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Fecal 1H-NMR Metabolomics: A Comparison of Sample Preparation Methods for NMR and Novel in Silico Baseline Correction

Catherine L. J. Brown, Hannah Scott, Crystal Mulik, Amy Freund, Michael P. Opyr, Gerlinde A. S. Metz, G. Douglas Inglis, Tony Montina

2022Metabolites11 citationsDOIOpen Access PDF

Abstract

Analysis of enteric microbiota function indirectly through the fecal metabolome has the potential to be an informative diagnostic tool. However, metabolomic analysis of feces is hampered by high concentrations of macromolecules such as proteins, fats, and fiber in samples. Three methods—ultrafiltration (UF), Bligh–Dyer (BD), and no extraction (samples added directly to buffer, vortexed, and centrifuged)—were tested on multiple rat (n = 10) and chicken (n = 8) fecal samples to ascertain whether the methods worked equally well across species and individuals. An in silico baseline correction method was evaluated to determine if an algorithm could produce spectra similar to those obtained via UF. For both rat and chicken feces, UF removed all macromolecules and produced no baseline distortion among samples. By contrast, the BD and no extraction methods did not remove all the macromolecules and produced baseline distortions. The application of in silico baseline correction produced spectra comparable to UF spectra. In the case of no extraction, more intense peaks were produced. This suggests that baseline correction may be a cost-effective method for metabolomic analyses of fecal samples and an alternative to UF. UF was the most versatile and efficient extraction method; however, BD and no extraction followed by baseline correction can produce comparable results.

Topics & Concepts

MetabolomeMetabolomicsFecesChromatographyExtraction (chemistry)In silicoChemistryUltrafiltration (renal)BiologyBiochemistryMicrobiologyGeneMetabolomics and Mass Spectrometry StudiesGut microbiota and healthDiet and metabolism studies
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