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首页> 外文期刊>Current topics in medicinal chemistry >Multi-Target QSAR Approaches for Modeling Protein Inhibitors. Simultaneous Prediction of Activities Against Biomacromolecules Present in Gram-Negative Bacteria
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Multi-Target QSAR Approaches for Modeling Protein Inhibitors. Simultaneous Prediction of Activities Against Biomacromolecules Present in Gram-Negative Bacteria

机译:用于蛋白质抑制剂建模的多目标QSAR方法。对革兰氏阴性细菌中存在的生物大分子活性的同时预测

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Drug discovery is aimed at finding therapeutic agents for the treatment of many diverse diseases and infections. However, this is a very slow an expensive process, and for this reason, in silico approaches are needed to rationalize the search for new molecular entities with desired biological profiles. Models focused on quantitative structure-activity relationships (QSAR) have constituted useful complementary tools in medicinal chemistry, allowing the virtual predictions of dissimilar pharmacological activities of compounds. In the last 10 years, multi-target (mt) QSAR models have been reported, representing great advances with respect to those models generated from classical approaches. Thus, mt-QSAR models can simultaneously predict activities against different biological targets (proteins, microorganisms, cell lines, etc.) by using large and heterogeneous datasets of chemicals. The present review is devoted to discuss the most promising mt-QSAR models, particularly those developed for the prediction of protein inhibitors. We also report the first multi-tasking QSAR (mtk-QSAR) model for simultaneous prediction of inhibitors against biomacromolecules (specifically proteins) present in Gram-negative bacteria. This model allowed us to consider both different proteins and multiple experimental conditions under which the inhibitory activities of the chemicals were determined. The mtk-QSAR model exhibited accuracies higher than 98% in both training and prediction sets, also displaying a very good performance in the classification of active and inactive cases that depended on the specific elements of the experimental conditions. The physicochemical interpretations of the molecular descriptors were also analyzed, providing important insights regarding the molecular patterns associated with the appearance/enhancement of the inhibitory potency.
机译:药物发现的目的是寻找用于治疗多种疾病和感染的治疗剂。但是,这是一个非常缓慢且昂贵的过程,因此,需要计算机方法来合理地寻找具有所需生物学特征的新分子实体。专注于定量构效关系(QSAR)的模型已构成药物化学中的有用补充工具,可以对化合物的不同药理活性进行虚拟预测。在过去的十年中,已经报告了多目标(mt)QSAR模型,与通过经典方法生成的那些模型相比,这代表了巨大的进步。因此,mt-QSAR模型可以通过使用庞大且异构的化学数据集同时预测针对不同生物学目标(蛋白质,微生物,细胞系等)的活性。本综述致力于讨论最有希望的mt-QSAR模型,尤其是为预测蛋白质抑制剂而开发的模型。我们还报告了第一个多任务QSAR(mtk-QSAR)模型,用于同时预测革兰氏阴性细菌中存在的生物大分子(特别是蛋白质)抑制剂的预测。该模型使我们能够考虑不同的蛋白质和多种实验条件,在这些条件下可以确定化学药品的抑制活性。 mtk-QSAR模型在训练集和预测集上均显示出高于98%的准确性,这在根据实验条件的特定要素对活动和非活动案例进行分类中也显示出非常好的性能。还分析了分子描述符的物理化学解释,提供了与抑制力的出现/增强相关的分子模式的重要见解。

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