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Discovery of Influenza A virus neuraminidase inhibitors using support vector machine and Na < ve Bayesian models

机译:使用支持向量机和朴素贝叶斯模型发现甲型流感病毒神经氨酸酶抑制剂

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Neuraminidase (NA) is a critical enzyme in the life cycle of influenza virus, which is known as a successful paradigm in the design of anti-influenza agents. However, to date there are no classification models for the virtual screening of NA inhibitors. In this work, we built support vector machine and Na < ve Bayesian models of NA inhibitors and non-inhibitors, with different ratios of active-to-inactive compounds in the training set and different molecular descriptors. Four models with sensitivity or Matthews correlation coefficients greater than 0.9 were chosen to predict the NA inhibitory activities of 15,600 compounds in our in-house database. We combined the results of four optimal models and selected 60 representative compounds to assess their NA inhibitory profiles in vitro. Nine NA inhibitors were identified, five of which were oseltamivir derivatives with large C-5 substituents exhibiting potent inhibition against H1N1 NA with values in the range of 12.9-185.0 nM, and against H3N2 NA with values between 18.9 and 366.1 nM. The other four active compounds belonged to novel scaffolds, with values ranging 39.5-63.8 M against H1N1 NA and 44.5-114.1 M against H3N2 NA. This is the first time that classification models of NA inhibitors and non-inhibitors are built and their prediction results validated experimentally using in vitro assays.
机译:神经氨酸酶(NA)是流感病毒生命周期中的关键酶,众所周知,它是设计抗流感药物的成功范例。但是,迄今为止,还没有用于虚拟筛选NA抑制剂的分类模型。在这项工作中,我们建立了NA抑制剂和非抑制剂的支持向量机和Na

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