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Construction and application of (Q)SAR models to predict chemical-induced in vitro chromosome aberrations

机译:(Q)SAR模型预测化学体外染色体畸变模型的构建与应用

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摘要

In drug development, genetic toxicology studies are conducted using in vitro and in vivo assays to identify potential mutagenic and clastogenic effects, as outlined in the International Council for Harmonisation (ICH) S2 regulatory guideline. (Quantitative) structure-activity relationship ((Q)SAR) models that predict assay outcomes can be used as an early screen to prioritize pharmaceutical candidates, or later during product development to evaluate safety when experimental data are unavailable or inconclusive. In the current study, two commercial QSAR platforms were used to build models for in vitro chromosomal aberrations in Chinese hamster lung (CHL) and Chinese hamster ovary (CHO) cells. Cross-validated CHL model predictive performance showed sensitivity of 80 and 82%, and negative predictivity of 75 and 76% based on 875 training set compounds. For CHO, sensitivity of 61 and 67% and negative predictivity of 68 and 74% was achieved based on 817 training set compounds. The predictive performance of structural alerts in a commercial expert rule-based SAR software was also investigated and showed positive predictivity of 48-100% for selected alerts. Case studies examining incorrectly-predicted compounds, non-DNA-reactive clastogens, and recently-approved pharmaceuticals are presented, exploring how an investigational approach using similarity searching and expert knowledge can improve upon individual (Q)SAR predictions of the clastogenicity of drugs.
机译:在药物开发中,遗传毒理学研究使用体外和体内测定进行,以确定潜在的致突变性和抗植物效应,如国际委员会(ICH)S2监管指南所概述。 (定量)结构 - 活性关系((Q)SAR),其预测测定结果可以用作早期屏幕,以优先考虑药物候选物,或者在产品开发期间以评估安全性,当实验数据不可用或不确定时。在目前的研究中,两台商业QSAR平台用于构建中国仓鼠肺(CHL)和中国仓鼠卵巢(CHO)细胞体外染色体畸变的模型。交叉验证的CHL模型预测性能显示出80%和82%的敏感性,并基于875次训练组化合物的75%和76%的阴性预测性。对于CHO,基于817次训练组化合物,实现了61和67%的灵敏度和68%和74%的阴性预测性。还研究了基于商业专业规则的SAR软件中结构警报的预测性能,并显示了所选警报的阳性预测性为48-100%。提出了检查错误预测的化合物,非DNA-活性裂解的和最近批准的药物的案例研究,探讨了使用相似性搜索和专业知识的研究如何改善药物抗植物的特征性(Q)SAR预测。

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