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Chromatographic preprocessing of GC-MS data for analysis of complex chemical mixtures

机译:GC-MS数据的色谱预处理,用于分析复杂的化学混合物

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摘要

Hyphenated analytical techniques such as gas chromatography-mass spectrometry (GC-MS) can provide extensive amounts of analytical data when applied to environmental samples. Quantitative analyses of complex contaminant mixtures by commercial preprocessing software are time-consuming, and baseline distortion and incomplete peak resolution increase the uncertainty and subjectivity of peak quantification. Here, we present a semi-automatic method developed specific for processing complex first-order chromatographic data (e.g. selected ion monitoring in GC-MS) prior to chemometric data analysis. Chromatograms are converted into semi-quantitative variables (e.g. diagnostic ratios (DRs)) that can be exported directly to appropriate softwares. The method is based on automatic peak matching, initial parameterization, alternating background noise reduction and peak estimation using mathematical functions (Gaussian and exponential-Gaussian hybrid) with few (i.e. three to four) parameters. It is capable of resolving convoluted peaks, and the exponential-Gaussian hybrid improves the description of asymmetric peaks (i.e. fronting and tailing). The optimal data preprocessing suggested in this article consists of estimation of Gaussian peak parameters and subsequent calculation of diagnostic ratios from peak heights. We tested the method on chromatographic data from 20 replicate oil samples and found it to be less time-consuming and subjective than commercial software, and with comparable data quality. (C) 2004 Elsevier B.V. All rights reserved.
机译:诸如气相色谱-质谱(GC-MS)之类的联用分析技术在应用于环境样品时可以提供大量的分析数据。使用商用预处理软件对复杂污染物混合物进行定量分析非常耗时,并且基线失真和峰分辨率不完整会增加峰定量的不确定性和主观性。在这里,我们介绍一种为化学计量数据分析之前处理复杂的一阶色谱数据(例如GC-MS中的选定离子监测)而开发的半自动方法。色谱图将转换为半定量变量(例如诊断率(DR)),可直接将其导出到适当的软件中。该方法基于自动峰值匹配,初​​始参数设置,交替背景噪声降低和使用数学函数(高斯和指数-高斯混合)的极少参数(即三到四个)的峰估计。它能够解析回旋的峰,并且指数-高斯混合改进了对非对称峰(即前向和尾随)的描述。本文建议的最佳数据预处理包括估计高斯峰参数和随后根据峰高计算诊断率。我们对来自20个重复的油样的色谱数据进行了测试,发现该方法比商用软件更省时,更主观,并且具有可比的数据质量。 (C)2004 Elsevier B.V.保留所有权利。

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