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Quantitative Predictions for Molecular Initiating Events Using Three-Dimensional Quantitative Structure-Activity Relationships

机译:使用三维定量结构 - 活性关系的分子启动事件的定量预测

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摘要

The aim of human toxicity risk assessment is to determine a safe dose or exposure to a chemical for humans. This requires an understanding of the exposure of a person to a chemical and how much of the chemical is required to cause an adverse effect. To do this computationally, we need to understand how much of a chemical is required to perturb normal biological function in an adverse outcome pathway (AOP). The molecular initiating event (MIE) is the first step in an adverse outcome pathway and can be considered as a chemical interaction between a chemical toxicant and a biological molecule. Key chemical characteristics can be identified and used to model the chemistry of these MIEs. In this study, we do just this by using chemical substructures to categorize chemicals and 3D quantitative structure-activity relationships (QSARs) based on comparative molecular field analysis (CoMFA) to calculate molecular activity. Models have been constructed across a variety of human biological targets, the glucocorticoid receptor, mu opioid receptor, cyclooxygenase-2 enzyme, human ether-a-go-go related gene channel, and dopamine transporter. These models tend to provide molecular activity estimation well within one log unit and electronic and steric fields that can be visualized to better understand the MIE and biological target of interest. The outputs of these fields can be used to identify key aspects of a chemical's chemistry which can be changed to reduce its ability to activate a given MIE. With this methodology, the quantitative chemical activity can be predicted for a wide variety of MIEs, which can feed into AOP-based chemical risk assessments, and understanding of the chemistry behind the MIE can be gained.
机译:人类毒性风险评估的目的是确定安全剂量或暴露于用于人类的化学物质。这需要了解将人暴露于化学物质以及需要多少化学物质来引起不利影响。为计算地进行这一方式,我们需要了解在不良结果途径(AOP)中扰乱正常生物学功能所需的化学物质。分子引发事件(MIE)是不良结果途径的第一步,并且可以被认为是化学毒物和生物分子之间的化学相互作用。可以识别和用于模拟这些mies的化学性的关键化学特性。在这项研究中,我们通过使用化学子结构来分类化学品和3D定量结构 - 活性关系(QSAR)来基于比较分子场分析(COMFA)来计算分子活性。模型已经在各种人体生物学靶标中构建,糖皮质激素受体,Mu阿片受体,环氧化酶-2酶,人醚-A-Go-Go相关基因通道和多巴胺转运蛋白。这些模型倾向于在一个日志单元和电子和空间领域内提供分子活性估计,这可以可视化以更好地了解感兴趣的麦丽和生物学目标。这些字段的输出可用于识别化学化学化学的关键方面,这可以改变,以减少激活给定mie的能力。通过这种方法,可以预测定量化学活性,可以预测各种各样的MIE,可以进入基于AOP的化学风险评估,并且可以获得MIE背后的化学的理解。

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