. The chromatography time was 4 min. No significant matrix effects or interference were observed. The lower limit of quantification was 0.36, 0.32, and 0.38 ng/mL for nicotine, cotinine, and nornicotine, respectively, while accuracy was 91.6-117.1%. No carryover was observed up to a concentration of 48 , 550, and 48 ng/mL for nicotine, cotinine, and nornicotine, respectively. Total CV was <6.5%. The measurement of nicotine and cotinine was compared with an independent LC-MS/MS method and concordant results were obtained. In conclusion, this new method was simple, fast, sensitive, and accurate. It was validated to measure nicotine, cotinine, and nornicotine in serum for monitoring tobacco use.

摘要

尼古丁及其代谢物的测量已被用于监测烟草使用。为了区分非吸烟者和被动吸烟者,需要在血清或血浆中进行高灵敏度测量(<1ng/mL)。在此,我们报告了一种新的 LC-MS/MS 方法,用于血清中尼古丁、可替宁和去甲烟碱的高灵敏度定量。样品制备仅涉及蛋白质沉淀,然后在碱性条件下在线进行紊流提取和多孔石墨碳柱分析。色谱时间为 4 分钟。未观察到明显的基质效应或干扰。尼古丁、可替宁和去甲烟碱的定量下限分别为 0.36、0.32 和 0.38ng/mL,准确度为 91.6-117.1%。在高达 48、550 和 48ng/mL 的浓度下,均未观察到滞后。总 CV<6.5%。尼古丁和可替宁的测量与独立的 LC-MS/MS 方法进行了比较,得到了一致的结果。总之,该新方法简单、快速、灵敏、准确。它已被验证可用于测量血清中的尼古丁、可替宁和去甲烟碱,以监测烟草使用。

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