Marino Dale J, Starr Thomas B
Health, Safety and Environment, Eastman Kodak Company, 1999 Lake Avenue, Rochester, NY 14650, USA.
Regul Toxicol Pharmacol. 2007 Dec;49(3):285-300. doi: 10.1016/j.yrtph.2007.08.006. Epub 2007 Aug 29.
A revised assessment of dichloromethane (DCM) has recently been reported that examines the influence of human genetic polymorphisms on cancer risks using deterministic PBPK and dose-response modeling in the mouse combined with probabilistic PBPK modeling in humans. This assessment utilized Bayesian techniques to optimize kinetic variables in mice and humans with mean values from posterior distributions used in the deterministic modeling in the mouse. To supplement this research, a case study was undertaken to examine the potential impact of probabilistic rather than deterministic PBPK and dose-response modeling in mice on subsequent unit risk factor (URF) determinations. Four separate PBPK cases were examined based on the exposure regimen of the NTP DCM bioassay. These were (a) Same Mouse (single draw of all PBPK inputs for both treatment groups); (b) Correlated BW-Same Inputs (single draw of all PBPK inputs for both treatment groups except for bodyweights (BWs), which were entered as correlated variables); (c) Correlated BW-Different Inputs (separate draws of all PBPK inputs for both treatment groups except that BWs were entered as correlated variables); and (d) Different Mouse (separate draws of all PBPK inputs for both treatment groups). Monte Carlo PBPK inputs reflect posterior distributions from Bayesian calibration in the mouse that had been previously reported. A minimum of 12,500 PBPK iterations were undertaken, in which dose metrics, i.e., mg DCM metabolized by the GST pathway/L tissue/day for lung and liver were determined. For dose-response modeling, these metrics were combined with NTP tumor incidence data that were randomly selected from binomial distributions. Resultant potency factors (0.1/ED(10)) were coupled with probabilistic PBPK modeling in humans that incorporated genetic polymorphisms to derive URFs. Results show that there was relatively little difference, i.e., <10% in central tendency and upper percentile URFs, regardless of the case evaluated. Independent draws of PBPK inputs resulted in the slightly higher URFs. Results were also comparable to corresponding values from the previously reported deterministic mouse PBPK and dose-response modeling approach that used LED(10)s to derive potency factors. This finding indicated that the adjustment from ED(10) to LED(10) in the deterministic approach for DCM compensated for variability resulting from probabilistic PBPK and dose-response modeling in the mouse. Finally, results show a similar degree of variability in DCM risk estimates from a number of different sources including the current effort even though these estimates were developed using very different techniques. Given the variety of different approaches involved, 95th percentile-to-mean risk estimate ratios of 2.1-4.1 represent reasonable bounds on variability estimates regarding probabilistic assessments of DCM.
最近有一篇关于二氯甲烷(DCM)的修订评估报告,该报告使用确定性的生理药代动力学(PBPK)模型和小鼠剂量反应模型,并结合人类的概率性PBPK模型,研究了人类基因多态性对癌症风险的影响。该评估利用贝叶斯技术优化小鼠和人类的动力学变量,将后验分布的平均值用于小鼠的确定性模型。为了补充这项研究,开展了一项案例研究,以检验小鼠中概率性而非确定性的PBPK和剂量反应模型对后续单位风险因子(URF)测定的潜在影响。根据美国国家毒理学计划(NTP)二氯甲烷生物测定的暴露方案,研究了四个独立的PBPK案例。分别是:(a)相同小鼠(两个治疗组的所有PBPK输入均单次抽取);(b)体重相关-输入相同(两个治疗组的所有PBPK输入均单次抽取,但体重作为相关变量输入);(c)体重相关-输入不同(两个治疗组的所有PBPK输入分别抽取,但体重作为相关变量输入);以及(d)不同小鼠(两个治疗组的所有PBPK输入分别抽取)。蒙特卡洛PBPK输入反映了先前报道的小鼠贝叶斯校准的后验分布。进行了至少12500次PBPK迭代,确定了剂量指标,即肺和肝中通过谷胱甘肽S-转移酶(GST)途径代谢的二氯甲烷毫克数/升组织/天。对于剂量反应建模,这些指标与从二项分布中随机选择的NTP肿瘤发生率数据相结合。由此得出的效力因子(0.1/ED(10))与纳入基因多态性的人类概率性PBPK模型相结合,以得出URF。结果表明,无论评估的是哪种情况,中心趋势和URF的较高百分位数的差异相对较小,即<10%。PBPK输入的独立抽取导致URF略高。结果也与先前报道的使用LED(10)得出效力因子的确定性小鼠PBPK和剂量反应建模方法的相应值相当。这一发现表明,在二氯甲烷的确定性方法中从ED(10)调整到LED(10),补偿了小鼠中概率性PBPK和剂量反应建模产生的变异性。最后,结果表明,即使这些估计是使用非常不同的技术得出的,但来自许多不同来源(包括当前的研究)的二氯甲烷风险估计的变异性程度相似。考虑到所涉及的不同方法的多样性,95%百分位数与平均风险估计值的比率为2.1 - 4.1代表了二氯甲烷概率性评估变异性估计的合理范围。