Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
10592930 | Bioorganic & Medicinal Chemistry Letters | 2014 | 9 Pages |
Abstract
With the emergence of drug resistance and the structural determination of the PA N-terminal domain (PAN), influenza endonucleases have become an attractive target for antiviral therapies for influenza infection. Here, we combined 3D-QSAR with side-chain hopping and molecular docking to produce novel structures as endonuclease inhibitors. First, a new molecular library was generated with side-chain hopping on an existing template molecule, L-742001, using an in-house fragment library that targets bivalent-cation-binding proteins. Then, the best 3D-QSAR model (AAAHR.500), with q2Â =Â 0.76 and r2Â =Â 0.97 from phase modeling, was constructed from 23 endonuclease inhibitors and validated with 17 test compounds. The AAAHR.500 model was then used to select effective candidates from the new molecular library. Combining 3D-QSAR with docking using Glide and Autodock, 13 compounds were considered the most likely candidate inhibitors. Docking studies showed that the binding modes of these compounds were consistent with the crystal structures of known inhibitors. These compounds could serve as potential endonuclease inhibitors for further biological activity tests.
Keywords
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Physical Sciences and Engineering
Chemistry
Organic Chemistry
Authors
Zhihui Yan, Lijie Zhang, Haiyang Fu, Zhonghua Wang, Jianping Lin,