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首页> 外文期刊>Analytica chimica acta >Multivariate approach to on-line supercritical fluid extraction - supercritical fluid chromatography - mass spectrometry method development
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Multivariate approach to on-line supercritical fluid extraction - supercritical fluid chromatography - mass spectrometry method development

机译:在线超临界流体提取的多变量方法 - 超临界流体色谱 - 质谱法

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Coupling supercritical fluid extraction (SFE) on-line with supercritical fluid chromatography (SFC) - tandem mass spectrometry (MS/MS) provides a single platform for efficient extraction, separation, and detection in a chemical analysis. SFE-SFC-MS/MS requires consideration of many extraction and chromatographic variables to not only provide the most efficient extraction, but also to analytically transfer the extracted analytes to the column for separation. There is a fundamental lack of understanding of how the variables in SFE affect those in SFC. Typically, a univariate approach is taken in on-line SFE-SFC-MS/MS method development, but this provides little insight into the relative importance of variables and their potential interactions. Here, a multivariate approach was used to develop a better understanding of the synergistic relationship between the extraction and separation processes by focusing on the optimization of extraction parameters for target analytes with a wide range of physicochemical properties in matrices of variable retentivity. The methodology used a set of optimal on-line SFE-SFC-MS/MS extraction parameters for 18 analytes of variable physicochemical properties in three different silica gel-based sample matrices are presented. (C) 2020 Elsevier B.V. All rights reserved.
机译:通过超临界流体色谱(SFC) - 串联质谱(MS / MS)在线耦合超临界流体萃取(SFE)提供了一种用于化学分析中有效提取,分离和检测的单一平台。 SFE-SFC-MS / MS需要考虑许多提取和色谱变量,不仅提供最有效的提取,而且还要分析将提取的分析物分析到柱进行分离。对SFE中变量影响SFC中的那些有根本缺乏了解。通常,在线SFE-SFC-MS / MS方法开发中采用单变量方法,但这几乎没有于对变量及其潜在相互作用的相对重要性。这里,多变量方法通过专注于在可变保持性的矩阵中的靶分析物的优化优化靶分析物的萃取参数的优化来了解提取和分离过程之间的协同关系。该方法使用了三种不同硅胶基样品基质中的一组最佳的在线SFE-SFC-MS / MS提取参数的可变性物理化学性质的18分析物。 (c)2020 Elsevier B.V.保留所有权利。

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