AI redefines mass spectrometry chemicals identification : retention time prediction in metabolomics and for a Human Exposome Project

dc.contributor.authorSillé, Fenna C. M.
dc.contributor.authorPrasse, Carsten
dc.contributor.authorLuechtefeld, Thomas
dc.contributor.authorHartung, Thomas
dc.date.accessioned2025-12-05T13:04:39Z
dc.date.available2025-12-05T13:04:39Z
dc.date.issued2025-11-12
dc.description.abstractThe comprehensive identification of environmental and endogenous chemicals in human biospecimens is a critical bottleneck for realizing the Human Exposome Project. Untargeted metabolomics, particularly liquid chromatography–high-resolution mass spectrometry (LC–HRMS), offers unparalleled coverage of small molecules, but most detected features remain unidentified due to limited spectral libraries and structural ambiguity. Retention time (RT) prediction—based on quantitative structure–retention relationships (QSRR) and enhanced by artificial intelligence (AI)—is an underutilized orthogonal parameter that can substantially improve metabolite annotation confidence. This review synthesizes advances in machine learning–based RT prediction, probabilistic calibration, and cross-platform harmonization for liquid chromatography and gas chromatography, including deep learning, graph neural networks, and transfer learning approaches. We evaluate workflows integrating RT prediction with mass-based searches and network-based annotation tools, highlighting their potential to refine candidate ranking and reduce false positives in environmental exposure assessment. The use of endogenous compounds as internal calibrants is discussed as a practical strategy for improving RT transferability across laboratories. We further outline how RT-aware annotation supports non-targeted screening of emerging contaminants, transformation products, and exposure biomarkers, thereby enhancing the interpretability and reproducibility of exposomics data. By integrating RT prediction, QSRR modeling, and AI into untargeted metabolomics pipelines, researchers can move from qualitative detection toward quantitative, inference-driven mapping of environmental influences on human health, strengthening the scientific foundation for environmental health policy and preventive public health strategies.
dc.description.versionpublisheddeu
dc.identifier.doi10.3389/fpubh.2025.1687056
dc.identifier.ppn1950429350
dc.identifier.urihttps://kops.uni-konstanz.de/handle/123456789/75396
dc.language.isoeng
dc.rightsAttribution 4.0 International
dc.rights.urihttp://creativecommons.org/licenses/by/4.0/
dc.subject.ddc570
dc.titleAI redefines mass spectrometry chemicals identification : retention time prediction in metabolomics and for a Human Exposome Projecteng
dc.typeJOURNAL_ARTICLE
dspace.entity.typePublication
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@article{Sille2025-11-12redef-75396,
  title={AI redefines mass spectrometry chemicals identification : retention time prediction in metabolomics and for a Human Exposome Project},
  year={2025},
  doi={10.3389/fpubh.2025.1687056},
  volume={13},
  journal={Frontiers in Public Health},
  author={Sillé, Fenna C. M. and Prasse, Carsten and Luechtefeld, Thomas and Hartung, Thomas},
  note={Article Number: 1687056}
}
kops.citation.iso690SILLÉ, Fenna C. M., Carsten PRASSE, Thomas LUECHTEFELD, Thomas HARTUNG, 2025. AI redefines mass spectrometry chemicals identification : retention time prediction in metabolomics and for a Human Exposome Project. In: Frontiers in Public Health. Frontiers. 2025, 13, 1687056. eISSN 2296-2565. Verfügbar unter: doi: 10.3389/fpubh.2025.1687056deu
kops.citation.iso690SILLÉ, Fenna C. M., Carsten PRASSE, Thomas LUECHTEFELD, Thomas HARTUNG, 2025. AI redefines mass spectrometry chemicals identification : retention time prediction in metabolomics and for a Human Exposome Project. In: Frontiers in Public Health. Frontiers. 2025, 13, 1687056. eISSN 2296-2565. Available under: doi: 10.3389/fpubh.2025.1687056eng
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