3.8 Article

Versa DB: Assisting 13C NMR and MS/MS Joint Data Annotation Through On-Demand Databases.

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CHEMISTRYMETHODS
卷 -, 期 -, 页码 -

出版社

WILEY
DOI: 10.1002/cmtd.202300020

关键词

Dereplication; Mass spectrometry; Natural products; Nuclear Magnetic Resonance; Software

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Compound identification in complex mixtures by NMR and MS is best achieved through experimental databases mining. However, these databases often have limitations, leading to the use of predicted databases. This study focuses on filtering a large database before searching for unlikely structure candidates.
Compound identification in complex mixtures by NMR and MS is best achieved through experimental databases (DB) mining. Experimental DB frequently show limitations regarding their completeness, availability or data quality, thus making predicted database of increasing common use. Querying large databases may lead to select unlikely structure candidates. Two approaches to dereplication are thus possible: filtering of a large DB before search or scoring of the results after a large scale search. The present work relies on the former approach. As far as we know, nmrshiftdb2 is the only open-source (NMR)-N-13 chemical shift predictor that can be freely operated in batch mode. CFM-ID 4.0 is one of the best-performing open-source tools for ESI-MS/MS spectra prediction. LOTUS is a freely usable and comprehensive collection of secondary metabolites. Integrating the open source database and software LOTUS, CFM-ID, and nmrshiftdb2 in a dereplication workflow requires presently programming skills, owing to the diversity of data encoding and processing procedures. A graphical user interface that integrates seamlessly chemical structure collection, spectral data prediction and database building still does not exist, as far as we know. The present work proposes a stand-alone software tool that assists the identification of mixture components in a simple way.

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