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Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics

Metabolite identification in untargeted metabolomics is complex, with the risk of false positive annotations. This work aims to use machine learning to successively predict the retention time (Rt) and the collision cross-section (CCS) of an open-access database to accelerate the interpretation of me...

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Autores principales: Lenski, Marie, Maallem, Saïd, Zarcone, Gianni, Garçon, Guillaume, Lo-Guidice, Jean-Marc, Anthérieu, Sébastien, Allorge, Delphine
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2023
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962007/
https://www.ncbi.nlm.nih.gov/pubmed/36837901
http://dx.doi.org/10.3390/metabo13020282
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author Lenski, Marie
Maallem, Saïd
Zarcone, Gianni
Garçon, Guillaume
Lo-Guidice, Jean-Marc
Anthérieu, Sébastien
Allorge, Delphine
author_facet Lenski, Marie
Maallem, Saïd
Zarcone, Gianni
Garçon, Guillaume
Lo-Guidice, Jean-Marc
Anthérieu, Sébastien
Allorge, Delphine
author_sort Lenski, Marie
collection PubMed
description Metabolite identification in untargeted metabolomics is complex, with the risk of false positive annotations. This work aims to use machine learning to successively predict the retention time (Rt) and the collision cross-section (CCS) of an open-access database to accelerate the interpretation of metabolomic results. Standards of metabolites were tested using liquid chromatography coupled with high-resolution mass spectrometry. In CCSBase and QSRR predictor machine learning models, experimental results were used to generate predicted CCS and Rt of the Human Metabolome Database. From 542 standards, 266 and 301 compounds were detected in positive and negative electrospray ionization mode, respectively, corresponding to 380 different metabolites. CCS and Rt were then predicted using machine learning tools for almost 114,000 metabolites. R(2) score of the linear regression between predicted and measured data achieved 0.938 and 0.898 for CCS and Rt, respectively, demonstrating the models’ reliability. A CCS and Rt index filter of mean error ± 2 standard deviations could remove most misidentifications. Its application to data generated from a toxicology study on tobacco cigarettes reduced hits by 76%. Regarding the volume of data produced by metabolomics, the practical workflow provided allows for the implementation of valuable large-scale databases to improve the biological interpretation of metabolomics data.
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spelling pubmed-99620072023-02-26 Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics Lenski, Marie Maallem, Saïd Zarcone, Gianni Garçon, Guillaume Lo-Guidice, Jean-Marc Anthérieu, Sébastien Allorge, Delphine Metabolites Article Metabolite identification in untargeted metabolomics is complex, with the risk of false positive annotations. This work aims to use machine learning to successively predict the retention time (Rt) and the collision cross-section (CCS) of an open-access database to accelerate the interpretation of metabolomic results. Standards of metabolites were tested using liquid chromatography coupled with high-resolution mass spectrometry. In CCSBase and QSRR predictor machine learning models, experimental results were used to generate predicted CCS and Rt of the Human Metabolome Database. From 542 standards, 266 and 301 compounds were detected in positive and negative electrospray ionization mode, respectively, corresponding to 380 different metabolites. CCS and Rt were then predicted using machine learning tools for almost 114,000 metabolites. R(2) score of the linear regression between predicted and measured data achieved 0.938 and 0.898 for CCS and Rt, respectively, demonstrating the models’ reliability. A CCS and Rt index filter of mean error ± 2 standard deviations could remove most misidentifications. Its application to data generated from a toxicology study on tobacco cigarettes reduced hits by 76%. Regarding the volume of data produced by metabolomics, the practical workflow provided allows for the implementation of valuable large-scale databases to improve the biological interpretation of metabolomics data. MDPI 2023-02-15 /pmc/articles/PMC9962007/ /pubmed/36837901 http://dx.doi.org/10.3390/metabo13020282 Text en © 2023 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
Lenski, Marie
Maallem, Saïd
Zarcone, Gianni
Garçon, Guillaume
Lo-Guidice, Jean-Marc
Anthérieu, Sébastien
Allorge, Delphine
Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title_full Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title_fullStr Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title_full_unstemmed Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title_short Prediction of a Large-Scale Database of Collision Cross-Section and Retention Time Using Machine Learning to Reduce False Positive Annotations in Untargeted Metabolomics
title_sort prediction of a large-scale database of collision cross-section and retention time using machine learning to reduce false positive annotations in untargeted metabolomics
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9962007/
https://www.ncbi.nlm.nih.gov/pubmed/36837901
http://dx.doi.org/10.3390/metabo13020282
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