化学
药物发现
虚拟筛选
天然产物
下调和上调
计算生物学
化学信息学
基因
生物化学
生物
计算化学
作者
Zhihong Liu,Dane Huang,Shuangjia Zheng,Ying Song,Bingdong Liu,Jingyuan Sun,Zhangming Niu,Qiong Gu,Jun Xu,Liwei Xie
标识
DOI:10.1016/j.ejmech.2020.112982
摘要
A pre-trained self-attentive message passing neural network (P-SAMPNN) model was developed based on our anti-osteoclastogenesis dataset for virtual screening purpose. Validation processes proved that P-SAMPNN model was significantly superior to the other base line models. A commercially available natural product library was virtually screened by the P-SAMPNN model and resulted in confirmed 5 hits from 10 selected virtual hits. Among the confirmed hits, compounds AP-123/40765213 and AE-562/43462182 are the nanomolar inhibitors against osteoclastogenesis with a new scaffold. Further studies indicate that AP-123/40765213 and AE-562/43462182 significantly suppress the mRNA expression of RANK and downregulate the expressions of osteoclasts-related genes Ctsk, Nfatc1, and Tracp. Our work demonstrated that P-SAMPNN method can guide phenotype-based drug discovery.
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