Abstract
Human untargeted metabolomics studies annotate only ~10% of molecular features. We introduce reference-data-driven analysis to match metabolomics tandem mass spectrometry (MS/MS) data against metadata-annotated source data as a pseudo-MS/MS reference library. Applying this approach to food source data, we show that it increases MS/MS spectral usage 5.1-fold over conventional structural MS/MS library matches and allows empirical assessment of dietary patterns from untargeted data.
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CITATION STYLE
Gauglitz, J. M., West, K. A., Bittremieux, W., Williams, C. L., Weldon, K. C., Panitchpakdi, M., … Dorrestein, P. C. (2022). Enhancing untargeted metabolomics using metadata-based source annotation. Nature Biotechnology, 40(12), 1774–1779. https://doi.org/10.1038/s41587-022-01368-1
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