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首页> 外文期刊>Regulatory Toxicology and Pharmacology: RTP >Dose-response modeling of in vivo genotoxicity data for use in risk assessment: some approaches illustrated by an analysis of acrylamide.
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Dose-response modeling of in vivo genotoxicity data for use in risk assessment: some approaches illustrated by an analysis of acrylamide.

机译:用于风险评估的体内遗传毒性数据的剂量反应模型:通过丙烯酰胺分析举例说明的一些方法。

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摘要

Methods for dose-response modeling of in vivo genotoxicity data are introduced and applied to a case study of acrylamide. Genetic toxicity results are typically summarized as being either positive or negative, with no further consideration of the dose-response patterns that can be estimated from such studies. This analysis explores the use of three modeling approaches: Poisson regression of counts of genetic effects per cell; dynamic modeling of the time-course of micronucleus production and loss as a function of exposure; and categorical regression of sets of genetic toxicity experiments, the results of which are recoded in terms of severities of response. Estimates derived from these models (benchmark doses and predictions of response rates for predetermined doses of interest) are then used to assess the relevance and role of the genetic toxicity results in a risk assessment. With respect to the acrylamide data base, the results suggest that the genetic damage studies do not appear to be consistent or congruent with the thyroid tumor endpoints observed in two long-term bioassays in rats. This suggests that acrylamide's mechanism of action with respect to production of such tumors may not be genotoxic, and that a cancer risk assessment that applied a linear, no-threshold approach to such endpoints might be inappropriate. Benchmark doses derived from the genetic toxicity data base do not appear to be the critical ones for acrylamide risk assessment. Dose metric and modeling issues associated with the proposed dose-response approach to evaluation of genetic toxicity data are explored, and it is recommended that further advancements of the methodology be developed and employed for optimal use of such data for risk assessment purposes.
机译:介绍了体内遗传毒性数据的剂量反应模型化方法,并将其应用于丙烯酰胺的案例研究。遗传毒性结果通常被概括为阳性或阴性,没有进一步考虑可从此类研究中估计的剂量反应模式。该分析探索了三种建模方法的使用:每个细胞的遗传效应计数的泊松回归;动态模拟微核产生和损失随时间变化的过程;和一系列遗传毒性实验的分类回归,其结果根据反应的严重程度进行重新编码。从这些模型得出的估计值(基准剂量和预定目标剂量的反应率预测)随后用于评估遗传毒性结果在风险评估中的相关性和作用。关于丙烯酰胺数据库,结果表明遗传损伤研究似乎与在大鼠中的两种长期生物测定法中观察到的甲状腺肿瘤终点不一致或一致。这表明丙烯酰胺对此类肿瘤产生的作用机制可能不是遗传毒性,并且对此类终点采用线性无阈方法的癌症风险评估可能不适当。从遗传毒性数据库得出的基准剂量似乎不是丙烯酰胺风险评估的关键剂量。探讨了与拟议的剂量反应方法评估遗传毒性数据有关的剂量指标和建模问题,建议开发该方法的进一步发展,并将其用于风险评估目的,以最佳地利用此类数据。

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