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Validation of the Regions of Interest Multivariate Curve Resolution (ROIMCR) procedure for untargeted LC-MS lipidomic analysis

机译:验证无序曲线分辨率(RoIMCR)血清脂质族分析的多变量曲线分辨率(ROIMCR)程序

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摘要

Untargeted liquid chromatography coupled to mass spectrometry (LC-MS) analysis generates massive amounts of information-rich mass data which presents storage and processing challenges. In this work, the validation of a recently proposed procedure for LC-MS data compression and processing is presented, using as example the analysis of lipid mixtures. This method consists of a preliminary selection of the Regions of Interest of the LC-MS data (MSROI) coupled to their throughout chemometric analysis by the Multivariate Curve Resolution Alternating Least Squares method (MCR-ALS). The proposed data selection procedure is based on the search of the most significant mass traces regions with high mass densities. This allows for a drastic reduction of the MS data size and of the computer storage requirements, without any significant loss neither of spectral resolution nor of accuracy on m/z measures. The combination of the MSROI data compression and MCR-ALS data analysis procedures in the new ROIMCR procedure has the main advantage of not requiring neither the chromatographic peak alignment nor the chromatographic peak shape modelling used in many other procedures as a pre-treatment step of the data analysis. The proposed ROIMCR procedure is tested in the analysis of the LC-MS experimental data coming from different lipid mixtures and of a melanoma cell line culture sample with satisfactory results. The proposed strategy is shown to be a general, fast, reliable and easy to use method for general untargeted LC-MS metabolic and lipidomic data analysis type of studies. (C) 2018 Published by Elsevier B.V.
机译:与质谱(LC-MS)分析偶联的未确定液相色谱法产生大量的丰富的富含信息众规则数据,这提出了储存和加工挑战。在这项工作中,使用作为脂质混合物的分析,呈现了最近提出的LC-MS数据压缩和处理程序的验证。该方法包括通过多变量曲线分辨率交替最小二乘法(MCR-ALS)耦合到它们整个化学计量分析的LC-MS数据(MSROi)的兴趣区域的初步选择。所提出的数据选择程序是基于具有高质量密度的最重要的质量迹线区域。这允许急剧减少MS数据大小和计算机存储要求,而没有任何显着的损失,也没有对M / Z测量的准确度。新的ROIMCR过程中MSROI数据压缩和MCR-ALS数据分析程序的组合具有不需要色谱峰对准的主要优点,也不需要许多其他程序中使用的色谱峰形状建模作为作为预处理步骤数据分析。在分析来自不同脂质混合物的LC-MS实验数据和黑素瘤细胞系培养样品的分析中进行了拟议的RoiMCR程序,以满意的结果。拟议的策略显示为一般,快速,可靠且易于使用的一般未确定的LC-MS代谢和脂质素数据分析类型的研究方法。 (c)2018由elsevier b.v发布。

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