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An actionable annotation scoring framework for gas chromatography-high-resolution mass spectrometry
Stockholm University, Science for Life Laboratory (SciLifeLab). Stockholm University, Faculty of Science, Department of Environmental Science.ORCID iD: 0000-0002-2422-0492
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2022 (English)In: Exposome, E-ISSN 2635-2265, Vol. 2, no 1, article id osac007Article in journal (Refereed) Published
Abstract [en]

Omics-based technologies have enabled comprehensive characterization of our exposure to environmental chemicals (chemical exposome) as well as assessment of the corresponding biological responses at the molecular level (eg, metabolome, lipidome, proteome, and genome). By systematically measuring personal exposures and linking these stimuli to biological perturbations, researchers can determine specific chemical exposures of concern, identify mechanisms and biomarkers of toxicity, and design interventions to reduce exposures. However, further advancement of metabolomics and exposomics approaches is limited by a lack of standardization and approaches for assigning confidence to chemical annotations. While a wealth of chemical data is generated by gas chromatography high-resolution mass spectrometry (GC-HRMS), incorporating GC-HRMS data into an annotation framework and communicating confidence in these assignments is challenging. It is essential to be able to compare chemical data for exposomics studies across platforms to build upon prior knowledge and advance the technology. Here, we discuss the major pieces of evidence provided by common GC-HRMS workflows, including retention time and retention index, electron ionization, positive chemical ionization, electron capture negative ionization, and atmospheric pressure chemical ionization spectral matching, molecular ion, accurate mass, isotopic patterns, database occurrence, and occurrence in blanks. We then provide a qualitative framework for incorporating these various lines of evidence for communicating confidence in GC-HRMS data by adapting the Schymanski scoring schema developed for reporting confidence levels by liquid chromatography HRMS (LC-HRMS). Validation of our framework is presented using standards spiked in plasma, and confident annotations in outdoor and indoor air samples, showing a false-positive rate of 12% for suspect screening for chemical identifications assigned as Level 2 (when structurally similar isomers are not considered false positives). This framework is easily adaptable to various workflows and provides a concise means to communicate confidence in annotations. Further validation, refinements, and adoption of this framework will ideally lead to harmonization across the field, helping to improve the quality and interpretability of compound annotations obtained in GC-HRMS.

Place, publisher, year, edition, pages
2022. Vol. 2, no 1, article id osac007
Keywords [en]
gas chromatography (GC), high-resolution mass spectrometry (HRMS), exposomics, chemicals, confidence scale, annotation
National Category
Environmental Sciences
Identifiers
URN: urn:nbn:se:su:diva-249939DOI: 10.1093/exposome/osac007OAI: oai:DiVA.org:su-249939DiVA, id: diva2:2016109
Available from: 2025-11-24 Created: 2025-11-24 Last updated: 2026-04-11Bibliographically approved
In thesis
1. New Analytical Workflows for Comprehensive Chemical Exposomics in Human Plasma
Open this publication in new window or tab >>New Analytical Workflows for Comprehensive Chemical Exposomics in Human Plasma
2026 (English)Doctoral thesis, comprehensive summary (Other academic)
Abstract [en]

The ambition of chemical exposomics to measure all environmental exposures throughout the lifecourse brings analytical challenges because of the large number of environmental chemicals, their diverse physicochemical properties, their dynamic occurrence, and presence in blood at 1000-fold lower concentrations than endogenous metabolites. Gas chromatography high resolution mass spectrometry (GC-HRMS) complements liquid chromatography (LC) by expanding chemical-space coverage into neutral, hydrophobic and semi-volatile substances. However, development of GC-HRMS chemical exposomics has lagged behind LC-, and workflows are still required for sensitive and quantitative detection for multiple priority chemical classes while simultaneously enabling the discovery of novel exposures by nontarget acquisition, robust data processing and appropriate structural annotation frameworks. In Paper I, an actionable annotation scoring framework was developed to incorporate unique GC-HRMS information into annotation confidence level assignments, these GC-specific criteria were applied in Papers II, III and IV.

In Paper II, I developed and validated a chemical exposomics method using isohexane (H) to quantitatively extract prioritized analytes from protein-free acetonitrile-plasma (A-P), which significantly reduced coextracted lipid interference and enabled large-volume injections (25 µL) to GC. The resulting HA-P method enabled highly sensitive and quantitative detection, achieving a mean method limit of quantification (MLOQ) of 0.09 ng/mL from only 200 µL of human plasma. Application to 32 individual samples (100 µL) allowed quantification of 51 targets and a nontarget molecular discovery of 112 additional substances (Level 2, 12.8% high annotation rate). In Paper III, the HA-P method was then applied in a longitudinal study of 46 healthy individuals in a multiomics cohort, whereby each participant donated 6 plasma samples over 2 years. Overall, the GC chemical-exposome was longitudinally unstable, with mean intraclass correlation coefficients (ICCs) of 0.24, significantly lower than for other omics profiles measured (i.e., proteomics, metabolomics, lipidomics and microbiota). Molecular networks and hierarchical clustering analysis revealed structural similarities and correlated co-exposures for numerous chemical classes that may share common exposure sources.

To enable comprehensive chemical exposomics, in Paper IV I developed and validated an integrated sample preparation method that produces two extracts from a single plasma sample, enabling high sensitivity target/nontarget analysis of separate polar and nonpolar analyte fractions. Application to 32 plasma samples allowed overall identification of 204 chemicals at Level 1 covering a wide chemical space, e.g., 11 orders of magnitude in water solubility. Hierarchical clustering of 348 total annotated features revealed a broad range of common or rare co-exposures, many of which were unique to specific individuals or correlated with endogenous metabolites, thereby revealing a high-relevance to precision public health. Overall, the combined methods and frameworks provide new tools to study the human chemical exposome, and the unprecedented datasets from their first applications will guide sampling design (based on low ICCs), comprehensive analysis and data exploration in future studies.

Place, publisher, year, edition, pages
Stockholm: Department of Environmental Science, Stockholm University, 2026. p. 49
Keywords
Exposome, human blood, high resolution mass spectrometry, multitargeted, nontargeted, chemical exposomics
National Category
Analytical Chemistry
Research subject
Environmental Sciences
Identifiers
urn:nbn:se:su:diva-254153 (URN)978-91-8107-600-4 (ISBN)978-91-8107-601-1 (ISBN)
Public defence
2026-05-25, DeGeersalen, Svante Arrhenius väg 14 and online via Zoom, public link is available at the department website, Stockholm, 10:00 (English)
Opponent
Supervisors
Available from: 2026-04-28 Created: 2026-04-11 Last updated: 2026-04-22Bibliographically approved

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Xie, HongyuPapazian, StefanoMartin, Jonathan W.

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