Literature DB >> 31114813

An integrated approach for mixture analysis using MS and NMR techniques.

Stefan Kuhn1, Simon Colreavy-Donnelly, Juliana Santana de Souza, Ricardo Moreira Borges.   

Abstract

We suggest an improved software pipeline for mixture analysis. The improvements include combining tandem MS and 2D NMR data for a reliable identification of the constituents in an algorithm based on network analysis aiming for a robust and reliable identification routine. An important part of this pipeline is the use of open-data repositories, although it is not totally reliant on them. The NMR identification step emphasizes robustness and is less sensitive towards changes in data acquisition and processing than existing methods. The process starts with LC-ESI-MSMS based molecular network dereplication using data from the GNPS collaborative collection. We identify closely related structures by propagating structure elucidation through edges in the network. Those identified compounds are added on top of a candidate list for the following NMR filtering method that predicts HSQC and HMBC NMR data. The similarity of the predicted spectra of the set of closely related structures to the measured spectra of the mixture sample is taken as one indication of the most likely candidates for its compounds. The other indication is the match of the spectra to clusters built by a network analysis from the spectra of the mixture. The sensitivity gap between NMR and MS is anticipated and it will be reflected naturally by the eventual identification of fewer compounds, but with a higher confidence level, after the NMR analysis step. The contributions of the paper are an algorithm combining MS and NMR spectroscopy and a robust nJCH network analysis to explore the complementary aspects of both techniques. This delivers good results, even if a perfect computational separation of the compounds in the mixture is not possible. All of the scripts are freely available to aid studies such as with plants, marine organisms, and microorganism natural product chemistry and metabolomics, as those are the driving forces for this project.

Year:  2019        PMID: 31114813     DOI: 10.1039/c8fd00227d

Source DB:  PubMed          Journal:  Faraday Discuss        ISSN: 1359-6640            Impact factor:   4.008


  4 in total

Review 1.  Advances in decomposing complex metabolite mixtures using substructure- and network-based computational metabolomics approaches.

Authors:  Mehdi A Beniddir; Kyo Bin Kang; Grégory Genta-Jouve; Florian Huber; Simon Rogers; Justin J J van der Hooft
Journal:  Nat Prod Rep       Date:  2021-11-17       Impact factor: 13.423

2.  Deep Learning-Based Method for Compound Identification in NMR Spectra of Mixtures.

Authors:  Weiwei Wei; Yuxuan Liao; Yufei Wang; Shaoqi Wang; Wen Du; Hongmei Lu; Bo Kong; Huawu Yang; Zhimin Zhang
Journal:  Molecules       Date:  2022-06-07       Impact factor: 4.927

Review 3.  Metabolomics as a Prospective Tool for Soybean (Glycine max) Crop Improvement.

Authors:  Efficient Ncube; Keletso Mohale; Noluyolo Nogemane
Journal:  Curr Issues Mol Biol       Date:  2022-09-12       Impact factor: 2.976

4.  Untargeted metabolomics approach to discriminate mistletoe commercial products.

Authors:  Cécile Vanhaverbeke; David Touboul; Nicolas Elie; Martine Prévost; Cécile Meunier; Sylvie Michelland; Valérie Cunin; Ling Ma; David Vermijlen; Cédric Delporte; Stéphanie Pochet; Audrey Le Gouellec; Michel Sève; Pierre Van Antwerpen; Florence Souard
Journal:  Sci Rep       Date:  2021-07-09       Impact factor: 4.379

  4 in total

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