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首页> 外文期刊>Regulatory Toxicology and Pharmacology: RTP >Revised assessment of cancer risk to dichloromethane: part I Bayesian PBPK and dose-response modeling in mice.
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Revised assessment of cancer risk to dichloromethane: part I Bayesian PBPK and dose-response modeling in mice.

机译:修改后的二氯甲烷癌症风险评估:第一部分贝叶斯PBPK和小鼠的剂量反应模型。

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The current USEPA cancer risk assessment for dichloromethane (DCM) is based on deterministic physiologically based pharmacokinetic (PBPK) modeling involving comparative metabolism of DCM by the GST pathway in the lung and liver of humans and mice. Recent advances in PBPK modeling include probabilistic methods and, in particular, Bayesian inference to quantitatively address variability and uncertainty separately. Although Bayesian analysis of human PBPK models has been published, no such efforts have been reported specifically addressing the mouse, apart from results included in the OSHA final rule on DCM. Certain aspects of the OSHA model, however, are not consistent with current approaches or with the USEPA's current DCM cancer risk assessment. Therefore, Bayesian analysis of the mouse PBPK model and dose-response modeling was undertaken to support development of an improved cancer risk assessment for DCM. A hierarchical population model was developed and prior parameter distributions were selected to reflect parameter values that were considered the most appropriate and best available. Bayesian modeling was conducted using MCSim, a publicly available software program for Markov Chain Monte Carlo analysis. Mean posterior values from the calibrated model were used to develop internal dose metrics, i.e., mg DCM metabolized by the GST pathway/L tissue/day in the lung and liver using exposure concentrations and results from the NTP mouse bioassay, consistent with the approach used by the USEPA for its current DCM cancer risk assessment. Internal dose metrics were 3- to 4-fold higher than those that support the current USEPA IRIS assessment. A decrease of similar magnitude was also noted in dose-response modeling results. These results show that the Bayesian PBPK model in the mouse provides an improved basis for a cancer risk assessment of DCM.
机译:当前的USEPA对二氯甲烷(DCM)的癌症风险评估是基于确定性的基于生理的药代动力学(PBPK)模型,该模型涉及人和小鼠的肺和肝中GST途径的DCM比较代谢。 PBPK建模的最新进展包括概率方法,尤其是贝叶斯推理,可以分别定量处理变异性和不确定性。尽管已经发表了有关人PBPK模型的贝叶斯分析方法,但是除了关于DCM的OSHA最终规则中包含的结果外,还没有针对此类小鼠的专门报道。但是,OSHA模型的某些方面与当前方法或USEPA当前的DCM癌症风险评估不一致。因此,对小鼠PBPK模型和剂量反应模型进行了贝叶斯分析,以支持对DCM进行改进的癌症风险评估。开发了分层的种群模型,并选择了先前的参数分布以反映被认为最合适和可用程度最高的参数值。贝叶斯建模是使用MCSim进行的,MCSim是用于马尔可夫链蒙特卡洛分析的公共软件程序。来自校准模型的平均后验值用于建立内部剂量指标,即使用暴露浓度和NTP小鼠生物测定法的结果,通过肺部和肝脏中GST途径/ L组织/天在肺和肝脏中通过GST途径代谢的mg DCM,与使用的方法一致由USEPA进行的当前DCM癌症风险评估。内部剂量指标比支持当前USEPA IRIS评估的指标高3至4倍。在剂量反应模型结果中也注意到相似幅度的下降。这些结果表明,小鼠的贝叶斯PBPK模型为DCM的癌症风险评估提供了改进的基础。

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