Optimized breath analysis: customized analytical methods and enhanced workflow for broader detection of VOCs

  • Wisenave Arulvasan*
  • , Julia Greenwood
  • , Madeleine L. Ball
  • , Hsuan Chou
  • , Simon Coplowe
  • , Owen Birch
  • , Patrick Gordon
  • , Andreea Ratiu
  • , Elizabeth Lam
  • , Matteo Tardelli
  • , Monika Szkatulska
  • , Shane Swann
  • , Steven Levett
  • , Ella Mead
  • , Frederik-Jan van Schooten
  • , Agnieszka Smolinska
  • , Billy Boyle
  • , Max Allsworth
  • *Corresponding author for this work

Research output: Contribution to journalArticleAcademicpeer-review

Abstract

IntroductionBreath Volatile organic compounds (VOCs) are promising biomarkers for clinical purposes due to their unique properties. Translation of VOC biomarkers into the clinic depends on identification and validation: a challenge requiring collaboration, well-established protocols, and cross-comparison of data. Previously, we developed a breath collection and analysis method, resulting in 148 breath-borne VOCs identified.ObjectivesTo develop a complementary analytical method for the detection and identification of additional VOCs from breath. To develop and implement upgrades to the methodology for identifying features determined to be "on-breath" by comparing breath samples against paired background samples applying three metrics: standard deviation, paired t-test, and receiver-operating-characteristic (ROC) curve.MethodsA thermal desorption (TD)-gas chromatography (GC)-mass spectrometry (MS)-based analytical method utilizing a PEG phase GC column was developed for the detection of biologically relevant VOCs. The multi-step VOC identification methodology was upgraded through several developments: candidate VOC grouping schema, ion abundance correlation based spectral library creation approach, hybrid alkane-FAMES retention indexing, relative retention time matching, along with additional quality checks. In combination, these updates enable highly accurate identification of breath-borne VOCs, both on spectral and retention axes.ResultsA total of 621 features were statistically determined as on-breath by at least one metric (standard deviation, paired t-test, or ROC). A total of 38 on-breath VOCs were able to be confidently identified from comparison to chemical standards.ConclusionThe total confirmed on-breath VOCs is now 186. We present an updated methodology for high-confidence VOC identification, and a new set of VOCs commonly found on-breath.
Original languageEnglish
Article number17
Number of pages17
JournalMetabolomics
Volume21
Issue number1
DOIs
Publication statusPublished - 20 Jan 2025

Keywords

  • Volatile organic compounds (VOCs)
  • Breathomics
  • Microbiome
  • Volatile metabolites
  • Non-invasive biomarkers
  • VOC Atlas
  • VOLATILE ORGANIC-COMPOUNDS
  • CHAIN FATTY-ACIDS
  • GUT MICROBIOTA
  • METABOLOMICS
  • BIOMARKERS
  • STANDARDS
  • DIAGNOSIS

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