An actionable annotation scoring framework for gas chromatography-high-resolution mass spectrometry

Author:

Koelmel Jeremy P1,Xie Hongyu2,Price Elliott J3,Lin Elizabeth Z1,Manz Katherine E4,Stelben Paul1,Paige Matthew K1,Papazian Stefano25,Okeme Joseph1,Jones Dean P6,Barupal Dinesh7,Bowden John A89,Rostkowski Pawel10,Pennell Kurt D4,Nikiforov Vladimir11,Wang Thanh12,Hu Xin6,Lai Yunjia13,Miller Gary W13ORCID,Walker Douglas I7,Martin Jonathan W25,Godri Pollitt Krystal J1

Affiliation:

1. Department of Environmental Health Science, Yale School of Public Health , New Haven, CT, USA

2. Department of Environmental Science, Science for Life Laboratory, Stockholm University , Stockholm, Sweden

3. RECETOX, Faculty of Science, Masaryk University , Kotlarska 2, Brno, Czech Republic

4. School of Engineering, Brown University , Providence, RI, USA

5. National Facility for Exposomics, Metabolomics Platform, Science for Life Laboratory, Stockholm University , Solna 171 65, Sweden

6. School of Medicine, Department of Medicine, Emory University , Atlanta, GA, USA

7. Icahn School of Medicine at Mount Sinai, Department of Environmental Medicine and Public Health , New York, NY, USA

8. Department of Physiological Sciences, Center for Environmental and Human Toxicology, University of Florida , Gainesville, FL, USA

9. Department of Chemistry, University of Florida , Gainesville, FL, USA

10. NILU—Norwegian Institute for Air Research , Kjeller , Norway

11. NILU—Norwegian Institute for Air Research , Framsenteret, Tromsø, Norway

12. MTM Research Centre, Örebro University , Örebro, Sweden

13. Mailman School of Public Health, Department of Environmental Health Sciences, Columbia University , New York, NY, USA

Abstract

Abstract 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.

Funder

European Union’s Horizon 2020 Research and Innovation Programme

NIH

Publisher

Oxford University Press (OUP)

Subject

General Economics, Econometrics and Finance

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