Structural bioinformatics and QSAR analysis applied to the acetylcholinesterase and bispyridinium aldoximes.

P. Mager, A. Weber
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引用次数: 8

Abstract

The methods of bioinformatics, molecular modelling, and quantitative structure-activity relationships (QSARs) using regression and artificial neural network (ANN) analyses were applied to develop safer aldoxime antidotes against poisoning by organophosphorus (OP) agents with high, mean, and low aging rates. We start here from a molecular modelling of the mouse AChE at an atomistic level. Aim is to predict qualitatively the structural requirements of an aldoxime that shows an unique reactivating activity against the three classes of OPs. An antidotal action should occur by a three-site mechanism: the aldoxime groups of the first pyridinium ring should point towards the catalytic site, and the second pyridinium ring and its substituents should be anchored at the peripherical and anionic subsites. Based on this model, it is predicted that a suitable substituent is based on an arginine-like moiety. Then, an ANN-based QSAR analysis using a training set of aldoximes with known structure and activities was applied. Its input layer consisted of seven nodes: the group-membership descriptors that parameterize the type of the OP, the logarithms of the distribution coefficients at pH 7.4 and their squared term, the lowest unoccupied molecular orbital (LUMO) energies, the scaled molar refractions of the substituents, and their squared term. It was shown that the qualitative prediction made by molecular modelling can be quantified by an ANN prediction.
结构生物信息学和QSAR分析应用于乙酰胆碱酯酶和双吡啶醛肟。
应用生物信息学、分子模型、定量构效关系(qsar)、回归分析和人工神经网络(ANN)分析等方法,开发了抗高、中、低老化率有机磷(OP)中毒的更安全的醛肟解毒剂。我们从原子水平的小鼠乙酰胆碱酯酶分子模型开始。目的是定性地预测一种醛肟的结构要求,该醛肟对三类OPs具有独特的再活化活性。解毒剂作用应通过三位点机制发生:第一个吡啶环的醛肟基团应指向催化位点,第二个吡啶环及其取代基应锚定在外周和阴离子亚位上。在此模型的基础上,预测了一个合适的取代基是基于一个类似精氨酸的片段。然后,使用已知结构和活性的醛肟训练集进行基于人工神经网络的QSAR分析。它的输入层由7个节点组成:参数化OP类型的隶属关系描述符、pH 7.4下分布系数的对数及其平方项、最低未占据分子轨道(LUMO)能量、取代基的缩放摩尔折射及其平方项。结果表明,通过分子模型进行的定性预测可以通过人工神经网络进行定量预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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