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混合机器学习与离子液体抗 P100、MS2 和 Phi6 病毒潜力的实验研究

Hybrid Machine Learning and Experimental Studies of Antiviral Potential of Ionic Liquids against P100, MS2, and Phi6.

机构信息

QSAR Lab, ul. Trzy Lipy 3, 80-172 Gdańsk, Poland.

Laboratory of Environmental Chemometrics, Faculty of Chemistry, University of Gdansk, 80-308 Gdańsk, Poland.

出版信息

J Chem Inf Model. 2024 Mar 25;64(6):1996-2007. doi: 10.1021/acs.jcim.3c02037. Epub 2024 Mar 7.

Abstract

Viruses are a group of widespread organisms that are often responsible for very dangerous diseases, as most of them follow a mechanism to multiply and infect their hosts as quickly as possible. Pathogen viruses also mutate regularly, with the result that measures to prevent virus transmission and recover from the disease caused are often limited. The development of new substances is very time-consuming and highly budgeted and requires the sacrifice of many living organisms. Computational chemistry methods allow faster analysis at a much lower cost and, most importantly, reduce the number of living organisms sacrificed experimentally to a minimum. Ionic liquids (ILs) are a group of chemical compounds that could potentially find a wide range of applications due to their potential virucidal activity. In our study, we conducted a complex computational analysis to predict the antiviral activity of ionic liquids against three surrogate viruses: two nonenveloped viruses, phage P100 and phage MS2, and one enveloped virus, phage Phi6. Based on experimental data of toxic activity (logEC), we assigned activity classes to 154 ILs. Prediction models were created and validated according to the Organization for Economic Co-operation and Development (OECD) recommendations using the Classification Tree method. Further, we performed an external validation of our models through virtual screening on a set of 1277 theoretically generated ionic liquids and then selected 10 active ionic liquids, which were synthesized to verify their activity against the analyzed viruses. Our study proved the effectiveness and efficiency of computational methods to predict the antiviral activity of ionic liquids. Thus, computational models are a cost-effective alternative approach compared with time-consuming experimental studies where live animals are involved.

摘要

病毒是一组广泛存在的生物体,它们通常是非常危险疾病的罪魁祸首,因为它们中的大多数遵循一种机制,以便尽快繁殖和感染它们的宿主。病原体病毒也经常发生变异,因此,预防病毒传播和从疾病中恢复的措施往往是有限的。新物质的开发非常耗时且预算高,并需要牺牲大量生物。计算化学方法允许以更低的成本更快地进行分析,最重要的是,将实验中牺牲的生物数量减少到最低限度。离子液体 (ILs) 是一组可能具有广泛应用前景的化合物,因为它们具有潜在的抗病毒活性。在我们的研究中,我们进行了复杂的计算分析,以预测离子液体对三种替代病毒的抗病毒活性:两种无包膜病毒,噬菌体 P100 和噬菌体 MS2,以及一种包膜病毒,噬菌体 Phi6。根据毒性活性(logEC)的实验数据,我们将活性类别分配给 154 种 ILs。根据经济合作与发展组织 (OECD) 的建议,使用分类树方法创建和验证了预测模型。此外,我们通过对一组 1277 种理论生成的离子液体进行虚拟筛选对我们的模型进行了外部验证,然后选择了 10 种活性离子液体,对其进行合成以验证它们对分析病毒的活性。我们的研究证明了计算方法预测离子液体抗病毒活性的有效性和效率。因此,与涉及活体动物的耗时的实验研究相比,计算模型是一种具有成本效益的替代方法。

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