Pharmacophore Mode lingand Virtual Screening to Design the Potential Influenza Virus Endonuclease Inhibitors |
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Authors: | Huang‐Sheng Liao Josephine W. Wu Hsuan‐Liang Liu Jian‐Hua Zhao Cheng‐Wen Tsao Kung‐Tien Liu Chih‐Kuang Chuang Hsin‐Yi Lin Wei‐Bor Tsai Yih Ho |
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Affiliation: | 1. Graduate Institute of Biotechnology, National Taipei University of Technology, 1 Sec. 3 Zhong Xiao E. Rd., Taipei 10608, Taiwan;2. Department of Chemical Engineering and Biotechnology, National Taipei University of Technology, 1 Sec. 3 Zhong Xiao E. Rd., Taipei 10608, Taiwan;3. Chemical Analysis Division, Institute of Nuclear Energy Research, 1000, Wunhua Rd., Longtan Township, Taoyuan County 32546, Taiwan;4. Department of Applied Cosmetology Taoyuan Innovation Institute of Technology, 414 Sec. 3, Jhongshan E. Rd., Jhongli City, Taoyuan County 32091, Taiwan;5. Division of Genetics and Metabolism, Department of Medical Research, Mackay Memorial Hospital, 92, Sec. 2, Chung‐Shan N. Rd., Taipei 10449, Taiwan;6. College of Medicine, Fu‐Jen Catholic University, 510 Chung Cheng Rd, Hsinchuang, Taipei County 24205, Taiwan;7. Department of Chemical Engineering, National Taiwan University, 1 Sec. 4 Roosevelt Rd., Taipei 106, Taiwan;8. School of Pharmacy, Taipei Medical University, 250 Wu‐Hsing St., Taipei 110, Taiwan |
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Abstract: | Influenza virus endonuclease is an attractive target for antiviral therapy in the treatment of influenza infection. The purpos e of this study is to design a novel antiviral agent with improved biological activities against the influenza virus endonuclease. In this study, chemical feature‐based 3D pharmacophore models were developed from 41 known influenza virus endonuclease inhibitors. The best quantitative pharmacohore model (Hypo 1), which consists of two hydrogen‐bond acceptors and two hydrophobic features, yields the highest correlation coefficient (R = 0.886). Hypo 1 was further validated by the cross validation method and the test set compounds. The application of this model for predicting the activities of 11 known influenza virus endonuclease inhibitors in the test set shows great success. The correlation coefficient of 0.942 and a cross validation of 95;% confidence level prove that this model is reliable in identifying structurally diverse compounds for influenza virus endonuclease inhibition. The most active compound (compound 1) from the training set was docked into the active site of the influenza virus endonuclease as an additional verification that the pharmacophore model is accurate. The docked conformation showed important hydrogen bond interactions between the compound and two amino acids, Lys 134 and Lys 137. After validation, this model was used to screen the NCI chemical database to identify new influenza virus endonuclease inhibitors. Our study shows that the to pranking compound out of the 10 newly identified compounds using fit value ranking has an estimated activity of 0.049 μM. These newly identified lead compounds can be further experimentally validated using in vitro techniques. |
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Keywords: | Influenza virus endonuclease Endonuclease inhibitors Pharmacophore model |
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