4.4 Article

Combining DI-ESI-MS and NMR datasets for metabolic profiling

Journal

METABOLOMICS
Volume 11, Issue 2, Pages 391-402

Publisher

SPRINGER
DOI: 10.1007/s11306-014-0704-4

Keywords

DI-ESI-MS; NMR; Metabolomics; Multivariate statistics; Multiblock PCA; Multiblock PLS

Funding

  1. National Institute of Health [R01 AI087668, R21 AI087561, R01 CA163649, P20 RR17675, P30 GM103335]
  2. University of Nebraska
  3. Nebraska Tobacco Settlement Biomedical Research Development Fund
  4. Nebraska Research Council

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Metabolomics datasets are commonly acquired by either mass spectrometry (MS) or nuclear magnetic resonance spectroscopy (NMR), despite their fundamental complementarity. In fact, combining MS and NMR datasets greatly improves the coverage of the metabolome and enhances the accuracy of metabolite identification, providing a detailed and high-throughput analysis of metabolic changes due to disease, drug treatment, or a variety of other environmental stimuli. Ideally, a single metabolomics sample would be simultaneously used for both MS and NMR analyses, minimizing the potential for variability between the two datasets. This necessitates the optimization of sample preparation, data collection and data handling protocols to effectively integrate direct-infusion MS data with one-dimensional (1D) H-1 NMR spectra. To achieve this goal, we report for the first time the optimization of (i) metabolomics sample preparation for dual analysis by NMR and MS, (ii) high throughput, positive-ion direct infusion electrospray ionization mass spectrometry (DI-ESI-MS) for the analysis of complex metabolite mixtures, and (iii) data handling protocols to simultaneously analyze DI-ESI-MS and 1D H-1 NMR spectral data using multiblock bilinear factorizations, namely multiblock principal component analysis (MB-PCA) and multiblock partial least squares (MB-PLS). Finally, we demonstrate the combined use of backscaled loadings, accurate mass measurements and tandem MS experiments to identify metabolites significantly contributing to class separation in MB-PLS-DA scores. We show that integration of NMR and DI-ESI-MS datasets yields a substantial improvement in the analysis of metabolome alterations induced by neurotoxin treatment.

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