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一种基于生理药代动力学(PBPK)模型的方法,用于在化学混合物的健康风险评估中考虑相互作用。

A PBPK modeling-based approach to account for interactions in the health risk assessment of chemical mixtures.

作者信息

Haddad S, Béliveau M, Tardif R, Krishnan K

机构信息

Groupe de recherche en toxicologie humaine (TOXHUM), Faculté de médecine, Université de Montréal, Case Postale 6128, Succursale centre-ville, Montréal, Québec H3C 3J7, Canada.

出版信息

Toxicol Sci. 2001 Sep;63(1):125-31. doi: 10.1093/toxsci/63.1.125.

Abstract

The objectives of the present study were: (1) to develop a risk assessment methodology for chemical mixtures that accounts for pharmacokinetic interactions among components, and (2) to apply this methodology to assess the health risk associated with occupational inhalation exposure to airborne mixtures of dichloromethane, benzene, toluene, ethylbenzene, and m-xylene. The basis of the proposed risk assessment methodology relates to the characterization of the change in tissue dose metrics (e.g., area under the concentration-time curve for parent chemical in tissues [AUCtissue], maximal concentration of parent chemical or metabolite [Cmax], quantity metabolized over a period of time) in humans, during mixed exposures using PBPK models. For systemic toxicants, an interaction-based hazard index was calculated using data on tissue dose of mixture constituents. Initially, the AUCtarget tissue (AUCtt) corresponding to guideline values (e.g., threshold limit value [TLV]) of individual chemicals were obtained. Then, the AUCtt for each chemical during mixed exposure was obtained using a mixture PBPK model that accounted for the binary and higher order interactions occurring within the mixture. An interaction-based hazard index was then calculated for each toxic effect by summing the ratio of AUCtt obtained during mixed exposure (predefined mixture) and single exposure (TLV). For the carcinogenic constituents of the mixture, an interaction-based response additivity approach was applied. This method consisted of adding the cancer risk for each constituent, calculated as the product of q*tissue dose and AUCtt. The AUCtt during mixture exposures was obtained using an interaction-based PBPK model. The approaches developed in the present study permit, for the first time, the consideration of the impact of multichemical pharmacokinetic interactions at a quantitative level in mixture risk assessments.

摘要

本研究的目标是

(1)开发一种针对化学混合物的风险评估方法,该方法考虑各成分之间的药代动力学相互作用;(2)应用此方法评估职业吸入空气中二氯甲烷、苯、甲苯、乙苯和间二甲苯混合物所带来的健康风险。所提出的风险评估方法的基础涉及使用生理药代动力学(PBPK)模型来表征人类在混合暴露期间组织剂量指标的变化(例如,组织中母体化学物质的浓度-时间曲线下面积[AUCtissue]、母体化学物质或代谢物的最大浓度[Cmax]、一段时间内代谢的量)。对于全身毒物,使用混合物成分的组织剂量数据计算基于相互作用的危害指数。首先,获取与各单一化学物质的指导值(例如阈限值[TLV])相对应的靶组织AUC(AUCtt)。然后,使用考虑混合物中发生的二元及更高阶相互作用的混合物PBPK模型,获得混合暴露期间每种化学物质的AUCtt。然后,通过将混合暴露(预定义混合物)和单一暴露(TLV)期间获得的AUCtt的比值相加,为每种毒性效应计算基于相互作用的危害指数。对于混合物中的致癌成分,应用基于相互作用的反应相加法。该方法包括将每种成分的癌症风险相加,计算为q×组织剂量与AUCtt的乘积。使用基于相互作用的PBPK模型获得混合暴露期间的AUCtt。本研究中开发的方法首次允许在混合物风险评估中在定量水平上考虑多化学药代动力学相互作用的影响。

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