Mapping of 1H NMR chemical shifts relationship with chemical similarities for the acceleration of metabolic profiling: Application on blood products

Author:

Takis Panteleimon G.12ORCID,Aggelidou Varvara A.3,Sands Caroline J.12,Louka Alexandra4

Affiliation:

1. Section of Bioanalytical Chemistry, Division of Systems Medicine, Department of Metabolism, Digestion and Reproduction Imperial College London London UK

2. National Phenome Centre, Department of Metabolism, Digestion and Reproduction Imperial College London London UK

3. Department of Biological Applications and Technologies University of Ioannina Ioannina Greece

4. Department of Clinical and Experimental Epilepsy, Queen Square Institute of Neurology University College London London UK

Abstract

AbstractOne‐dimensional (1D) proton‐nuclear magnetic resonance (1H‐NMR) spectroscopy is an established technique for the deconvolution of complex biological sample types via the identification/quantification of small molecules. It is highly reproducible and could be easily automated for small to large‐scale bioanalytical, epidemiological, and in general metabolomics studies. However, chemical shift variability is a serious issue that must still be solved in order to fully automate metabolite identification. Herein, we demonstrate a strategy to increase the confidence in assignments and effectively predict the chemical shifts of various NMR signals based upon the simplest form of statistical models (i.e., linear regression). To build these models, we were guided by chemical homology in serum/plasma metabolites classes (i.e., amino acids and carboxylic acids) and similarity between chemical groups such as methyl protons. Our models, built on 940 serum samples and validated in an independent cohort of 1,052 plasma‐EDTA spectra, were able to successfully predict the 1H NMR chemical shifts of 15 metabolites within ~1.5 linewidths (Δv1/2) error range on average. This pilot study demonstrates the potential of developing an algorithm for the accurate assignment of 1H NMR chemical shifts based solely on chemically defined constraints.

Funder

Medical Research Council

National Institute for Health and Care Research

Publisher

Wiley

Subject

General Materials Science,General Chemistry

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