Binding organophosphate pesticides to acetylcholinesterase: risk assessment using the Monte Carlo method

A. Toropova, A. Toropov, A. Roncaglioni, E. Benfenati
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Abstract

Abstract Binding to acetylcholinesterase (AChE k1) may cause toxic effects in humans. Organophosphates simultaneously are both dangerous and useful substances. Dangerous since they are employed in chemical warfare and useful when they are applied as pesticides. Here, we suggest the models for organophosphates binding to AChE k1 developed via representing the molecular structure by a simplified molecular input-line entry system using so-called optimal descriptors calculated with the Monte Carlo technique using the Correlation and Logic (CORAL) free software available on the Internet (http://www.insilico.eu/coral). Quantitative structure-activity relationships (QSARs) serve to develop predictive models for organophosphates. The predictive potential of these models is quite good: the determination coefficient for the validation set ranged from 0.87 to 0.90. These models were built up according to the principle ‘QSARs is a random event’, that is, predictive potential of an approach should be checked up with several splits of available data into the training and test sets. The special scheme of mechanistic interpretation definition is represented. The mechanistic interpretation is based on probabilities of molecular features to be in the sub-group of promoters of increase for endpoint or in sub-group of promoters of it is decrease.
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有机磷农药与乙酰胆碱酯酶的结合:使用蒙特卡罗方法的风险评估
与乙酰胆碱酯酶(AChE k1)结合可能对人体产生毒性作用。有机磷同时是危险和有用的物质。危险是因为它们被用于化学战争,当它们被用作杀虫剂时是有用的。在这里,我们提出了有机磷酸盐与AChE k1结合的模型,该模型通过简化的分子输入线输入系统来表示分子结构,该系统使用所谓的最佳描述符,用蒙特卡罗技术计算,使用互联网上可获得的相关和逻辑(CORAL)免费软件(http://www.insilico.eu/coral)。定量构效关系(QSARs)用于开发有机磷酸盐的预测模型。这些模型的预测潜力相当好:验证集的决定系数在0.87到0.90之间。这些模型是根据“qsar是随机事件”的原则建立的,也就是说,一种方法的预测潜力应该通过将可用数据分割到训练集和测试集来检查。给出了机械解释定义的特殊方案。机制解释是基于分子特征在端点增加的启动子亚群或在端点减少的启动子亚群中的概率。
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