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Quantitative Exposomics Targeting over 200 Toxicants and Key Biomarkers at the Picomolar Level

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Figshare2025-10-10 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Quantitative_Exposomics_Targeting_over_200_Toxicants_and_Key_Biomarkers_at_the_Picomolar_Level/30329701
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The exposome encompasses environmental exposures throughout life and significantly impacts health and disease. Exposure chemicals, present at trace levels, are frequently quantified using targeted LC–MS/MS. Many existing methods are limited to a narrow range of analyte classes or lack sufficient sensitivity for exposomic analyses, and applicability to large sample cohorts for exposome-wide association studies (ExWAS) remains to be demonstrated. Here, we present a scalable, fit-for-purpose next-generation human biomonitoring (HBM) workflow for analyzing >230 biomarkers in urine, plasma, and serum using solid-phase extraction in 96-well plates and LC–MS/MS. Moreover, a complementary conceptual framework for validation criteria of assays designed to analyze large panels of highly diverse compounds at trace levels is proposed. Method robustness was evaluated, demonstrating extraction recovery (60–130%), matrix effects (SSE, 60–130%), inter-/intraday precision (RSD <30%), and high sensitivity (limit of detection <0.1 ng/mL) for 59–80% of the analytes across the investigated biological matrices. To showcase the method’s applicability in epidemiological studies, 200 urine samples from pregnant women in a longitudinal pregnancy cohort were analyzed. More than 100 analytes including PFAS, drugs, air pollutants, pesticides, flame retardants, mycotoxins, industrial products, food processing contaminants, plastics-related chemicals, and phytotoxins, were detected, several for the first time in a U.S. urinary biomonitoring study. With its broad analyte coverage, ultimate sensitivity, robustness, and high sample throughput, this method meets the performance requirements for future large-scale ExWAS applications in public and personalized prevention research.
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2025-10-10
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