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Cited 103 time in webofscience Cited 110 time in scopus
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Structure Annotation of All Mass Spectra in Untargeted Metabolomics

Authors
Blazenovic, IvanaKind, TobiasSa, Michael R.Ji, JianVaniya, ArpanaWancewicz, BenjaminRoberts, Bryan S.Torbasinovic, HrvojeLee, TackMehta, Sajjan S.Showalter, Megan R.Song, HosookKwok, JessicaJahn, DieterKim, JayoungFiehn, Oliver
Issue Date
Feb-2019
Publisher
AMER CHEMICAL SOC
Citation
ANALYTICAL CHEMISTRY, v.91, no.3, pp.2155 - 2162
Journal Title
ANALYTICAL CHEMISTRY
Volume
91
Number
3
Start Page
2155
End Page
2162
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/79624
DOI
10.1021/acs.analchem.8b04698
ISSN
0003-2700
Abstract
Urine metabolites are used in many clinical and biomedical studies but usually only for a few classic compounds. Metabolomics detects vastly more metabolic signals that may be used to precisely define the health status of individuals. However, many compounds remain unidentified, hampering biochemical conclusions. Here, we annotate all metabolites detected by two untargeted metabolomic assays, hydrophilic interaction chromatography (HILIC)-Q Exactive HF mass spectrometry and charged surface hybrid (CSH)-Q Exactive HF mass spectrometry. Over 9,000 unique metabolite signals were detected, of which 42% triggered MS/MS fragmentations in data-dependent mode. On the highest Metabolomics Standards Initiative (MSI) confidence level 1, we identified 175 compounds using authentic standards with precursor mass, retention time, and MS/MS matching. An additional 578 compounds were annotated by precursor accurate mass and MS/MS matching alone, MSI level 2, including a novel library specifically geared at acylcarnitines (CarniBlast). The rest of the metabolome is usually left unannotated. To fill this gap, we used the in silico fragmentation tool CSI:FingerID and the new NIST hybrid search to annotate all further compounds (MSI level 3). Testing the top-ranked metabolites in CSI:Finger ID annotations yielded 40% accuracy when applied to the MSI level 1 identified compounds. We classified all MSI level 3 annotations by the NIST hybrid search using the ClassyFire ontology into 21 superclasses that were further distinguished into 184 chemical classes. ClassyFire annotations showed that the previously unannotated urine metabolome consists of 28% derivatives of organic acids, 16% heterocyclics, and 16% lipids as major classes.
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