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Laser desorption/ionization mass spectrometry fingerprinting of complex hydrocarbon mixtures: application to crude oils using data mining techniques

机译:复杂烃混合物的激光解吸/电离质谱指纹图:使用数据挖掘技术应用于原油

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Crude oil fingerprints were obtained from four crude oils by laser desorption/ionization mass spectrometry (LDI-MS) using a silver nitrate cationization reagent. Replicate analyses produced spectral data with a large number of features for each sample (>11000 m/z values) which were statistically analyzed to extract useful information for their differentiation. Individual characteristic features from the data set were identified by a false discovery rate based feature selection procedure based on the analysis of variance models. The selected features were, in turn, evaluated using classification models. A substantially reduced set of 23 features was obtained through this procedure. One oil sample containing a high ratio of saturated/aromatic hydrocarbon content was easily distinguished from the others using this reduced set. The other three samples were more difficult to distinguish by LDI-MS using a silver cationization reagent; however, a minimal number of significant features were still identified for this purpose. Focus is placed on presenting this multivariate statistical method as a rapid and simple analytical procedure for classifying and distinguishing complex mixtures. Copyright (C) 2008 John Wiley & Sons, Ltd.
机译:使用硝酸银阳离子化试剂通过激光解吸/电离质谱(LDI-MS)从四种原油中获得原油指纹。复制分析产生的光谱数据具有每个样品的大量特征(> 11000 m / z值),并对其进行统计分析以提取有用的信息以进行区分。通过基于方差模型分析的基于错误发现率的特征选择程序来识别数据集中的各个特征。依次使用分类模型评估所选特征。通过此过程,获得的特征减少了23个。使用该减少量集可以轻松地区分一个包含高比例的饱和/芳烃含量的油样。使用银阳离子化试剂通过LDI-MS很难区分其他三个样品。但是,仍为此目的确定了最少数量的重要功能。重点放在介绍这种多元统计方法作为一种快速简单的分析程序,以分类和区分复杂的混合物。版权所有(C)2008 John Wiley&Sons,Ltd.

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