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ROIMCR: a powerful analysis strategy for LC-MS metabolomic datasets

机译:ROIMCR:LC-MS代谢组数据集的强大分析策略

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The analysis of LC-MS metabolomic datasets appears to be a challenging task in a wide range of disciplines since it demands the highly extensive processing of a vast amount of data. Different LC-MS data analysis packages have been developed in the last few years to facilitate this analysis. However, most of these strategies involve chromatographic alignment and peak shaping and often associate each “feature” (i.e., chromatographic peak) with a unique m/z measurement. Thus, the development of an alternative data analysis strategy that is applicable to most types of MS datasets and properly addresses these issues is still a challenge in the metabolomics field. Here, we present an alternative approach called ROIMCR to: i) filter and compress massive LC-MS datasets while transforming their original structure into a data matrix of features without losing relevant information through the search of regions of interest (ROIs) in the m/z domain and ii) resolve compressed data to identify their contributing pure components without previous alignment or peak shaping by applying a Multivariate Curve Resolution-Alternating Least Squares (MCR-ALS) analysis. In this study, the basics of the ROIMCR method are presented in detail and a detailed description of its implementation is also provided. Data were analyzed using the MATLAB (The MathWorks, Inc., www.mathworks.com ) programming and computing environment. The application of the ROIMCR methodology is described in detail, with an example of LC-MS data generated in a lipidomic study and with other examples of recent applications. The methodology presented here combines the benefits of data filtering and compression based on the searching of ROI features, without the loss of spectral accuracy. The method has the benefits of the application of the powerful MCR-ALS data resolution method without the necessity of performing chromatographic peak alignment or modelling. The presented method is a powerful alternative to other existing data analysis approaches that do not use the MCR-ALS method to resolve LC-MS data. The ROIMCR method also represents an improved strategy compared to the direct applications of the MCR-ALS method that use less-powerful data compression strategies such as binning and windowing. Overall, the strategy presented here confirms the usefulness of the ROIMCR chemometrics method for analyzing LC-MS untargeted metabolomics data.
机译:LC-MS代谢组数据集的分析似乎是广泛的学科中的具有挑战性的任务,因为它要求大量数据的高度广泛处理。在过去的几年中已经开发了不同的LC-MS数据分析包,以促进此分析。然而,这些策略中的大部分涉及色谱对准和峰成形,并且通常将每个“特征”(即色谱峰值)与唯一的M / Z测量相关联。因此,开发适用于大多数类型的MS数据集并正确解决这些问题的替代数据分析策略在代谢组织领域仍然是一个挑战。在这里,我们提出了一种称为ROIMCR的替代方法:i)滤波器并压缩大规模的LC-MS数据集,同时将其原始结构转换为特征的数据矩阵,而不会通过在M / M /中搜索感兴趣的区域(ROI)来失去相关信息Z域和II)通过应用多变量曲线分辨率 - 交替的最小二乘(MCR-ALS)分析,解决压缩数据以识别其贡献而无需先前的对准或峰值整形。在该研究中,还详细介绍了ROIMCR方法的基础知识,并提供了其实现的详细描述。使用MATLAB(Mathworks,Inc.,www.mathworks.com)编程和计算环境进行分析数据。详细描述了ROIMCR方法的应用,其中脂肪组研究中生成的LC-MS数据和最近应用的其他示例的实例。这里呈现的方法结合了数据过滤和压缩的好处,基于ROI特征的搜索,而不会丢失光谱精度。该方法具有强大的MCR-ALS数据分辨率方法的应用,而不需要进行色谱峰对准或建模的必要性。呈现的方法是对不使用MCR-ALS方法来解析LC-MS数据的其他现有数据分析方法的强大替代方法。与使用较少强大的数据压缩策略(如Xinning和Winding)的MCR-ALS方法的直接应用相比,RoiMCR方法还表示改进的策略。总体而言,本文提出的策略证实了RoiMCR化学计量方法的有用性,用于分析LC-MS无标菌代谢组数据。

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