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A Workflow for Identifying Metabolically Active Chemicals to Complement in vitro Toxicity Screening

机译:识别代谢活性化学物质以补充体外毒性筛选的工作流程

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摘要

The new paradigm of toxicity testing approaches involves rapid screening of thousands of chemicals across hundreds of biological targets through use of in vitro assays. Such assays may lead to false negatives when the complex metabolic processes that render a chemical bioactive in a living system are unable to be replicated in an in vitro environment. In the current study, a workflow is presented for complementing in vitro testing results with in silico and in vitro techniques to identify inactive parents that may produce active metabolites. A case study applying this workflow involved investigating the influence of metabolism for over 1,400 chemicals considered inactive across18 in vitro assays related to the estrogen receptor (ER) pathway. Over 7,500 first-generation and second-generation metabolites were generated for these in vitro inactive chemicals using an in silico software program. Next, a consensus model comprised of four individual quantitative structure activity relationship (QSAR) models was used to predict ER-binding activity for each of the metabolites. Binding activity was predicted for ~8–10% of metabolites in each generation, with these metabolites linked to 259 in vitro inactive parent chemicals. Metabolites were enriched in substructures consisting of alcohol, aromatic, and phenol bonds relative to their inactive parent chemicals, suggesting these features are potentially favorable for ER-binding. The workflow presented here can be used to identify parent chemicals that can be potentially bioactive, to aid confidence in high throughput risk screening.
机译:毒性测试方法的新范例涉及通过使用体外测定法快速筛选数百种生物学目标中的数千种化学物质。当无法在体外环境中复制使生命系统具有化学生物活性的复杂代谢过程时,此类测定法可能导致假阴性。在当前的研究中,提出了一种工作流程,用于通过计算机和体外技术补充体外测试结果,以识别可能产生活性代谢产物的非活性亲本。应用此工作流程的案例研究涉及调查18种与雌激素受体(ER)途径相关的体外测定中无效的1,400多种化学物质的代谢影响。使用in silico软件程序,为这些体外非活性化学品生成了超过7,500种第一代和第二代代谢物。接下来,由四个单独的定量结构活性关系(QSAR)模型组成的共识模型用于预测每种代谢物的ER结合活性。预测每一代代谢物的结合活性约为8-10%,这些代谢物与259种体外非活性母体化学物质有关。相对于其非活性母体化学物质,代谢物富含由醇,芳香族和苯酚键组成的亚结构,表明这些特征潜在地有利于ER结合。此处介绍的工作流程可用于识别可能具有生物活性的母体化学品,以帮助提高对高通量风险筛选的信心。

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