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探索流感神经氨酸酶抑制剂的化学空间。

Exploring the chemical space of influenza neuraminidase inhibitors.

作者信息

Anuwongcharoen Nuttapat, Shoombuatong Watshara, Tantimongcolwat Tanawut, Prachayasittikul Virapong, Nantasenamat Chanin

机构信息

Center of Data Mining and Biomedical Informatics, Faculty of Medical Technology, Mahidol University, Bangkok, Thailand; Department of Clinical Microbiology and Applied Technology, Faculty of Medical Technology, Mahidol University, Bangkok, Thailand.

Center of Data Mining and Biomedical Informatics, Faculty of Medical Technology, Mahidol University , Bangkok , Thailand.

出版信息

PeerJ. 2016 Apr 19;4:e1958. doi: 10.7717/peerj.1958. eCollection 2016.

Abstract

The fight against the emergence of mutant influenza strains has led to the screening of an increasing number of compounds for inhibitory activity against influenza neuraminidase. This study explores the chemical space of neuraminidase inhibitors (NAIs), which provides an opportunity to obtain further molecular insights regarding the underlying basis of their bioactivity. In particular, a large set of 347 and 175 NAIs against influenza A and B, respectively, was compiled from the literature. Molecular and quantum chemical descriptors were obtained from low-energy conformational structures geometrically optimized at the PM6 level. The bioactivities of NAIs were classified as active or inactive according to their half maximum inhibitory concentration (IC50) value in which IC50 < 1µM and ≥ 10µM were defined as active and inactive compounds, respectively. Interpretable decision rules were derived from a quantitative structure-activity relationship (QSAR) model established using a set of substructure descriptors via decision tree analysis. Univariate analysis, feature importance analysis from decision tree modeling and molecular scaffold analysis were performed on both data sets for discriminating important structural features amongst active and inactive NAIs. Good predictive performance was achieved as deduced from accuracy and Matthews correlation coefficient values in excess of 81% and 0.58, respectively, for both influenza A and B NAIs. Furthermore, molecular docking was employed to investigate the binding modes and their moiety preferences of active NAIs against both influenza A and B neuraminidases. Moreover, novel NAIs with robust binding fitness towards influenza A and B neuraminidase were generated via combinatorial library enumeration and their binding fitness was on par or better than FDA-approved drugs. The results from this study are anticipated to be beneficial for guiding the rational drug design of novel NAIs for treating influenza infections.

摘要

对抗突变流感毒株的出现促使人们筛选越来越多具有抗流感神经氨酸酶抑制活性的化合物。本研究探索了神经氨酸酶抑制剂(NAIs)的化学空间,这为深入了解其生物活性的潜在基础提供了契机。具体而言,分别从文献中收集了针对甲型和乙型流感的347种和175种NAIs。分子和量子化学描述符是从在PM6水平进行几何优化的低能构象结构中获得的。根据NAIs的半数最大抑制浓度(IC50)值将其生物活性分为活性或非活性,其中IC50 < 1µM和≥ 10µM分别定义为活性化合物和非活性化合物。通过决策树分析,利用一组子结构描述符建立定量构效关系(QSAR)模型,得出可解释的决策规则。对两个数据集都进行了单变量分析、决策树建模的特征重要性分析和分子支架分析,以区分活性和非活性NAIs之间的重要结构特征。对于甲型和乙型流感NAIs,从准确率和马修斯相关系数值分别超过81%和0.58可以推断出具有良好的预测性能。此外,采用分子对接研究活性NAIs对甲型和乙型流感神经氨酸酶的结合模式及其部分偏好。此外,通过组合库枚举生成了对甲型和乙型流感神经氨酸酶具有强大结合适应性的新型NAIs,其结合适应性与FDA批准的药物相当或更好。预计本研究结果将有助于指导治疗流感感染的新型NAIs的合理药物设计。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/dd44/4841240/f1b77e45eb21/peerj-04-1958-g001.jpg

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