| Literature DB >> 27747248 |
Joseph W Zabinski, Gonzalo Garcia-Vargas, Marisela Rubio-Andrade, Rebecca C Fry, Jacqueline MacDonald Gibson.
Abstract
Dose-response functions used in regulatory risk assessment are based on studies of whole organisms and fail to incorporate genetic and metabolomic data. Bayesian belief networks (BBNs) could provide a powerful framework for incorporating such data, but no prior research has examined this possibility. To address this gap, we develop a BBN-based model predicting birthweight at gestational age from arsenic exposure via drinking water and maternal metabolic indicators using a cohort of 200 pregnant women from an arsenic-endemic region of Mexico. We compare BBN predictions to those of prevailing slope-factor and reference-dose approaches. The BBN outperforms prevailing approaches in balancing false-positive and false-negative rates. Whereas the slope-factor approach had 2% sensitivity and 99% specificity and the reference-dose approach had 100% sensitivity and 0% specificity, the BBN's sensitivity and specificity were 71% and 30%, respectively. BBNs offer a promising opportunity to advance health risk assessment by incorporating modern genetic and metabolomic data.Entities:
Year: 2016 PMID: 27747248 PMCID: PMC5063306 DOI: 10.1021/acs.estlett.6b00076
Source DB: PubMed Journal: Environ Sci Technol Lett