药效团
SIRT2
数量结构-活动关系
天然产物
化学空间
虚拟筛选
计算生物学
组蛋白脱乙酰基酶
化学
李宾斯基五定律
乙酰化
组合化学
计算机科学
立体化学
药物发现
锡尔图因
生物
组蛋白
生物化学
生物信息学
基因
作者
Mohammad A. Khanfar,Saja Alqtaishat
标识
DOI:10.2174/1871520621666210112121523
摘要
SIRT2 belongs to a class III of Histone Deacetylase (HDAC) and has crucial roles in neurodegeneration and malignancy.The objective of this study is to discover structurally novel natural-product-derived SIRT2 inhibitors.Structure-based pharmacophore modeling integrated with validated QSAR analysis was implemented to discover structurally novel SIRT2 inhibitors from the natural products database. The targeted QSAR model combined molecular descriptors with structure-based pharmacophore capable of explaining bioactivity variation of structurally diverse SIRT2 inhibitors. Manually built pharmacophore model, validated with receiver operating characteristic curve, and selected using the statistically optimum QSAR equation, was applied as a 3Dsearch query to mine AnalytiCon Discovery database of natural products.Experimental in vitro testing of highest-ranked hits identified asperphenamate and salvianolic acid B as active SIRT2 inhibitors with IC50 values in low micromolar range.New chemical scaffolds of SIRT2 inhibitors have been identified that could serve as a starting point for lead-structure optimization.
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