Phillips Martin B, Yoon Miyoung, Young Bruce, Tan Yu-Mei
National Exposure Research Laboratory, US Environmental Protection Agency Duluth, MN, USA.
Institute for Chemical Safety Sciences, The Hamner Institutes for Health Sciences, Research Triangle Park NC, USA.
Front Pharmacol. 2014 Nov 18;5:246. doi: 10.3389/fphar.2014.00246. eCollection 2014.
There are many types of biomarkers; the two common ones are biomarkers of exposure and biomarkers of effect. The utility of a biomarker for estimating exposures or predicting risks depends on the strength of the correlation between biomarker concentrations and exposure/effects. In the current study, a combined exposure and physiologically-based pharmacokinetic/pharmacodynamic (PBPK/PD) model of carbaryl was used to demonstrate the use of computational modeling for providing insight into the selection of biomarkers for different purposes. The Cumulative and Aggregate Risk Evaluation System (CARES) was used to generate exposure profiles, including magnitude and timing, for use as inputs to the PBPK/PD model. The PBPK/PD model was then used to predict blood concentrations of carbaryl and urine concentrations of its principal metabolite, 1-naphthol (1-N), as biomarkers of exposure. The PBPK/PD model also predicted acetylcholinesterase (AChE) inhibition in red blood cells (RBC) as a biomarker of effect. The correlations of these simulated biomarker concentrations with intake doses or brain AChE inhibition (as a surrogate of effects) were analyzed using a linear regression model. Results showed that 1-N in urine is a better biomarker of exposure than carbaryl in blood, and that 1-N in urine is correlated with the dose averaged over the last 2 days of the simulation. They also showed that RBC AChE inhibition is an appropriate biomarker of effect. This computational approach can be applied to a wide variety of chemicals to facilitate quantitative analysis of biomarker utility.
生物标志物有多种类型;常见的两种是暴露生物标志物和效应生物标志物。生物标志物在估计暴露或预测风险方面的效用取决于生物标志物浓度与暴露/效应之间的相关强度。在本研究中,使用了西维因的联合暴露和基于生理的药代动力学/药效学(PBPK/PD)模型来证明计算建模在为不同目的选择生物标志物提供见解方面的应用。使用累积和综合风险评估系统(CARES)生成暴露概况,包括暴露量和时间,作为PBPK/PD模型的输入。然后使用PBPK/PD模型预测西维因的血药浓度及其主要代谢物1-萘酚(1-N)的尿药浓度,作为暴露生物标志物。PBPK/PD模型还预测了红细胞(RBC)中的乙酰胆碱酯酶(AChE)抑制作用,作为效应生物标志物。使用线性回归模型分析了这些模拟生物标志物浓度与摄入量或脑AChE抑制作用(作为效应替代指标)之间的相关性。结果表明,尿中的1-N是比血中的西维因更好的暴露生物标志物,且尿中的1-N与模拟最后2天的平均剂量相关。结果还表明,红细胞AChE抑制是合适的效应生物标志物。这种计算方法可应用于多种化学物质,以促进生物标志物效用的定量分析。