Identification of essential 2D and 3D chemical features for discovery of the novel tubulin polymerization inhibitors

(2019) Identification of essential 2D and 3D chemical features for discovery of the novel tubulin polymerization inhibitors. Curr Top Med Chem. ISSN 1873-4294 (Electronic) 1568-0266 (Linking)

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Abstract

Background-Tubulin polymerization inhibitors interfere with microtubule assembly and their functions lead to mitotic arrest, therefore they are attractive target for design and development of novel anticancer compounds. Objective- The proposed novel and effective structures following the use of three-dimensional-quantitative structure activity relationship (3D-QSAR) pharmacophore based virtual screening clearly demonstrate the high efficiency of this method in modern drug discovery. Method-Combined computational approach was applied to extract the essential 2D and 3D features requirements for higher activity as well as identify new anti-tubulin agents. Results-The best quantitative pharmacophore model, Hypo1, exhibited good correlation of 0.943 (RMSD=1.019) and excellent predictive power in the training set compounds. Generated model AHHHR, was well mapped to colchicine site and three-dimensional spatial arrangement of their features were in good agreement with the vital interactions in the active site. Total prediction accuracy (0.92 for training set and 0.86 for test set), enrichment factor (4.2 for training set and 4.5 for test set) and the area under the ROC curve (0.86 for training set and 0.94 for the test set), the developed model using Extended Class Finger Prints of maximum diameter 4 (ECFP4) was chosen as the best model. Conclusion- Developed computational platform provided a better understanding of requirement features for colchicine site inhibitors and we believe the results of this study might be useful for the rational design and optimization of new inhibitors.

Item Type: Article
Keywords: 2D feature 3d-qsa Bayesian model Docking Virtual screening Pharmacophore modeling Tubulin inhibitor extended-connectivity fingerprints
Subjects: QV Pharmacology
Divisions: Faculty of Pharmacy and Pharmaceutical Sciences > گروه شیمی دارویی
Journal or Publication Title: Curr Top Med Chem
Journal Index: Pubmed
Identification Number: https://doi.org/10.2174/1568026619666190520083655
ISSN: 1873-4294 (Electronic) 1568-0266 (Linking)
Depositing User: Zahra Otroj
URI: http://eprints.mui.ac.ir/id/eprint/10531

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