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In Silico Prediction of Organ Level Toxicity: Linking Chemistry to Adverse Effects

机译:器官水平毒性的计算机模拟:化学与不良反应的关联

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摘要

In silico methods to predict toxicity include the use of (Quantitative) Structure-Activity Relationships ((Q)SARs) as well as grouping (category formation) allowing for read-across. A challenging area for in silico modelling is the prediction of chronic toxicity and the No Observed (Adverse) Effect Level (NO(A)EL) in particular. A proposed solution to the prediction of chronic toxicity is to consider organ level effects, as opposed to modelling the NO(A)EL itself. This review has focussed on the use of structural alerts to identify potential liver toxicants. In silico profilers, or groups of structural alerts, have been developed based on mechanisms of action and informed by current knowledge of Adverse Outcome Pathways. These profilers are robust and can be coded computationally to allow for prediction. However, they do not cover all mechanisms or modes of liver toxicity and recommendations for the improvement of these approaches are given.
机译:预测毒性的计算机方法包括使用(定量)结构-活性关系((Q)SAR)以及分组(类别形成),以便进行交叉阅读。计算机模拟的一个挑战性领域是对慢性毒性的预测,尤其是对未观察到的(不良)效应水平(NO(A)EL)的预测。预测慢性毒性的一种建议解决方案是考虑器官水平的影响,而不是模拟NO(A)EL本身。这项审查的重点是使用结构警报来识别潜在的肝中毒。已基于作用机制开发了计算机模拟探查器或结构警报组,并从当前对不良结果途径的了解中获悉。这些分析器功能强大,可以进行计算编码以进行预测。但是,它们并未涵盖肝毒性的所有机制或模式,并提出了改善这些方法的建议。

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