Stephanie Nino-Suastegui, Eve Painter, Jameson W Sprankle, Jillian J Morrison, Jennifer A Faust, Rebekah Gray
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In total, 91 possible compounds were tentatively identified in snow, and 17 were successfully confirmed and semi-quantified with reference standards. These contaminants were mostly anthropogenic in origin and included six herbicides, three insect repellants, one insecticide metabolite, and one fungicide. The most prominent compounds present in all samples were N-cyclohexylformamide (known contaminant in tire leachate), DEET (insect repellent), and dimethyl phthalate (plasticizer), with median deposition fluxes of 4032, 284, and 262 ng m<sup>-2</sup>, respectively. Three additional compounds were detected in 100% of samples: coumarin (phytochemical and fragrance additive), 5-methylbenzotriazole (antifreeze component), and quinoline (heterocyclic aromatic). The Peto-Peto test revealed statistically significant differences in deposition fluxes for these six contaminants (p < 0.05), with weak but statistically significant positive associations between coumarin and DEET and between coumarin and quinoline according to a Kendall's tau correlation analysis. These findings demonstrate the utility of in silico analysis to complement MS/MS matching with experimental databases. 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引用次数: 0
摘要
污染物释放到大气中,经过区域和远程运输,可以通过降雪沉积回地球。当雪融化时,这些污染物重新进入环境,有时远离它们原来的排放源。在这里,我们提出了北美雪中有机污染物的第一个综合表征。在三年的时间里,在美国中部收集了新鲜的降雪样本,并通过液相色谱-高分辨率质谱法进行了测量,以进行可疑筛选和非靶向分析。将得到的数据集与实验MS/MS文库进行筛选,并进行补充的计算机MS/MS分析。在积雪中初步鉴定出91种可能的化合物,其中17种被成功确认并采用参比标准进行半定量。这些污染物主要是人为来源的,包括6种除草剂、3种驱虫剂、1种杀虫剂代谢物和1种杀菌剂。所有样品中最突出的化合物是n -环己基甲酰胺(轮胎渗滤液中已知的污染物)、避蚊胺(驱蚊剂)和邻苯二甲酸二甲酯(增殖剂),平均沉积通量分别为4032、284和262 ng m-2。另外三种化合物在100%的样品中被检测到:香豆素(植物化学和香料添加剂),5-甲基苯并三唑(防冻成分)和喹啉(杂环芳烃)。Peto-Peto测试显示,这六种污染物的沉积通量差异具有统计学意义(p < 0.05),根据Kendall's tau相关分析,香豆素和DEET之间以及香豆素和喹啉之间存在微弱但具有统计学意义的正相关。这些发现证明了计算机分析在补充MS/MS与实验数据库匹配方面的实用性。即便如此,数据集中仍有数千个未确定的特征,这突出了当前策略在环境样本非目标分析中的局限性。
Non-targeted analysis and suspect screening of organic contaminants in temperate snowfall using liquid chromatography high-resolution mass spectrometry.
Contaminants released into the atmosphere that undergo regional and long-range transport can deposit back to Earth through snowfall. When snow melts, these contaminants re-enter the environment, sometimes far from their original emission sources. Here we present the first comprehensive characterization of organic contaminants in snow from North America. Fresh snowfall samples were collected in the central United States over a three-year period and measured by liquid chromatography high-resolution mass spectrometry for suspect screening and non-targeted analysis. The resulting data set was screened against experimental MS/MS libraries and underwent supplemental in silico MS/MS analysis. In total, 91 possible compounds were tentatively identified in snow, and 17 were successfully confirmed and semi-quantified with reference standards. These contaminants were mostly anthropogenic in origin and included six herbicides, three insect repellants, one insecticide metabolite, and one fungicide. The most prominent compounds present in all samples were N-cyclohexylformamide (known contaminant in tire leachate), DEET (insect repellent), and dimethyl phthalate (plasticizer), with median deposition fluxes of 4032, 284, and 262 ng m-2, respectively. Three additional compounds were detected in 100% of samples: coumarin (phytochemical and fragrance additive), 5-methylbenzotriazole (antifreeze component), and quinoline (heterocyclic aromatic). The Peto-Peto test revealed statistically significant differences in deposition fluxes for these six contaminants (p < 0.05), with weak but statistically significant positive associations between coumarin and DEET and between coumarin and quinoline according to a Kendall's tau correlation analysis. These findings demonstrate the utility of in silico analysis to complement MS/MS matching with experimental databases. Even so, thousands of unidentified features remained in the data set, highlighting the limitations of current strategies in non-targeted analysis of environmental samples.
期刊介绍:
The Environmental Research journal presents a broad range of interdisciplinary research, focused on addressing worldwide environmental concerns and featuring innovative findings. Our publication strives to explore relevant anthropogenic issues across various environmental sectors, showcasing practical applications in real-life settings.