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Evaluation of normalization methods for analysis of LC-MS data

机译:评估用于分析LC-MS数据的归一化方法

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摘要

The purpose of normalization of data generated by liquid chromatography coupled with mass spectrometry (LC-MS) is to reduce bias due to differences in sample collection, biomolecule extraction, and instrument variability. In this paper several normalization methods are reviewed and evaluated based on LC-MS data acquired from experimental and quality control (QC) samples. Specifically, LC-MS data from a metabolomic study aimed at discovering liver cancer biomarkers are analyzed to evaluate the performance of the normalization methods. ANOVA models are used for identification of ions with statistically significant peak intensities between liver cancer and cirrhotic controls. Also, LC-MS data from QC samples are analyzed to assess the ability of the normalization methods in decreasing the variability of ion intensity measurements in multiple runs. Significant run to run variability is observed despite normalizing the LC-MS data by various methods. Thus, it is important to select a suitable normalization method for each data set, as it is difficult to find a method that is applicable for all types of LC-MS data.
机译:通过液相色谱与质谱联用(LC-MS)生成的数据进行归一化的目的是减少由于样品收集,生物分子提取和仪器可变性方面的差异而引起的偏差。本文根据从实验和质量控制(QC)样品获得的LC-MS数据对几种归一化方法进行了综述和评估。具体而言,对旨在发现肝癌生物标记物的代谢组学研究的LC-MS数据进行了分析,以评估标准化方法的性能。 ANOVA模型用于鉴定在肝癌和肝硬化对照之间具有统计学上显着峰值强度的离子。同样,分析了来自QC样品的LC-MS数据,以评估归一化方法在降低多次运行中离子强度测量值的变异性方面的能力。尽管通过各种方法对LC-MS数据进行了标准化,但仍观察到了显着的运行差异。因此,为每个数据集选择合适的标准化方法非常重要,因为很难找到适用于所有类型的LC-MS数据的方法。

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