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Sodium adduct formation with graph-based machine learning can aid structural elucidation in non-targeted LC/ESI/HRMS.
Costalunga, Riccardo; Tshepelevitsh, Sofja; Sepman, Helen; Kull, Meelis; Kruve, Anneli.
Afiliação
  • Costalunga R; Department of Materials and Environmental Chemistry, Stockholm University, Svante Arrhenius väg 16, 106 91, Stockholm, Sweden; Department of Food and Drug, University of Parma, via Università, 12, I 43121, Parma, Italy.
  • Tshepelevitsh S; Institute of Chemistry, University of Tartu, Ravila 14a, Tartu, 50411, Estonia.
  • Sepman H; Department of Materials and Environmental Chemistry, Stockholm University, Svante Arrhenius väg 16, 106 91, Stockholm, Sweden.
  • Kull M; Institute of Computer Science, University of Tartu, Narva mnt 18, 51009, Tartu, Estonia.
  • Kruve A; Department of Materials and Environmental Chemistry, Stockholm University, Svante Arrhenius väg 16, 106 91, Stockholm, Sweden. Electronic address: anneli.kruve@ut.ee.
Anal Chim Acta ; 1204: 339402, 2022 Apr 29.
Article em En | MEDLINE | ID: mdl-35397906
Non-targeted screening with LC/ESI/HRMS aims to identify the structure of the detected compounds using their retention time, exact mass, and fragmentation pattern. Challenges remain in differentiating between isomeric compounds. One untapped possibility to facilitate identification of isomers relies on different ionic species formed in electrospray. In positive ESI mode, both protonated molecules and adducts can be formed; however, not all isomeric structures form the same ionic species. The complicated mechanism of adduct formation has hindered the use of this molecular characteristic in the structural elucidation in non-targeted screening. Here, we have studied the adduct formation for 94 small molecules with ion mobility spectra and compared collision cross-sections of the respective ions. Based on the results we developed a fast support vector machine classifier with polynomial kernels for accurately predicting the sodium adduct formation in ESI/HRMS. The model is trained on five independent data sets from different laboratories and uses the graph-based connectivity of functional groups and PubChem fingerprints to predict the sodium adduct formation in ESI/HRMS. The validation of the model showed an accuracy of 74.7% (balanced accuracy 70.0%) on a dataset from an independent laboratory, which was not used in the training of the model. Lastly, we applied the classification algorithm to the SusDat database by NORMAN network to evaluate the proportion of isomeric compounds that could be distinguished based on predicted sodium adduct formation. It was observed that sodium adduct formation probability can provide additional selectivity for about one quarter of the exact masses and, therefore, shows practical utility for structural assignment in non-targeted screening.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Sódio / Espectrometria de Massas por Ionização por Electrospray Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Sódio / Espectrometria de Massas por Ionização por Electrospray Idioma: En Ano de publicação: 2022 Tipo de documento: Article