The identification of xenobiotics
in nontargeted metabolomic analyses
is a vital step in understanding human exposure. Xenobiotic metabolism,
transformation, excretion, and coexistence with other endogenous molecules,
however, greatly complicate the interpretation of features detected
in nontargeted studies. While mass spectrometry (MS)-based platforms
are commonly used in metabolomic measurements, deconvoluting endogenous
metabolites from xenobiotics is also often challenged by the lack
of xenobiotic parent and metabolite standards as well as the numerous
isomers possible for each small molecule m/z feature. Here, we evaluate a xenobiotic structural annotation
workflow using ion mobility spectrometry coupled with MS (IMS–MS),
mass defect filtering, and machine learning to uncover potential xenobiotic
classes and species in large metabolomic feature lists. Xenobiotic
classes examined included those of known high toxicities, including
per- and polyfluoroalkyl substances (PFAS), polycyclic aromatic hydrocarbons
(PAHs), polychlorinated biphenyls (PCBs), polybrominated diphenyl
ethers (PBDEs), and pesticides. Specifically, when the workflow was
applied to identify PFAS in the NIST SRM 1957 and 909c human serum
samples, it greatly reduced the hundreds of detected liquid chromatography
(LC)–IMS–MS features by utilizing both mass defect filtering
and m/z versus IMS collision cross
sections relationships. These potential PFAS features were then compared
to the EPA CompTox entries, and while some matched within specific m/z tolerances, there were still many unknowns
illustrating the importance of nontargeted studies for detecting new
molecules with known chemical characteristics. Additionally, this
workflow can also be utilized to evaluate other xenobiotics and enable
more confident annotations from nontargeted studies.
The implication of lipid dysregulation in diseases, toxic exposure outcomes, and inflammation has brought great interest to lipidomic studies. However, lipids have proven to be analytically challenging due to their highly isomeric nature and vast concentration ranges in biological matrices. Therefore, multidimensional techniques such as those integrating liquid chromatography, ion mobility spectrometry, collision-induced dissociation, and mass spectrometry (LC-IMS-CID-MS) have been implemented to separate lipid isomers as well as provide structural information and increased identification confidence. These data sets are however extremely large and complex, resulting in challenges for data processing and annotation. Here, we have overcome these challenges by developing sample-specific multidimensional lipid libraries using the freely available software Skyline. Specifically, the human plasma library developed for this work contains over 500 unique lipids and is combined with adapted Skyline functions such as indexed retention time (iRT) for retention time prediction and IMS drift time filtering for enhanced selectivity. For comparison with other studies, this database was used to annotate LC-IMS-CID-MS data from a NIST SRM 1950 extract. The same workflow was then utilized to assess plasma and bronchoalveolar lavage fluid (BALF) samples from patients with varying degrees of smoke inhalation injury to identify lipid-based patient prognostic and diagnostic markers.
As concerns over exposure to per-
and polyfluoroalkyl substances
(PFAS) are continually increasing, novel methods to monitor their
presence and modifications are greatly needed, as some have known
toxic and bioaccumulative characteristics while most have unknown
effects. This task however is not simple, as the Environmental Protection
Agency (EPA) CompTox PFAS list contains more than 9000 substances
as of September 2020 with additional substances added continually.
Nontargeted analyses are therefore crucial to investigating the presence
of this immense list of possible PFAS. Here, we utilized archived
and field-sampled pine needles as widely available passive samplers
and a novel nontargeted, multidimensional analytical method coupling
liquid chromatography, ion mobility spectrometry, and mass spectrometry
(LC-IMS-MS) to evaluate the temporal and spatial presence of numerous
PFAS. Over 70 PFAS were detected in the pine needles from this study,
including both traditionally monitored legacy perfluoroalkyl acids
(PFAAs) and their emerging replacements such as chlorinated derivatives,
ultrashort chain PFAAs, perfluoroalkyl ether acids including hexafluoropropylene
oxide dimer acid (HFPO–DA, “GenX”) and Nafion
byproduct 2, and a cyclic perfluorooctanesulfonic acid (PFOS) analog.
Results from this study provide critical insight related to PFAS transport,
contamination, and reduction efforts over the past six decades.
Environmental analysis of xenobiotics is a challenging yet necessary undertaking to characterize pollution levels, assess the effectiveness of remediation interventions, and prevent adverse environmental and health outcomes. Xenobiotics are concerning from an environmental perspective due to their chemical persistence, toxicity to humans and wildlife, and prolific use in agricultural and industrial applications. 1 Many xenobiotics are persistent organic pollutants (POPs), and the number of POPs listed in the Stockholm Convention is
scite is a Brooklyn-based organization that helps researchers better discover and understand research articles through Smart Citations–citations that display the context of the citation and describe whether the article provides supporting or contrasting evidence. scite is used by students and researchers from around the world and is funded in part by the National Science Foundation and the National Institute on Drug Abuse of the National Institutes of Health.