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Systematic classification of unknown metabolites using high-resolution fragmentation mass spectra
by
Gerwick, William H.
, Ludwig, Marcus
, Reher, Raphael
, Hoffmann, Martin A.
, Nothias, Louis-Félix
, Dorrestein, Pieter C.
, Rousu, Juho
, Dührkop, Kai
, Fleischauer, Markus
, Petras, Daniel
, Böcker, Sebastian
in
631/114/1305
/ 631/92/320
/ Agriculture
/ Animals
/ Annotations
/ Aquatic Organisms - chemistry
/ Artificial neural networks
/ Bioinformatics
/ Biological Products - analysis
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Chromatography, Liquid
/ Colonization
/ Computational biology
/ Computational Biology - methods
/ Computer applications
/ Digestive system
/ Euphorbia - chemistry
/ Fragmentation
/ Gastrointestinal Microbiome
/ Identification and classification
/ Ions
/ Life Sciences
/ Marine biology
/ Mass spectra
/ Mass spectrometry
/ Mass spectroscopy
/ Metabolites
/ Metabolomics
/ Metabolomics - methods
/ Mice
/ Microorganisms
/ Natural products
/ Neural networks
/ Neural Networks, Computer
/ Scientific imaging
/ Software
/ Spectroscopy
/ Tandem Mass Spectrometry
2021
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Systematic classification of unknown metabolites using high-resolution fragmentation mass spectra
by
Gerwick, William H.
, Ludwig, Marcus
, Reher, Raphael
, Hoffmann, Martin A.
, Nothias, Louis-Félix
, Dorrestein, Pieter C.
, Rousu, Juho
, Dührkop, Kai
, Fleischauer, Markus
, Petras, Daniel
, Böcker, Sebastian
in
631/114/1305
/ 631/92/320
/ Agriculture
/ Animals
/ Annotations
/ Aquatic Organisms - chemistry
/ Artificial neural networks
/ Bioinformatics
/ Biological Products - analysis
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Chromatography, Liquid
/ Colonization
/ Computational biology
/ Computational Biology - methods
/ Computer applications
/ Digestive system
/ Euphorbia - chemistry
/ Fragmentation
/ Gastrointestinal Microbiome
/ Identification and classification
/ Ions
/ Life Sciences
/ Marine biology
/ Mass spectra
/ Mass spectrometry
/ Mass spectroscopy
/ Metabolites
/ Metabolomics
/ Metabolomics - methods
/ Mice
/ Microorganisms
/ Natural products
/ Neural networks
/ Neural Networks, Computer
/ Scientific imaging
/ Software
/ Spectroscopy
/ Tandem Mass Spectrometry
2021
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Systematic classification of unknown metabolites using high-resolution fragmentation mass spectra
by
Gerwick, William H.
, Ludwig, Marcus
, Reher, Raphael
, Hoffmann, Martin A.
, Nothias, Louis-Félix
, Dorrestein, Pieter C.
, Rousu, Juho
, Dührkop, Kai
, Fleischauer, Markus
, Petras, Daniel
, Böcker, Sebastian
in
631/114/1305
/ 631/92/320
/ Agriculture
/ Animals
/ Annotations
/ Aquatic Organisms - chemistry
/ Artificial neural networks
/ Bioinformatics
/ Biological Products - analysis
/ Biomedical and Life Sciences
/ Biomedical Engineering/Biotechnology
/ Biomedicine
/ Biotechnology
/ Chromatography, Liquid
/ Colonization
/ Computational biology
/ Computational Biology - methods
/ Computer applications
/ Digestive system
/ Euphorbia - chemistry
/ Fragmentation
/ Gastrointestinal Microbiome
/ Identification and classification
/ Ions
/ Life Sciences
/ Marine biology
/ Mass spectra
/ Mass spectrometry
/ Mass spectroscopy
/ Metabolites
/ Metabolomics
/ Metabolomics - methods
/ Mice
/ Microorganisms
/ Natural products
/ Neural networks
/ Neural Networks, Computer
/ Scientific imaging
/ Software
/ Spectroscopy
/ Tandem Mass Spectrometry
2021
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Systematic classification of unknown metabolites using high-resolution fragmentation mass spectra
Journal Article
Systematic classification of unknown metabolites using high-resolution fragmentation mass spectra
2021
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Overview
Metabolomics using nontargeted tandem mass spectrometry can detect thousands of molecules in a biological sample. However, structural molecule annotation is limited to structures present in libraries or databases, restricting analysis and interpretation of experimental data. Here we describe CANOPUS (class assignment and ontology prediction using mass spectrometry), a computational tool for systematic compound class annotation. CANOPUS uses a deep neural network to predict 2,497 compound classes from fragmentation spectra, including all biologically relevant classes. CANOPUS explicitly targets compounds for which neither spectral nor structural reference data are available and predicts classes lacking tandem mass spectrometry training data. In evaluation using reference data, CANOPUS reached very high prediction performance (average accuracy of 99.7% in cross-validation) and outperformed four baseline methods. We demonstrate the broad utility of CANOPUS by investigating the effect of microbial colonization in the mouse digestive system, through analysis of the chemodiversity of different
Euphorbia
plants and regarding the discovery of a marine natural product, revealing biological insights at the compound class level.
Unknown metabolites are classified from mass spectrometry data.
Publisher
Nature Publishing Group US,Nature Publishing Group
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