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A Guideline to Univariate Statistical Analysis for LC/MS-Based Untargeted Metabolomics-Derived Data

机译:基于LC / MS的无目标代谢组学衍生数据的单变量统计分析指南

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摘要

Several metabolomic software programs provide methods for peak picking, retention time alignment and quantification of metabolite features in LC/MS-based metabolomics. Statistical analysis, however, is needed in order to discover those features significantly altered between samples. By comparing the retention time and MS/MS data of a model compound to that from the altered feature of interest in the research sample, metabolites can be then unequivocally identified. This paper reports on a comprehensive overview of a workflow for statistical analysis to rank relevant metabolite features that will be selected for further MS/MS experiments. We focus on univariate data analysis applied in parallel on all detected features. Characteristics and challenges of this analysis are discussed and illustrated using four different real LC/MS untargeted metabolomic datasets. We demonstrate the influence of considering or violating mathematical assumptions on which univariate statistical test rely, using high-dimensional LC/MS datasets. Issues in data analysis such as determination of sample size, analytical variation, assumption of normality and homocedasticity, or correction for multiple testing are discussed and illustrated in the context of our four untargeted LC/MS working examples.
机译:几种代谢组学软件程序提供了用于基于LC / MS的代谢组学中峰选择,保留时间比对和代谢物特征定量的方法。但是,需要进行统计分析才能发现样本之间显着改变的那些特征。通过将模型化合物的保留时间和MS / MS数据与研究样品中感兴趣的特征变化的保留时间和MS / MS数据进行比较,可以明确鉴定代谢物。本文报告了用于统计分析的工作流程的全面概述,以对相关代谢物特征进行排名,这些代谢物特征将被选择用于进一步的MS / MS实验。我们专注于对所有检测到的特征并行应用的单变量数据分析。使用四个不同的实际LC / MS非靶向代谢组学数据集讨论和说明了此分析的特点和挑战。我们使用高维LC / MS数据集证明了考虑或违反单变量统计检验所依赖的数学假设的影响。在我们的四个非目标LC / MS工作实例的背景下,讨论并举例说明了数据分析中的问题,例如确定样本量,分析变异,假设正态性和均方差性或对多重测试进行校正。

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