| Literature DB >> 24955134 |
Xia Wang1, Haipeng Chen2, Feng Yang2, Jiayu Gong2, Shiliang Li1, Jianfeng Pei3, Xiaofeng Liu1, Hualiang Jiang1, Luhua Lai3, Honglin Li4.
Abstract
BACKGROUND: The progress in computer-aided drug design (CADD) approaches over the past decades accelerated the early-stage pharmaceutical research. Many powerful standalone tools for CADD have been developed in academia. As programs are developed by various research groups, a consistent user-friendly online graphical working environment, combining computational techniques such as pharmacophore mapping, similarity calculation, scoring, and target identification is needed.Entities:
Keywords: 3D similarity calculation; Cavity detection; Online drug design platform; Pharmacophore search; Target prediction
Year: 2014 PMID: 24955134 PMCID: PMC4046018 DOI: 10.1186/1758-2946-6-28
Source DB: PubMed Journal: J Cheminform ISSN: 1758-2946 Impact factor: 5.514
List of computational techniques supported by Drug
| Cavtiy | Detect and score potential binding sites of a protein | [ | Yes |
| Pocket v.2 | Derive pharmacophore models based on a given receptor of complex structure | [ | Yes |
| PharmMapper | Pharmacophore mapping (online web service) | [ | Yes |
| SHAFTS | 3D similarity calculation | [ | Yes |
| Cyndi | Molecular conformation generation | [ | Yes |
| Pybel | Python wrapper for the OpenBabel cheminformatics toolkit | [ | Yes |
Figure 1Workflow of Drug automating pharmacophore modeling using Cavity and Pocket v.2, screening with PharmMapper and SHAFTS, and searching conformers using Cyndi. Common modules in iDrug platform are framed in black.
Figure 2The Drug interface. The task management is in the upper left and provides easy access to the full set of the history work. The Jmol-based molecular viewer is in the middle and displays the query molecule and results structure. The query editor is shown in the bottom and supports the interactive modification of the parameters based on the properties of the computational software. The results browser is on the right and displays the complete results along with the available details. In this figure, potential targets of tamoxifen obtained from iDrug are shown as well as the target pharmacophore model. On mouse over, a preview of the annotation information is displayed in a pop-up window, as shown for 2GPU in this example.
Data source of Drug
| ZINC Lead-like | 3,027,615 | |
| NCI Open Database | 246,483 | |
| PharmTargetDB | 7,302 |
Figure 3Pharmacophore depiction as used in this study on top of PDB entry: 1AQ1 (note that 1AQ1 with its cocrystallized ligand is used as a reference).
AUC value and EF values at 0.5, 1, 2 and 5% for CDK2 inhibitor pharmacophore-based virtual screening
| 0.63 | 0.5% | 1.0% | 2.0% | 5.0% |
| 2.5 | 1.3 | 2.5 | 2 | |
Retrieval of 11 targets of 4OH-Tamoxifen by Drug
| Estrogen receptor-γ | [ | 5.736 | 1VJB | 0.01 |
| Estradiol 17β-hydroxysteroid dehydrogenase 1 | [ | 4.111 | 1I5R | 0.26 |
| Dihydrofolate reductase | [ | 3.777 | 1DG7 | 0.45 |
| Glutathione S-transferase A1 | [ | 3.655 | 1GSF | 0.73 |
| Prostaglandin G/H synthase 2 | [ | 3.411 | 1PXX | 1.36 |
| Liver carboxylesterase 1 | [ | 3.344 | 1YA4 | 1.59 |
| Protein kinase C theta type | [ | 3.171 | 1XJD | 2.18 |
| Calmodulin | [ | 2.974 | 1XA5 | 3.63 |
| Collagenase 3 | [ | 2.945 | 3I7I | 4.57 |
| Alcohol dehydrogenase E chain | [ | 2.881 | 1MGO | 7.37 |
| 3-alpha-(or20-beta)-hydroxysteroid dehydrogenase | [ | 2.835 | 1HDC | 9.87 |
AUC value and EF values at 0.5, 1, 2 and 5% for EGFR inhibitor similarity virtual screening
| 0.87 | 0.5% | 1.0% | 2.0% | 5.0% |
| 56.9 | 42.9 | 28.5 | 13.6 | |