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Identifying unknown metabolites using NMR-based metabolic profiling techniques

Authors :
Gary Frost
Isabel Garcia-Perez
John C. Lindon
Queenie Chan
Jose Ivan Serrano-Contreras
Claire L. Boulangé
Paul Elliott
Joram M. Posma
Jeremiah Stamler
Elaine Holmes
Jeremy K. Nicholson
Medical Research Council (MRC)
Medical Research Council
National Institute for Health Research
National Institutes of Health
UK DRI Ltd
Source :
Nature protocols. 15(8)
Publication Year :
2019

Abstract

Metabolic profiling of biological samples provides important insights into multiple physiological and pathological processes but is hindered by a lack of automated annotation and standardized methods for structure elucidation of candidate disease biomarkers. Here we describe a system for identifying molecular species derived from nuclear magnetic resonance (NMR) spectroscopy-based metabolic phenotyping studies, with detailed information on sample preparation, data acquisition and data modeling. We provide eight different modular workflows to be followed in a recommended sequential order according to their level of difficulty. This multi-platform system involves the use of statistical spectroscopic tools such as Statistical Total Correlation Spectroscopy (STOCSY), Subset Optimization by Reference Matching (STORM) and Resolution-Enhanced (RED)-STORM to identify other signals in the NMR spectra relating to the same molecule. It also uses two-dimensional NMR spectroscopic analysis, separation and pre-concentration techniques, multiple hyphenated analytical platforms and data extraction from existing databases. The complete system, using all eight workflows, would take up to a month, as it includes multi-dimensional NMR experiments that require prolonged experiment times. However, easier identification cases using fewer steps would take 2 or 3 days. This approach to biomarker discovery is efficient and cost-effective and offers increased chemical space coverage of the metabolome, resulting in faster and more accurate assignment of NMR-generated biomarkers arising from metabolic phenotyping studies. It requires a basic understanding of MATLAB to use the statistical spectroscopic tools and analytical skills to perform solid phase extraction (SPE), liquid chromatography (LC) fraction collection, LC-NMR-mass spectroscopy and one-dimensional and two-dimensional NMR experiments.

Details

ISSN :
17502799
Volume :
15
Issue :
8
Database :
OpenAIRE
Journal :
Nature protocols
Accession number :
edsair.doi.dedup.....29fb74f5f5856eff077fd58f7549ef8b