| Literature DB >> 34041221 |
Shailima Rampogu1, Keun Woo Lee1.
Abstract
The recent outbreak of severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2) has caused a devastating effect globally with no effective treatment. The swift strategy to find effective treatment against coronavirus disease 2019 (COVID-19) is to repurpose the approved drugs. In this pursuit, an exhaustive computational method has been used on the DrugBank compounds targeting nsp16/nsp10 complex (PDB code: 6W4H). A structure-based pharmacophore model was generated, and the selected model was escalated to screen DrugBank database, resulting in three compounds. These compounds were subjected to molecular docking studies at the protein-binding pocket employing the CDOCKER module available with the Discovery Studio v18. In order to discover potential candidate compounds, the co-crystallized compound S-adenosyl methionine (SAM) was used as the reference compound. Additionally, the compounds remdesivir and hydroxycholoroquine were employed for comparative docking. The results have shown that the three compounds have demonstrated a higher dock score than the reference compounds and were upgraded to molecular dynamics simulation (MDS) studies. The MDS results demonstrated that the three compounds, framycetin, kanamycin, and tobramycin, are promising candidate compounds. They have represented a stable binding mode at the targets binding pocket with an average protein backbone root mean square deviation below 0.3 nm. Additionally, they have prompted the hydrogen bonds during the entire simulations, inferring that the compounds have occupied the active site firmly. Taken together, our findings propose framycetin, kanamycin, and tobramycin as potent putative inhibitors for COVID-19 therapeutics.Entities:
Keywords: COVID-19; SARS-CoV-2; drug repurposing; novel coronavirus; pharmacophore modelling
Year: 2021 PMID: 34041221 PMCID: PMC8141588 DOI: 10.3389/fchem.2021.636362
Source DB: PubMed Journal: Front Chem ISSN: 2296-2646 Impact factor: 5.221
Generation of different pharmacophore models and their characterization.
| Pharmacophore model | Number of features | Feature set | Selectivity score |
|---|---|---|---|
| Model 1 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 2 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 3 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 4 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 5 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 6 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 7 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 8 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 9 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
| Model 10 | 6 | HBA, HBA, HBD, HBD, PI, PI | 14.834 |
HBA refers to hydrogen bond acceptor, HBD refers to hydrogen bond donor, and PI indicates positive ionizable.
FIGURE 1Pharmacophore model generation. (A) Pharmacophore features. (B) Geometry of the model. (C) Model complementary to the residues and features.
Binding affinity scores according to the CDOCKER.
| Compound name | DrugBank ID | -CDOCKER interaction energy (kcal/mol) |
|---|---|---|
| Framycetin | DB00452 | 68.80 |
| Kanamycin | DB01172 | 62.18 |
| Tobramycin | DB00684 | 58.40 |
| S-Adenosylmethionine | Reference compound | 64.26 |
| Remdesivir | 57.16 | |
| Hydroxychloroquine | 49.13 |
FIGURE 2Molecular dynamics simulation findings. (A) Stability analysis as inferred by RMSD. (B) Compactness of the protein from Rg. (C) Potential energy during the entire simulation. (D) Fluctuations rendered by the RMSF plots.
FIGURE 3Binding mode analysis of the compounds. (A) Accommodation of ligands at the binding pocket and (B) its enlarged view surrounded by the binding pocket residues.
FIGURE 4Intermolecular hydrogen bond interactions. (A) Molecular interactions between framycetin and the key residues. (B) Hydrogen bond interactions between kanamycin and the protein residues. (C) Intermolecular hydrogen bond interactions between tobramycin and the protein residues.
FIGURE 5Hydrogen bond interactions between the protein and ligand during the whole simulations.
FIGURE 6Hydrogen bond distance of the interacting residues (atoms) and the ligand atoms of framycetin.
FIGURE 7Hydrogen bond distance of the interacting residues (atoms) and the ligand atoms of kanamycin.
FIGURE 8Hydrogen bond distance of the interacting residues (atoms) and the ligand atoms of tobramycin.
FIGURE 9Molecular dynamics simulation–guided interaction energy during the whole simulation. (A) Interaction energy from Coul-SR:Protein-lig and (B) interaction energy from LJ-SR:Protein-lig.