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With Guide of Spike-in Experiment for Optimizing Workflow of LC-MS data Processing in Metabolomics

机译:通过尖峰指导 - 在代谢组科中优化LC-MS数据处理的工作流程

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A systematical study was performed to investigate the processing workflow of LC-MS-based metabolomics data by optimizing parameter settings in XCMS software and comparing different preprocessing methods. Here we use a spike-in experiment combining with design of experiment (DoE) approaches for optimizing XCMS software parameters. A trusted index, which was based on accuracy evaluation of the spike-in data, was employed to assess the optimizing process. After optimizing the XCMS setting, the trusted index was improved from 3.67 to 30 and positive rate of spike-in standards also increased from 20% to 100%. Moreover, different data preprocessing methods, such as normalization, different scaling methods were also investigated on spike-in data since they were found to affect the outcome of the data analysis and ions features identification. Accordingly, UN-normalization and Pareto scaling were chosen as appropriate preprocessing methods to deal with LC-MS data through the evaluation of match index (mainly applied multivariate statistics methods). Finally, the optimized workflow was applied to experimental samples that acquired from metabolomics experiment and analyzed randomly with spike-in sample, which indicated a better applicability in formal metabolomics experiment. It is concluded that the proposed data processing workflow could be used as feasible approach for improving the quality of LC-MS-based metabolomics data and ensured the veracity of metabolites identification in data processing procedures to a certain extent.
机译:通过优化XCMS软件中的参数设置并进行比较不同预处理方法,进行系统研究以研究基于LC-MS基于代谢组数据的处理工作流程。在这里,我们使用与实验设计(DOE)方法组合的峰值实验,以优化XCMS软件参数。采用基于Spike-In数据的准确性评估的可信指数来评估优化过程。优化XCMS设置后,可信指数从3.67增加到30到30,峰值标准的阳性率也从20%增加到100%。此外,在峰值数据上还研究了不同数据预处理方法,例如归一化,不同的缩放方法,因为它们被发现影响数据分析和离子的结果识别。因此,选择未归一化和帕累托缩放作为适当的预处理方法,通过评估匹配指数(主要应用多变量统计方法)来处理LC-MS数据。最后,将优化的工作流程应用于从代谢组科实验中获取的实验样品,并随机用尖峰样本进行分析,这表明了在正式的代谢组科实验中的更好适用性。结论是,所提出的数据处理工作流程可以用作改善基于LC-MS的代谢组数据的质量的可行方法,并确保了代谢物在数据处理程序中确定的真实性在一定程度上。

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