Kleandrova Valeria V, Scotti Luciana, Bezerra Mendonça Junior Francisco Jaime, Muratov Eugene, Scotti Marcus T, Speck-Planche Alejandro
Laboratory of Fundamental and Applied Research of Quality and Technology of Food Production, Moscow State University of Food Production, Moscow, Russian Federation.
Postgraduate Program in Natural and Synthetic Bioactive Products, Federal University of Paraíba, João Pessoa, Brazil.
Front Chem. 2021 Mar 10;9:634663. doi: 10.3389/fchem.2021.634663. eCollection 2021.
Parasitic diseases remain as unresolved health issues worldwide. While for some parasites the treatments involve drug combinations with serious side effects, for others, chemical therapies are inefficient due to the emergence of drug resistance. This urges the search for novel antiparasitic agents able to act through multiple mechanisms of action. Here, we report the first multi-target model based on quantitative structure-activity relationships and a multilayer perceptron neural network (mt-QSAR-MLP) to virtually design and predict versatile inhibitors of proteins involved in the survival and/or infectivity of different pathogenic parasites. The mt-QSAR-MLP model exhibited high accuracy (>80%) in both training and test sets for the classification/prediction of protein inhibitors. Several fragments were directly extracted from the physicochemical and structural interpretations of the molecular descriptors in the mt-QSAR-MLP model. Such interpretations enabled the generation of four molecules that were predicted as multi-target inhibitors against at least three of the five parasitic proteins reported here with two of the molecules being predicted to inhibit all the proteins. Docking calculations converged with the mt-QSAR-MLP model regarding the multi-target profile of the designed molecules. The designed molecules exhibited drug-like properties, complying with Lipinski's rule of five, as well as Ghose's filter and Veber's guidelines.
寄生虫病仍然是全球尚未解决的健康问题。对于一些寄生虫,治疗方法涉及使用具有严重副作用的药物组合,而对于另一些寄生虫,由于耐药性的出现,化学疗法效率低下。这促使人们寻找能够通过多种作用机制发挥作用的新型抗寄生虫药物。在此,我们报告了第一个基于定量构效关系和多层感知器神经网络的多靶点模型(mt-QSAR-MLP),用于虚拟设计和预测参与不同致病寄生虫生存和/或感染性的蛋白质的通用抑制剂。mt-QSAR-MLP模型在训练集和测试集中对蛋白质抑制剂的分类/预测均表现出高精度(>80%)。从mt-QSAR-MLP模型中分子描述符的物理化学和结构解释中直接提取了几个片段。这些解释使得能够生成四个分子,预测它们是针对此处报道的五种寄生蛋白质中至少三种的多靶点抑制剂,其中两个分子预计能抑制所有蛋白质。对接计算与mt-QSAR-MLP模型在设计分子的多靶点特征方面取得了一致。设计的分子具有类药物性质,符合Lipinski的五规则以及Ghose过滤器和Veber指南。