Ring Caroline L, Pearce Robert G, Setzer R Woodrow, Wetmore Barbara A, Wambaugh John F
Oak Ridge Institute for Science and Education, Oak Ridge, TN 37831, United States; National Center for Computational Toxicology, Office of Research and Development, United States Environmental Protection Agency, Research Triangle Park, NC 27711, United States.
National Center for Computational Toxicology, Office of Research and Development, United States Environmental Protection Agency, Research Triangle Park, NC 27711, United States.
Environ Int. 2017 Sep;106:105-118. doi: 10.1016/j.envint.2017.06.004. Epub 2017 Jun 16.
The thousands of chemicals present in the environment (USGAO, 2013) must be triaged to identify priority chemicals for human health risk research. Most chemicals have little of the toxicokinetic (TK) data that are necessary for relating exposures to tissue concentrations that are believed to be toxic. Ongoing efforts have collected limited, in vitro TK data for a few hundred chemicals. These data have been combined with biomonitoring data to estimate an approximate margin between potential hazard and exposure. The most "at risk" 95th percentile of adults have been identified from simulated populations that are generated either using standard "average" adult human parameters or very specific cohorts such as Northern Europeans. To better reflect the modern U.S. population, we developed a population simulation using physiologies based on distributions of demographic and anthropometric quantities from the most recent U.S. Centers for Disease Control and Prevention National Health and Nutrition Examination Survey (NHANES) data. This allowed incorporation of inter-individual variability, including variability across relevant demographic subgroups. Variability was analyzed with a Monte Carlo approach that accounted for the correlation structure in physiological parameters. To identify portions of the U.S. population that are more at risk for specific chemicals, physiologic variability was incorporated within an open-source high-throughput (HT) TK modeling framework. We prioritized 50 chemicals based on estimates of both potential hazard and exposure. Potential hazard was estimated from in vitro HT screening assays (i.e., the Tox21 and ToxCast programs). Bioactive in vitro concentrations were extrapolated to doses that produce equivalent concentrations in body tissues using a reverse dosimetry approach in which generic TK models are parameterized with: 1) chemical-specific parameters derived from in vitro measurements and predicted from chemical structure; and 2) with physiological parameters for a virtual population. For risk-based prioritization of chemicals, predicted bioactive equivalent doses were compared to demographic-specific inferences of exposure rates that were based on NHANES urinary analyte biomonitoring data. The inclusion of NHANES-derived inter-individual variability decreased predicted bioactive equivalent doses by 12% on average for the total population when compared to previous methods. However, for some combinations of chemical and demographic groups the margin was reduced by as much as three quarters. This TK modeling framework allows targeted risk prioritization of chemicals for demographic groups of interest, including potentially sensitive life stages and subpopulations.
环境中存在的数千种化学物质(美国政府问责局,2013年)必须进行分类,以确定人类健康风险研究的优先化学物质。大多数化学物质几乎没有毒代动力学(TK)数据,而这些数据是将暴露与被认为有毒的组织浓度联系起来所必需的。正在进行的努力已经收集了几百种化学物质的有限的体外TK数据。这些数据已与生物监测数据相结合,以估计潜在危害与暴露之间的大致差距。已从使用标准“平均”成年人体参数或非常特定的队列(如北欧人)生成的模拟人群中确定了最“高危”的成年人口的第95百分位数。为了更好地反映现代美国人群,我们使用基于美国疾病控制与预防中心最新的国家健康与营养检查调查(NHANES)数据中的人口统计学和人体测量学数量分布的生理学方法开发了一种人群模拟。这使得能够纳入个体间的变异性,包括相关人口亚组之间的变异性。使用考虑了生理参数相关结构的蒙特卡洛方法对变异性进行了分析。为了确定美国人群中对特定化学物质风险更高的部分,在一个开源的高通量(HT)TK建模框架内纳入了生理变异性。我们根据潜在危害和暴露的估计对50种化学物质进行了优先级排序。潜在危害是通过体外HT筛选试验(即Tox21和ToxCast项目)估计的。使用反向剂量测定法将体外生物活性浓度外推至在身体组织中产生等效浓度的剂量,其中通用TK模型用以下参数进行参数化:1)从体外测量得出并根据化学结构预测的化学物质特异性参数;2)虚拟人群的生理参数。对于基于风险的化学物质优先级排序,将预测的生物活性等效剂量与基于NHANES尿液分析物生物监测数据的特定人群暴露率推断进行比较。与以前的方法相比,纳入NHANES衍生的个体间变异性后,总体人群的预测生物活性等效剂量平均降低了12%。然而,对于某些化学物质和人群组的组合,差距减少了多达四分之三。这种TK建模框架允许针对感兴趣的人群组,包括潜在敏感的生命阶段和亚人群进行有针对性的化学物质风险优先级排序。