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Adjustment of a no expected sensitization induction level derived from Bayesian network integrated testing strategy for skin sensitization risk assessment

机译:调整从贝叶斯网络综合测试策略的无预期敏感诱导水平进行皮肤致敏风险评估

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Skin sensitization is a key adverse effect to be addressed during hazard identification and risk assessment of chemicals, because it is the first step in the development of allergic contact dermatitis. Multiple non-animal testing strategies incorporating in vitro tests and in silico tools have achieved good predictivities when compared with murine local lymph node assay (LLNA). The binary test battery of KeratinoSenssupTM/sup and h-CLAT could be used to classify non-sensitizers as the first part of bottom-up approach. However, the quantitative risk assessment for sensitizing chemicals requires a No Expected Sensitization Induction Level (NESIL), the dose not expected to induce skin sensitization in humans. We used Bayesian network integrated testing strategy (BN ITS-3) for chemical potency classification. BN ITS-3 predictions were performed without a pre-processing step (selecting data from their physic-chemical applicability domains) or post-processing step (Michael acceptor chemistry correction), neither of which necessarily improve prediction accuracy. For chemicals within newly defined applicability domain, all under-predictions fell within one potency class when compared with LLNA results, indicating no chemicals that were incorrectly classified by more than one class. Considering the potential under-prediction by one class, a worst case value to each class from BN ITS-3 was used to derive a NESIL. When in vivo and human data from suitable analogs cannot be used to estimate the uncertainty, adjusting the NESIL derived from BN ITS-3 may help perform skin sensitization risk assessment. The overall workflow for risk assessment was demonstrated by incorporating the binary test battery of KeratinoSenssupTM/sup and h-CLAT.
机译:皮肤致敏是在危害识别和风险评估期间解决的关键不利影响,因为它是发育过敏性接触皮炎的第一步。与小鼠局部淋巴结测定(LLNA)相比,掺入体外测试和硅工具中的多种非动物测试策略已经取得了良好的预测性。角蛋白酶的二进制测试电池 tm 和h-clat可用于将非敏化剂分类为自下而上方法的第一部分。然而,用于敏化化学品的定量风险评估需要没有预期的致敏感应水平(Nesil),该剂量预计不会诱导人类皮肤致敏。我们使用贝叶斯网络集成测试策略(BN ITS-3)进行化学效力分类。在没有预处理步骤(从其物理化学应用域中选择数据)或后处理步骤(Michael受体化学校正)的情况下进行IT-3预测,这两者都不一定提高预测准确性。对于新定义的适用性域内的化学品,与LLNA结果相比,所有弱势课程都在一个效力阶层中落入一个效力等级中,表明没有归类不超过一类的化学物质。考虑到一个类的潜在潜在的预测,来自BN ITS-3的每个类的最坏情况值用于衍生Nesil。当在来自合适类似物的体内和人类数据中不能用于估计不确定性时,调整源自BN ITS-3的Nesil可能有助于进行皮肤致敏风险评估。通过掺入角蛋白酶 TM 和H-CLAT的二进制测试电池来证明风险评估的整体工作流程。

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