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Best-Matched Internal Standard Normalization in Liquid Chromatography-Mass Spectrometry Metabolomics Applied to Environmental Samples

机译:应用于环境样品的液相色谱 - 质谱代谢组中最佳匹配的内标归一化

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摘要

The goal of metabolomics is to measure the entire range of small organic molecules in biological samples. In liquid chromatography mass spectrometry-based metabolomics, formidable analytical challenges remain in removing the nonbiological factors that affect chromatographic peak areas. These factors include sample matrix-induced ion suppression, chromatographic quality, and analytical drift. The combination of these factors is referred to as Obscuring variation. Some metabolomics samples can exhibit intense obscuring variation due to matrix-induced ion suppression, rendering large amounts of data,unreliible and difficult to interpret. Existing normalization techniques have limited applicability to these sample types. Here we present a data normalization method to minimize the effects of obscuring variation. We normalize peak areas using a batch-specific normalization process, which matches measured metabolites with isotope-labeled internal standards that behave similarly during the analysis. This method, called best-matched internal-standard (B-MIS) normalization, can be applied to targeted or untargeted metabolomics data sets and yields relative concentrations. We evaluate and demonstrate the utility of B-MIS normalization using marine environmental samples and laboratory grown: cultures of phytoplankton. In untargeted analyses, B-MIS normalization allowed for inclusion of mass features in downstream analyses that would have been considered unreliable without normalization due to obscuring variation. B-MIS normalization for targeted or untargeted metabolomics is freely available at https://github.com/IngallsLabUVV/B-MIS-normalization.
机译:代谢组学的目标是测量生物样品中的整个小型有机分子范围。在液相色谱质谱中,基于质谱的代谢组科,仍然存在突出的分析挑战,除去影响色谱峰面积的非生物学因子。这些因素包括样品矩阵诱导的离子抑制,色谱质量和分析漂移。这些因素的组合被称为模糊变化。一些代谢组虫样品可以表现出由于基质诱导的离子抑制而产生强烈的模糊变化,呈现大量数据,不可靠性且难以解释。现有的归一化技术对这些样品类型具有有限的适用性。在这里,我们提出了一种数据归一化方法,以最大限度地减少模糊变化的影响。我们使用批量级的归一化方法归一化峰面积,该方法与测量的代谢物与同位素标记的内标在分析期间类似的内标。这种称为最佳匹配的内标(B-MIM)归一化的方法可以应用于目标或未出现的代谢组数据集并产生相对浓度。我们使用海洋环境样品和实验室种植的B-MIS标准化的效用:浮游植物的培养物。在未确定的分析中,B-MIS归一化允许包含在下游分析中的质量特征,这些分析在未能造成的变化导致的情况下被认为是不可靠的。 B-MIS正常化进行有针对性的或不相关的代谢组学是免费提供的https://github.com/IngallsLabUVV/B-MIS-normalization。

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