Vassiliev Pavel M, Maltsev Dmitriy V, Spasov Alexander A, Perfilev Maxim A, Skripka Maria O, Kochetkov Andrey N
Laboratory for Information Technology in Pharmacology and Computer Modeling of Drugs, Research Center for Innovative Medicines, Volgograd State Medical University, 39 Novorossiyskaya Street, Volgograd 400087, Russia.
Department of Pharmacology and Bioinformatics, Volgograd State Medical University, 20 KIM Street, Volgograd 400001, Russia.
Pharmaceuticals (Basel). 2023 May 11;16(5):731. doi: 10.3390/ph16050731.
A classification consensus ensemble multitarget neural network model of the dependence of the anxiolytic activity of chemical compounds on the energy of their docking in 17 biotargets was developed. The training set included compounds thathadalready been tested for anxiolytic activity and were structurally similar to the 15 studied nitrogen-containing heterocyclic chemotypes. Seventeen biotargets relevant to anxiolytic activity were selected, taking into account the possible effect on them of the derivatives of these chemotypes. The generated model consistedof three ensembles of artificial neural networks for predicting three levels of anxiolytic activity, with sevenneural networks in each ensemble. A sensitive analysis of neurons in an ensemble of neural networks for a high level of activity made it possible to identify four biotargets ADRA1B, ADRA2A, AGTR1, and NMDA-Glut, which were the most significant for the manifestation of the anxiolytic effect. For these four key biotargets for 2,3,4,5-tetrahydro-11H-[1,3]diazepino[1,2-a]benzimidazole and [1,2,4]triazolo[3,4-a][2,3]benzodiazepine derivatives, eight monotarget pharmacophores of high anxiolytic activity were built. Superposition of monotarget pharmacophores built two multitarget pharmacophores of high anxiolytic activity, reflecting the universal features of interaction 2,3,4,5-tetrahydro-11H-[1,3]diazepino[1,2-a]benzimidazole and [1,2,4]triazolo[3,4-a][2,3]benzodiazepine derivatives with the most significant biotargets ADRA1B, ADRA2A, AGTR1, and NMDA-Glut.
建立了一种分类共识集成多目标神经网络模型,用于研究化合物的抗焦虑活性与其在17种生物靶点中的对接能量之间的依赖关系。训练集包括已经测试过抗焦虑活性且在结构上与15种研究的含氮杂环化学类型相似的化合物。考虑到这些化学类型衍生物对它们可能产生的影响,选择了17种与抗焦虑活性相关的生物靶点。生成的模型由三组人工神经网络组成,用于预测抗焦虑活性的三个水平,每组有七个神经网络。对神经网络组中高活性水平的神经元进行敏感性分析,从而确定了四个生物靶点ADRA1B、ADRA2A、AGTR1和NMDA - Glut,它们对抗焦虑作用的表现最为重要。针对2,3,4,5 - 四氢 - 11H - [1,3]二氮杂卓并[1,2 - a]苯并咪唑和[1,2,4]三唑并[3,4 - a][2,3]苯并二氮杂卓衍生物的这四个关键生物靶点,构建了八个高抗焦虑活性的单靶点药效团。单靶点药效团的叠加构建了两个高抗焦虑活性的多靶点药效团,反映了2,3,4,5 - 四氢 - 11H - [1,3]二氮杂卓并[1,2 - a]苯并咪唑和[1,2,4]三唑并[3,4 - a][2,3]苯并二氮杂卓衍生物与最重要的生物靶点ADRA1B、ADRA2A、AGTR1和NMDA - Glut相互作用的普遍特征。