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MZmine 2 Data-Preprocessing To Enhance Molecular Networking Reliability

机译:MZMINE 2数据预处理,以提高分子网络可靠性

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摘要

Molecular networking is becoming more and more popular into the metabolomic community to organize tandem mass spectrometry (MS2) data. Even though this approach allows the treatment and comparison of large data sets, several drawbacks related to the MS-Cluster tool routinely used on the Global Natural Product Social Molecular Networking platform (GNPS) limit its potential. MS-Cluster cannot distinguish between chromatography well-resolved isomers as retention times are not taken into account. Annotation with predicted chemical formulas is also not implemented and semiquantification is only based on the number of MS2 scans. We propose to introduce a data preprocessing workflow including the preliminary data treatment by MZmine 2 followed by a homemade Python script freely available to the community that clears the major previously mentioned GNPS drawbacks. The efficiency of this workflow is exemplified with the analysis of six fractions of increasing polarities obtained from a sequential supercritical CO2 extraction of Stillingia lineata leaves.
机译:分子网络变得越来越流行进入代原群体以组织串联质谱(MS2)数据。尽管这种方法允许对大数据集进行处理和比较,但是与全球天然产品社会分子网络平台(GNPS)定期使用的MS集群工具有关的几个缺点限制了其潜力。 MS-Cluster不能区分色谱良好分辨的异构体,因为没有考虑保留时间。附带预测化学式的注释也没有实现,并且仅基于MS2扫描的数量来实现。我们建议引入数据预处理工作流程,包括Mzmine 2的初步数据处理,然后是自制Python脚本可供使社区可用,该社区清除前面提到的主要的GNP缺点。通过分析来自静态超临界CO2叶片的连续超临界CO2提取的六种增加极性的分析,举例说明了该工作流程的效率。

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  • 来源
    《Analytical chemistry》 |2017年第15期|共5页
  • 作者单位

    Univ Paris Saclay UPR 2301 CNRS ICSN F-91198 Gif Sur Yvette France;

    Univ Paris Saclay UPR 2301 CNRS ICSN F-91198 Gif Sur Yvette France;

    Univ Paris Saclay UPR 2301 CNRS ICSN F-91198 Gif Sur Yvette France;

    Univ Paris Saclay UPR 2301 CNRS ICSN F-91198 Gif Sur Yvette France;

    Univ Paris Saclay UPR 2301 CNRS ICSN F-91198 Gif Sur Yvette France;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 分析化学;
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