2020
DOI: 10.1038/s41587-020-0700-3
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Auto-deconvolution and molecular networking of gas chromatography–mass spectrometry data

Abstract: We engineered a machine learning approach, MSHub, to enable auto-deconvolution of gas chromatography-mass spectrometry (GC-MS) data. We then designed workflows to enable the community to store, process, share, annotate, compare and perform molecular networking of GC-MS data within the Global Natural Product Social (GNPS) Molecular Networking analysis platform. MSHub/GNPS performs auto-deconvolution of compound fragmentation patterns via unsupervised non-negative matrix factorization and quantifies the reproduc… Show more

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Cited by 99 publications
(74 citation statements)
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“…In contrast to genes and proteins, metabolites have much greater structural diversity: they are not simply combinations of 4-20 letters of the gene or protein alphabet. The developments and combinations of novel metabolomics approaches and bioinformatics pipelines to search multiple databases for the identification of compounds in a metabolomics profile are crucial and urgently needed (e.g., [76,77]).…”
Section: Challenges Opportunities and Future Directionsmentioning
confidence: 99%
“…In contrast to genes and proteins, metabolites have much greater structural diversity: they are not simply combinations of 4-20 letters of the gene or protein alphabet. The developments and combinations of novel metabolomics approaches and bioinformatics pipelines to search multiple databases for the identification of compounds in a metabolomics profile are crucial and urgently needed (e.g., [76,77]).…”
Section: Challenges Opportunities and Future Directionsmentioning
confidence: 99%
“…In summary, one can observe that there are numerous tools that were either developed from scratch or evolved from their previous versions in 2020 alone. Some tools and approaches found new applications, such as GNPS in the domain of GC–MS-based metabolomics (Aksenov et al 2020 ), or released as a beta/ advanced version, i.e., MS-DIAL for lipidomics (Tsugawa et al 2020 ) workflows. Only the future years will dictate as to which of these 2020 tools live on to see another year in terms of utility/ application, stays maintained and remain available, get improved, and get adopted by the metabolomics research community.…”
Section: Discussionmentioning
confidence: 99%
“…MSHub/ electron ionisation (EI)-Global Natural Product Social (GNPS) Molecular Networking analysis, as a platform enables users to store, process, share, annotate, compare and perform molecular networking of both unit/low resolution and GC–HRMS data (Aksenov et al 2020 ). GNPS-MassIVE is a public data repository for untargeted MS 2 data, EI-MS data, with sample information (metadata) and annotated MS 2 spectra (Aron et al 2020 ).…”
Section: Platform-specific Toolsmentioning
confidence: 99%
“…Although .mzXML, .mzML 12 , .CDF, and Thermo .raw file formats are compatible with GNPS Dashboard and can be directly uploaded for analysis (SI Use Case 9 ), GNPS’s quickstart interface (https://gnps-quickstart.ucsd.edu/conversion) or Proteowizard 13 should be used to convert files to a compatible format. Via deep linking from the GNPS platform, GNPS Dashboard serves as a data explorer and central hub for further data analysis from Classical Molecular Networking 6 ( SI Use Case 9 ) and Feature-based Molecular Networking 14 ( SI Use Cases 1 and 8 ), MSHub GC-MS deconvolution 15 , in silico spectrum annotation via SIRIUS and CSI:FingerID 16 ( SI Use Case 10 ), and MASST 17 ( SI Use Case 5 ).…”
Section: Maintextmentioning
confidence: 99%