Using integrated in-silico computational techniques, including homology modeling, structure-based and pharmacophore-based virtual screening, molecular dynamic simulations, per-residue energy decomposition analysis and atom-based 3D-QSAR analysis, we proposed ten novel compounds as potential CCR5-dependent HIV-1 entry inhibitors. Via validated docking calculations, binding free energies revealed that novel leads demonstrated better binding affinities with CCR5 compared to maraviroc, an FDA-approved HIV-1 entry inhibitor and in clinical use. Per-residue interaction energy decomposition analysis on the averaged MD structure showed that hydrophobic active residues Trp86, Tyr89 and Tyr108 contributed the most to inhibitor binding. The validated 3D-QSAR model showed a high cross-validated rcv 2 value of 0.84 using three principal components and non-cross-validated r2 value of 0.941. It was also revealed that almost all compounds in the test set and training set yielded a good predicted value. Information gained from this study could shed light on the activity of a new series of lead compounds as potential HIV entry inhibitors and serve as a powerful tool in the drug design and development machinery. © 2014 by the authors; licensee MDPI, Basel, Switzerland.
CITATION STYLE
Moonsamy, S., Dash, R. C., & Soliman, M. E. S. (2014). Integrated computational tools for identification of CCR5 antagonists as potential HIV-1 entry inhibitors: Homology modeling, virtual screening, molecular dynamics simulations and 3D QSAR analysis. Molecules, 19(4), 5243–5265. https://doi.org/10.3390/molecules19045243
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