A mass-balance approach to evaluate arsenic intake and excretion in different populations

Daniel Beene, Philip Collender, Andres Cardenas, Charles Harvey, Linden Huhmann, Yan Lin, Johnnye Lewis, Nancy LoIacono, Ana Navas-Acien, Anne Nigra, Craig Steinmaus, Alexander van Geen

Research output: Contribution to journalArticlepeer-review

6 Scopus citations

Abstract

Unless a toxicant builds up in a deep compartment, intake by the human body must on average balance the amount that is lost. We apply this idea to assess arsenic (As) exposure misclassification in three previously studied populations in rural Bangladesh (n = 11,224), Navajo Nation in the Southwestern United States (n = 619), and northern Chile (n = 630), under varying assumptions about As sources. Relationships between As intake and excretion were simulated by taking into account additional sources, as well as variability in urine dilution inferred from urinary creatinine. The simulations bring As intake closer to As excretion but also indicate that some exposure misclassification remains. In rural Bangladesh, accounting for intake from more than one well and rice improved the alignment of intake and excretion, especially at low exposure. In Navajo Nation, comparing intake and excretion revealed home dust as an important source. Finally, in northern Chile, while food-frequency questionnaires and urinary As speciation indicate fish and shellfish sources, persistent imbalance of intake and excretion suggests imprecise measures of drinking water arsenic as a major cause of exposure misclassification. The mass-balance approach could prove to be useful for evaluating sources of exposure to toxicants in other settings.

Original languageEnglish (US)
Article number107371
JournalEnvironment international
Volume166
DOIs
StatePublished - Aug 2022

All Science Journal Classification (ASJC) codes

  • General Environmental Science

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