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Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites

In gas chromatography–mass spectrometry-based untargeted metabolomics, metabolites are identified by comparing mass spectra and chromatographic retention time with reference databases or standard materials. In that sense, machine learning has been used to predict the retention time of metabolites la...

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Autores principales: de Cripan, Sara M., Cereto-Massagué, Adrià, Herrero, Pol, Barcaru, Andrei, Canela, Núria, Domingo-Almenara, Xavier
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9024754/
https://www.ncbi.nlm.nih.gov/pubmed/35453629
http://dx.doi.org/10.3390/biomedicines10040879
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author de Cripan, Sara M.
Cereto-Massagué, Adrià
Herrero, Pol
Barcaru, Andrei
Canela, Núria
Domingo-Almenara, Xavier
author_facet de Cripan, Sara M.
Cereto-Massagué, Adrià
Herrero, Pol
Barcaru, Andrei
Canela, Núria
Domingo-Almenara, Xavier
author_sort de Cripan, Sara M.
collection PubMed
description In gas chromatography–mass spectrometry-based untargeted metabolomics, metabolites are identified by comparing mass spectra and chromatographic retention time with reference databases or standard materials. In that sense, machine learning has been used to predict the retention time of metabolites lacking reference data. However, the retention time prediction of trimethylsilyl derivatives of metabolites, typically analyzed in untargeted metabolomics using gas chromatography, has been poorly explored. Here, we provide a rationalized framework for machine learning-based retention time prediction of trimethylsilyl derivatives of metabolites in gas chromatography. We compared different machine learning paradigms, in addition to exploring the influence of the computational molecular structure representation to train the prediction models: fingerprint class and fingerprint calculation software. Our study challenged predicted retention time when using chemical ionization and electron impact ionization sources in simulated and real cases, demonstrating a good correct identity ranking capability by machine learning, despite observing a limited false identity filtering power in cases where a spectrum or a monoisotopic mass match to multiple candidates. Specifically, machine learning prediction yielded median absolute and relative retention index (relative retention time) errors of 37.1 retention index units and 2%, respectively. In addition, fingerprint class and fingerprint calculation software, as well as the molecular structural similarity between the training and test or real case sets, showed to be critical modulators of the prediction performance. Finally, we leveraged the structural similarity between the training and test or real case set to determine the probability that the prediction error is below a specific threshold. Overall, our study demonstrates that predicted retention time can provide insights into the true structure of unknown metabolites by ranking from the most to the least plausible molecular identity, and sets the guidelines to assess the confidence in metabolite identification using predicted retention time data.
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spelling pubmed-90247542022-04-23 Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites de Cripan, Sara M. Cereto-Massagué, Adrià Herrero, Pol Barcaru, Andrei Canela, Núria Domingo-Almenara, Xavier Biomedicines Article In gas chromatography–mass spectrometry-based untargeted metabolomics, metabolites are identified by comparing mass spectra and chromatographic retention time with reference databases or standard materials. In that sense, machine learning has been used to predict the retention time of metabolites lacking reference data. However, the retention time prediction of trimethylsilyl derivatives of metabolites, typically analyzed in untargeted metabolomics using gas chromatography, has been poorly explored. Here, we provide a rationalized framework for machine learning-based retention time prediction of trimethylsilyl derivatives of metabolites in gas chromatography. We compared different machine learning paradigms, in addition to exploring the influence of the computational molecular structure representation to train the prediction models: fingerprint class and fingerprint calculation software. Our study challenged predicted retention time when using chemical ionization and electron impact ionization sources in simulated and real cases, demonstrating a good correct identity ranking capability by machine learning, despite observing a limited false identity filtering power in cases where a spectrum or a monoisotopic mass match to multiple candidates. Specifically, machine learning prediction yielded median absolute and relative retention index (relative retention time) errors of 37.1 retention index units and 2%, respectively. In addition, fingerprint class and fingerprint calculation software, as well as the molecular structural similarity between the training and test or real case sets, showed to be critical modulators of the prediction performance. Finally, we leveraged the structural similarity between the training and test or real case set to determine the probability that the prediction error is below a specific threshold. Overall, our study demonstrates that predicted retention time can provide insights into the true structure of unknown metabolites by ranking from the most to the least plausible molecular identity, and sets the guidelines to assess the confidence in metabolite identification using predicted retention time data. MDPI 2022-04-11 /pmc/articles/PMC9024754/ /pubmed/35453629 http://dx.doi.org/10.3390/biomedicines10040879 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
de Cripan, Sara M.
Cereto-Massagué, Adrià
Herrero, Pol
Barcaru, Andrei
Canela, Núria
Domingo-Almenara, Xavier
Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title_full Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title_fullStr Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title_full_unstemmed Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title_short Machine Learning-Based Retention Time Prediction of Trimethylsilyl Derivatives of Metabolites
title_sort machine learning-based retention time prediction of trimethylsilyl derivatives of metabolites
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9024754/
https://www.ncbi.nlm.nih.gov/pubmed/35453629
http://dx.doi.org/10.3390/biomedicines10040879
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