4.6 Article

Combining Feature-Based Molecular Networking and Contextual Mass Spectral Libraries to Decipher Nutrimetabolomics Profiles

期刊

METABOLITES
卷 12, 期 10, 页码 -

出版社

MDPI
DOI: 10.3390/metabo12101005

关键词

human urine; liquid chromatography; untargeted mass spectrometry; computational metabolomics; chemometrics; bioinformatics

资金

  1. Italian Ministry for Education, University, and Research

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This study investigates the annotation and discovery capabilities of the Feature-Based Molecular Networking (FBMN) approach in untargeted metabolomics by adding two nutritionally-relevant mass spectral libraries. The results show that the combination of FBMN approach with these additional libraries achieves a structural annotation coverage comparable to or higher than existing non-commercial annotation workflows. Furthermore, the postprandial behavior of annotated metabolites can be analyzed using a simple chemometric tool.
Untargeted metabolomics approaches deal with complex data hindering structural information for the comprehensive analysis of unknown metabolite features. We investigated the metabolite discovery capacity and the possible extension of the annotation coverage of the Feature-Based Molecular Networking (FBMN) approach by adding two novel nutritionally-relevant (contextual) mass spectral libraries to the existing public ones, as compared to widely-used open-source annotation protocols. Two contextual mass spectral libraries in positive and negative ionization mode of similar to 300 reference molecules relevant for plant-based nutrikinetic studies were created and made publicly available through the GNPS platform. The postprandial urinary metabolome analysis within the intervention of Vaccinium supplements was selected as a case study. Following the FBMN approach in combination with the added contextual mass spectral libraries, 67 berry-related and human endogenous metabolites were annotated, achieving a structural annotation coverage comparable to or higher than existing non-commercial annotation workflows. To further exploit the quantitative data obtained within the FBMN environment, the postprandial behavior of the annotated metabolites was analyzed with Pearson product-moment correlation. This simple chemometric tool linked several molecular families with phase II and phase I metabolism. The proposed approach is a powerful strategy to employ in longitudinal studies since it reduces the unknown chemical space by boosting the annotation power to characterize biochemically relevant metabolites in human biofluids.

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