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首页> 外文期刊>Chemical research in toxicology >Chemistry-based risk assessment for skin sensitization: quantitative mechanistic modeling for the s(n)ar domain.
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Chemistry-based risk assessment for skin sensitization: quantitative mechanistic modeling for the s(n)ar domain.

机译:基于化学的皮肤过敏风险评估:s(n)ar域的定量机制建模。

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There is a strong impetus to develop nonanimal based methods to predict skin sensitization potency. An approach based on physical organic chemistry, whereby chemicals are classified into reaction mechanistic domains and quantitative models or read-across methods are derived for each domain, has been the basis of several recent publications. This article is concerned with the S(N)Ar reaction mechanistic domain. Electrophiles able to react by the S(N)Ar mechanism have long been recognized as skin sensitizers and have been used extensively in research studies on the biology of skin sensitization. Although qualitative discriminant analysis approaches have been developed for estimating the sensitization potential for S(N)Ar electrophiles on a yeso qualitative basis, no quantitative mechanistic model (QMM) has so far been developed for this domain. Here, we derive a QMM that correlates skin sensitization potency, quantified by murine local lymph node assay (LLNA) EC3 data on a range of S(N)Ar electrophiles. It is based on the Hammett sigma(-) values for the activating groups and the Taft sigma* value for the leaving group. The model takes the form pEC3 = 2.48 Sigmasigma(-) + 0.60 sigma* - 4.51. This QMM, generated from mouse LLNA data, provides a reactivity parameter 2.48 Sigmasigma(-) + 0.60 sigma*, which was applied to a set of 20 compounds for which guinea pig test results were available in the literature and was found to successfully discriminate the sensitizers from the nonsensitizers. The reactivity parameter correctly predicted a known human sensitizer 2,4-dichloropyrimidine. New LLNA data on two further S(N)Ar electrophiles are consistent with the QMM.
机译:有强烈的动力来发展基于非动物的方法来预测皮肤致敏力。一种基于物理有机化学的方法,将化学物质分类为反应机理域,并为每个域推导定量模型或交叉读取方法,这已成为最近几篇出版物的基础。本文涉及S(N)Ar反应机理领域。能够通过S(N)Ar机理发生反应的亲电试剂一直被认为是皮肤敏化剂,并已广泛用于皮肤敏化生物学的研究。尽管已经开发了定性判别分析方法,以便在是/否定性基础上估算S(N)Ar亲电试剂的敏化潜能,但迄今为止,尚未针对该领域开发定量机理模型(QMM)。在这里,我们得出了与皮肤敏化能力相关的QMM,通过在一系列S(N)Ar亲电试剂上的鼠局部淋巴结测定(LLNA)EC3数据进行量化。它基于激活组的Hammett sigma(-)值和离开组的Taft sigma *值。该模型的形式为pEC3 = 2.48 Sigmas(-)+ 0.60 Sigma *-4.51。根据小鼠LLNA数据生成的QMM,提供了反应性参数2.48 Sigmas(-)+ 0.60 sigma *,该参数应用于一组20种化合物,文献中提供了豚鼠测试结果,并成功地区分了来自非敏化剂的敏化剂。反应性参数正确地预测了已知的人类敏化剂2,4-二氯嘧啶。关于另外两个S(N)Ar亲电试剂的新LLNA数据与QMM一致。

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