Discovery of Benzimidazole Derivatives as Novel Aldosterone Synthase Inhibitors: QSAR, Docking Studies, and Molecular Dynamics Simulation
- Corresponding author: Mao SHU, maoshu@cqut.edu.cn Zhi-Hua LIN, zhlin@cqit.edu.cn
Citation: Hong-Mei GUO, Na YU, Le FU, Guang-Ping LI, Mao SHU, Zhi-Hua LIN. Discovery of Benzimidazole Derivatives as Novel Aldosterone Synthase Inhibitors: QSAR, Docking Studies, and Molecular Dynamics Simulation[J]. Chinese Journal of Structural Chemistry, ;2022, 41(3): 220319. doi: 10.14102/j.cnki.0254-5861.2011-3321
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(The leverage threshold h* = 0.146/0.366 and standardized residual σ = ±2 or 3)