AUTHOR=Boyce Matthew , Favela Kristin A. , Bonzo Jessica A. , Chao Alex , Lizarraga Lucina E. , Moody Laura R. , Owens Elizabeth O. , Patlewicz Grace , Shah Imran , Sobus Jon R. , Thomas Russell S. , Williams Antony J. , Yau Alice , Wambaugh John F. TITLE=Identifying xenobiotic metabolites with in silico prediction tools and LCMS suspect screening analysis JOURNAL=Frontiers in Toxicology VOLUME=5 YEAR=2023 URL=https://www.frontiersin.org/journals/toxicology/articles/10.3389/ftox.2023.1051483 DOI=10.3389/ftox.2023.1051483 ISSN=2673-3080 ABSTRACT=
Understanding the metabolic fate of a xenobiotic substance can help inform its potential health risks and allow for the identification of signature metabolites associated with exposure. The need to characterize metabolites of poorly studied or novel substances has shifted exposure studies towards non-targeted analysis (NTA), which often aims to profile many compounds within a sample using high-resolution liquid-chromatography mass-spectrometry (LCMS). Here we evaluate the suitability of suspect screening analysis (SSA) liquid-chromatography mass-spectrometry to inform xenobiotic chemical metabolism. Given a lack of knowledge of true metabolites for most chemicals, predictive tools were used to generate potential metabolites as suspect screening lists to guide the identification of selected xenobiotic substances and their associated metabolites. Thirty-three substances were selected to represent a diverse array of pharmaceutical, agrochemical, and industrial chemicals from Environmental Protection Agency’s ToxCast chemical library. The compounds were incubated in a metabolically-active