Optimized method for determination of 16 FDA polycyclic aromatic hydrocarbons (PAHs) in mainstream cigarette smoke by gas chromatography-mass spectrometry.

Q1 Chemistry
Jana Jeffery, Maria Carradus, Karolina Songin, Michael Pettit, Karl Pettit, Christopher Wright
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引用次数: 0

Abstract

A gas chromatography-mass spectrometry (GC-MS) method was validated for the determination of 16 polycyclic aromatic hydrocarbons (PAHs) from the FDA list of 93 harmful or potentially harmful constituents of mainstream cigarette smoke (MCS). Target analytes were extracted from total particulate matter using accelerated solvent extraction with a toluene/ethanol solvent mixture. Matrix artefacts were removed by two-step solid-phase extraction process. Three different GC-MS systems [GC-MS (single quadrupole), GC-MS/MS (triple quadrupole) and GC-HRMS (high resolution, magnetic sector)] using the same separation conditions were compared for the analysis of MCS of 3R4F Kentucky reference cigarettes generated under ISO and intense smoking regimes. The high mass resolution (m/∆m ≥ 10,000) and associated selectivity of detection by GC-HRMS provided the highest quality data for the target PAHs in MCS. Owing to the HR data acquisition mode enabling measurement of accurate mass, limits of quantification for PAHs were 5 to 15-fold lower for GC-HRMS than for GC-MS/MS and GC-MS. The presented study illustrates that the optimised sample preparation strategy followed by GC-HRMS analysis provides a fit-for-purpose and robust analytical approach allowing measurement of PAHs at (ultra)low concentrations in MCS. Furthermore, the study illustrates the importance and benefits of robust sample preparation and clean-up to compensate for limited selectivity when low-resolution MS is used.

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利用气相色谱-质谱法测定卷烟主流烟气中 16 种 FDA 多环芳烃 (PAHs) 的优化方法。
采用气相色谱-质谱法(GC-MS)测定了美国食品及药物管理局(FDA)列出的卷烟主流烟雾(MCS)中 93 种有害或潜在有害成分中的 16 种多环芳烃(PAHs)。使用甲苯/乙醇混合溶剂加速溶剂萃取法从总颗粒物中提取目标分析物。采用两步固相萃取法去除基质伪影。比较了三种不同的气相色谱-质谱系统[GC-MS(单四极杆)、GC-MS/MS(三重四极杆)和 GC-HRMS(高分辨率,磁性扇区)],采用相同的分离条件,分析在 ISO 和高浓度吸烟制度下产生的 3R4F 肯塔基参考香烟的 MCS。GC-HRMS 的高质量分辨率(m/∆m ≥ 10,000)和相关的检测选择性为 MCS 中的目标多环芳烃提供了最高质量的数据。由于 HR 数据采集模式能够测量精确的质量,GC-HRMS 对 PAHs 的定量限比 GC-MS/MS 和 GC-MS 低 5 到 15 倍。本研究表明,优化的样品制备策略和 GC-HRMS 分析为测量 MCS 中(超)低浓度的 PAHs 提供了一种适用且可靠的分析方法。此外,该研究还说明了在使用低分辨率 MS 时,为弥补有限的选择性而进行稳健的样品制备和净化的重要性和益处。
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来源期刊
Chemistry Central Journal
Chemistry Central Journal 化学-化学综合
CiteScore
4.40
自引率
0.00%
发文量
0
审稿时长
3.5 months
期刊介绍: BMC Chemistry is an open access, peer reviewed journal that considers all articles in the broad field of chemistry, including research on fundamental concepts, new developments and the application of chemical sciences to broad range of research fields, industry, and other disciplines. It provides an inclusive platform for the dissemination and discussion of chemistry to aid the advancement of all areas of research. Sections: -Analytical Chemistry -Organic Chemistry -Environmental and Energy Chemistry -Agricultural and Food Chemistry -Inorganic Chemistry -Medicinal Chemistry -Physical Chemistry -Materials and Macromolecular Chemistry -Green and Sustainable Chemistry
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