Literature DB >> 26022686

Fragment virtual screening based on Bayesian categorization for discovering novel VEGFR-2 scaffolds.

Yanmin Zhang1, Yu Jiao2, Xiao Xiong1, Haichun Liu1, Ting Ran1, Jinxing Xu1, Shuai Lu1, Anyang Xu1, Jing Pan1, Xin Qiao1, Zhihao Shi2, Tao Lu3,4, Yadong Chen5.   

Abstract

The discovery of novel scaffolds against a specific target has long been one of the most significant but challengeable goals in discovering lead compounds. A scaffold that binds in important regions of the active pocket is more favorable as a starting point because scaffolds generally possess greater optimization possibilities. However, due to the lack of sufficient chemical space diversity of the databases and the ineffectiveness of the screening methods, it still remains a great challenge to discover novel active scaffolds. Since the strengths and weaknesses of both fragment-based drug design and traditional virtual screening (VS), we proposed a fragment VS concept based on Bayesian categorization for the discovery of novel scaffolds. This work investigated the proposal through an application on VEGFR-2 target. Firstly, scaffold and structural diversity of chemical space for 10 compound databases were explicitly evaluated. Simultaneously, a robust Bayesian classification model was constructed for screening not only compound databases but also their corresponding fragment databases. Although analysis of the scaffold diversity demonstrated a very unevenly distribution of scaffolds over molecules, results showed that our Bayesian model behaved better in screening fragments than molecules. Through a literature retrospective research, several generated fragments with relatively high Bayesian scores indeed exhibit VEGFR-2 biological activity, which strongly proved the effectiveness of fragment VS based on Bayesian categorization models. This investigation of Bayesian-based fragment VS can further emphasize the necessity for enrichment of compound databases employed in lead discovery by amplifying the diversity of databases with novel structures.

Entities:  

Keywords:  Bayesian categorization; Fragment; Scaffold diversity; VEGFR-2; Virtual screening

Mesh:

Substances:

Year:  2015        PMID: 26022686     DOI: 10.1007/s11030-015-9592-4

Source DB:  PubMed          Journal:  Mol Divers        ISSN: 1381-1991            Impact factor:   2.943


  52 in total

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6.  Novel strategy for three-dimensional fragment-based lead discovery.

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