| Literature DB >> 32488835 |
Haiping Zhang1, Konda Mani Saravanan1, Yang Yang2, Md Tofazzal Hossain1,3, Junxin Li4, Xiaohu Ren5, Yi Pan6, Yanjie Wei7.
Abstract
A novel coronavirus, called 2019-nCoV, was recently found in Wuhan, Hubei Province of China, and now is spreading across China and other parts of the world. Although there are some drugs to treat 2019-nCoV, there is no proper scientific evidence about its activity on the virus. It is of high significance to develop a drug that can combat the virus effectively to save valuable human lives. It usually takes a much longer time to develop a drug using traditional methods. For 2019-nCoV, it is now better to rely on some alternative methods such as deep learning to develop drugs that can combat such a disease effectively since 2019-nCoV is highly homologous to SARS-CoV. In the present work, we first collected virus RNA sequences of 18 patients reported to have 2019-nCoV from the public domain database, translated the RNA into protein sequences, and performed multiple sequence alignment. After a careful literature survey and sequence analysis, 3C-like protease is considered to be a major therapeutic target and we built a protein 3D model of 3C-like protease using homology modeling. Relying on the structural model, we used a pipeline to perform large scale virtual screening by using a deep learning based method to accurately rank/identify protein-ligand interacting pairs developed recently in our group. Our model identified potential drugs for 2019-nCoV 3C-like protease by performing drug screening against four chemical compound databases (Chimdiv, Targetmol-Approved_Drug_Library, Targetmol-Natural_Compound_Library, and Targetmol-Bioactive_Compound_Library) and a database of tripeptides. Through this paper, we provided the list of possible chemical ligands (Meglumine, Vidarabine, Adenosine, D-Sorbitol, D-Mannitol, Sodium_gluconate, Ganciclovir and Chlorobutanol) and peptide drugs (combination of isoleucine, lysine and proline) from the databases to guide the experimental scientists and validate the molecules which can combat the virus in a shorter time.Entities:
Keywords: 3C-like protease; Coronavirus; Deep learning; Drug screening; Homology modeling
Mesh:
Substances:
Year: 2020 PMID: 32488835 PMCID: PMC7266118 DOI: 10.1007/s12539-020-00376-6
Source DB: PubMed Journal: Interdiscip Sci ISSN: 1867-1462 Impact factor: 2.233
Fig. 1The workflow of virtual screening of small chemical compounds and tripeptides against the 2019-nCov_3C-like protease
Fig. 2The sequence alignment of SARS_coronaivrus_3C-like protease and 2019-nCov_3C-like protease
Fig. 3The structural model of 2019-nCov_3C-like protease and its template. In a and b, the modeled 2019-nCov_3C-like protease and SARS_3C-like protease are shown with the mutated four residues marked with blue color. The ligand from the PDB 3TNT is transferred to the modeled structure (c) and based on residue distance from the transferred ligand, we define the pocket (d). The interaction between the ligand and the modeled 2019-nCov_3C-like protease is also shown (d)
The selected compounds that may inhibit 2019-nCov_3C-like protease based on the DFCNN score and autodock vina score
| Chemdiv ID | Vina score (kcal/mol) | DeepBindVec | Recommendation |
|---|---|---|---|
| C998-0189 | − 8.5 | > 0.995 | Recommended |
| C998-0197 | − 7.9 | > 0.995 | Can try |
| C998-0090 | − 7.8 | > 0.995 | Can try |
| C998-0948 | − 7.7 | > 0.995 | Recommended |
| C998-1046 | − 7.6 | > 0.995 | Recommended |
| D076-0195 | − 7.3 | > 0.995 | Recommended |
The potential drug candidates selected from the Targetmol-Natural Compound Library
| Natural compound | DFCNN Score |
|---|---|
| Adenosine; Vidarabine; Mannitol; Dulcitol; | Score ≥ 0.999 |
| 0.999 > Score ≥ 0.998 | |
| Aztreonam; Cytidine; Cytarabine; | 0.998 > Score ≥ 0.997 |
The potential drug candidates selected from the Targetmol-Approved Drug library
| Approved Drug name | DFCNN Score |
|---|---|
| Meglumine; Vidarabine; Adenosine; | Score ≥ 0.999 |
| AICAR_(Acadesine); Mylosar; Inosine; | 0.999 > Score ≥ 0.998 |
| Entecavir_hydrate; Procarbazine_hydrochloride; Aztreonam; Disopyramide; Benznidazole; Clofarabine; Bucetin; Nifuroxazide; Triflupromazine_hydrochloride; Doxifluridine; Cytarabine; Cefdinir; Bupropion_hydrochloride; Fluoxetine; Tenofovir; Pentostatin; Fluoxetine_hydrochloride; Imazalil; Atenolol | 0.998 > Score ≥ 0.997 |
The potential drug candidates selected from the Targetmol-Bioactive Compounds
| Bioactive compound | DFCNN Score |
|---|---|
| Vidarabine; Adenosine; Dulcitol; | Score ≥ 0.999 |
| Nelarabine; Tosedostat; Fosfomycin_Tromethamine; AICAR_(Acadesine); Mylosar; Guanosine; Inosine; Crotonoside; | 0.999 > Score ≥ 0.998 |
| KYA1797K; Mizoribine; 5-Hydroxy-1,7-diphenyl-6-hepten-3-one; ATPO; Entecavir_hydrate; Aztreonam; NXY-059; | 0.998 > Score ≥ 0.997 |
The predicted tripeptide that has high possibility (DFCNN score ≥ 0.99) to bind with the pocket of 2019-nCov_3C-like protease by DFCNN Score
| Peptide sequence | DFCNN Score |
|---|---|
| IKP; IPK; KIP; KPI; PIK; PKI | Score ≥ 0.997 |
| GKL; LGK; LKG; KGL; KLG; GKK; KGK; KKG; AKK; KAK; KKA; KPV; KVP; PKV; PVK; VKP; VPK | 0.997 > Score ≥ 0.996 |
| GKI; IGK; IKG; KGI; KIG; LKP; LPK; KLP; KPL; PLK; PKL; LLK; LKL; KLL | 0.996 > Score ≥ 0.995 |