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A comprehensive automatic data analysis strategy for gas chromatography-mass spectrometry based untargeted metabolomics

机译:基于外无理的代谢物的气相色谱 - 质谱综合自动数据分析策略

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摘要

Automatic data analysis for gas chromatography-mass spectrometry (GC-MS) is a challenging task in untargeted metabolomics. In this work, we provide a novel comprehensive data analysis strategy for GC-MS-based untargeted metabolomics (autoGCMSDataAnal) by developing a new automatic strategy for performing TIC peak detection and resolution and proposing a novel time-shift correction and component registration algorithm. autoGCMSDataAnal uses original acquired GC-MS datafiles as input to automatically perform TIC peak detection, component resolution, time-shift correction and component registration, statistical analysis, and compound identification. We utilize standards and complex plant samples to comprehensively investigate the performance of autoGCMSDataAnal. The results suggest that the developed strategy is comparable with several state-of-the-art methods that are widely used in GC-MS-based untargeted metabolomics. Based on the proposed strategy, we develop a user-friendly MATLAB GUI for users who are unfamiliar with programming languages to facilitate their routine analysis, which can be freely downloaded at: http://software.tobaccodb.org/software/autogcmsdataanal. (C) 2019 Elsevier B.V. All rights reserved.
机译:气相色谱 - 质谱(GC-MS)的自动数据分析是未明确的代谢组合中的具有挑战性的任务。在这项工作中,我们通过开发用于执行TIC峰值检测和分辨率的新的自动策略并提出新的时移校正和组件登记算法,为基于GC-MS的未确定代谢组织(AutoGCMSDataAnal)提供了一种新的全面数据分析策略。 autogcmsdataanal使用原始获取的GC-MS数据文件作为输入,以自动执行TIC峰值检测,分量分辨率,时移校正和组分登记,统计分析和复合识别。我们利用标准和复杂的植物样本来全面调查AutoGCMSDataAnanal的性能。结果表明,发达的策略与几种最先进的方法相当,这些方法广泛用于基于GC-MS的未明确的代谢组学。根据拟议的策略,我们为不熟悉的编程语言开发一个用户友好的Matlab GUI,以便于他们的日常分析,可以自由下载:http://software.tobaccodb.org/software/autogcmsdataanal。 (c)2019 Elsevier B.v.保留所有权利。

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