Abstract
In recent years, an epidemic of the highly pathogenic avian influenza H7N9 virus has persisted in China, with a high mortality rate. To develop novel anti-influenza therapies, we have constructed a machine-learning-based scoring function (RF-NA-Score) for the effective virtual screening of lead compounds targeting the viral neuraminidase (NA) protein. RF-NA-Score is more accurate than RF-Score, with a root-mean-square error of 1.46, Pearson’s correlation coefficient of 0.707, and Spearman’s rank correlation coefficient of 0.707 in a 5-fold cross-validation study. The performance of RF-NA-Score in a docking-based virtual screening of NA inhibitors was evaluated with a dataset containing 281 NA inhibitors and 322 noninhibitors. Compared with other docking–rescoring virtual screening strategies, rescoring with RF-NA-Score significantly improved the efficiency of virtual screening, and a strategy that averaged the scores given by RF-NA-Score, based on the binding conformations predicted with AutoDock, AutoDock Vina, and LeDock, was shown to be the best strategy. This strategy was then applied to the virtual screening of NA inhibitors in the SPECS database. The 100 selected compounds were tested in an in vitro H7N9 NA inhibition assay, and two compounds with novel scaffolds showed moderate inhibitory activities. These results indicate that RF-NA-Score improves the efficiency of virtual screening for NA inhibitors, and can be used successfully to identify new NA inhibitor scaffolds. Scoring functions specific for other drug targets could also be established with the same method.
Highlights
Since the first report of human infection with the avian influenza H7N9 virus in China in March 2013, this new viral subtype has caused sustained annual epidemic in subsequent years [1, 2]
Compared with other docking–rescoring virtual screening strategies, rescoring with RF-NA-Score significantly improved the efficiency of virtual screening, and a strategy that averaged the scores given by RF-NA-Score, based on the binding conformations predicted with AutoDock, AutoDock Vina, and LeDock, was shown to be the best strategy
The performance of RF-NA-Score was rigorously validated with 5-fold cross-validation (5-CV) and leave-one-out cross-validation (LOOCV) methods
Summary
Since the first report of human infection with the avian influenza H7N9 virus in China in March 2013, this new viral subtype has caused sustained annual epidemic in subsequent years [1, 2]. The emergence of new types of influenza viruses and the spread of drug-resistant strains [6] make the influenza virus a serious public-health threat. The amino acid residues in the active site of NA are highly conserved among all natural strains of influenza virus infections [10]. These features of NA make it an attractive target for the control and treatment of influenza virus [11]. The emergence and wide-ranging spread of oseltamivir-resistant strains [6, 16], the limited use of zanamivir because its oral bioavailability is poor [17], and the emergence of new and more aggressive strains, such as avian H5N1 and H7N9 [1], have amplified the need for the development of new and more-effective antiviral compounds
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