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Simultaneous Determination of Alkaloids and Their Related Tobacco-Specific Nitrosamines in Tobacco Leaves Using LC-MS-MS

机译:使用LC-MS-MS同时测定烟叶中生物碱及其相关的烟草特有亚硝胺

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摘要

Tobacco alkaloids (e.g., nicotine) and their metabolized tobacco-specific nitrosamines (TSNAs) are very important compounds for tobacco quality and safety. A simple and specific liquid chromatography-tandem mass spectrometry method was developed for the simultaneous determination of eight tobacco alkaloids and their related four TSNAs in tobacco leaves. The milled tobacco was extracted using 0.1 mol/L ammonium acetate solution and purified using methanol. Mass spectrometry parameters including declustering potential and collision energy were optimized to ensure that both the TSNAs and the tobacco alkaloids have suitable responses. Recoveries for accuracy were in the range of 80.2-105.2%. Intra-day and inter-day repeatability were in the range of 1.7-12.1% and 6.4-18.7%, respectively. Limit of detection and limit of quantitation were estimated in the range of 6 ng/g-45 mu g/g and 24 ng/g-90 mu g/g, respectively. The established method was applied to investigate the distribution of tobacco alkaloids and TSNAs in four kinds of tobacco. The result showed that the burley and the flue-cured have the highest (0.00047%) and the lowest (0.000024%) percentage of transformation from alkaloids to TSNAs, respectively. Thus, this method can be used for a wide range of samples.
机译:烟草生物碱(例如尼古丁)及其代谢的烟草特有的亚硝胺(TSNAs)对于烟草质量和安全性是非常重要的化合物。建立了同时测定烟叶中8种烟草生物碱及其相关4种TSNA的简便,特异性液相色谱-串联质谱法。用0.1 mol / L乙酸铵溶液提取磨碎的烟草,并用甲醇纯化。优化了质谱参数,包括减聚势和碰撞能,以确保TSNA和烟草生物碱都具有合适的响应。准确性的回收率在80.2-105.2%的范围内。日内和日间重复性分别在1.7-12.1%和6.4-18.7%的范围内。检测限和定量限分别在6 ng / g-45μg / g和24 ng / g-90μg / g范围内。将建立的方法用于研究四种烟草中烟草生物碱和TSNA的分布。结果表明,白肋烟和烤烟分别从生物碱转化为TSNA的转化率最高(0.00047%),最低(0.000024%)。因此,该方法可用于多种样品。

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