分子生物学
IVD分子诊断
细胞培养与分析
蛋白研究
细胞因子
重组蛋白
抗体
高通量测序建库
病原检测UCF系列
生物医药
工具酶
抑制剂激活剂与常用试剂
仪器
耗材

Generative deep learning enables the discovery of a potent and selective RIPK1 inhibitor

Li Yueshan, Zhang Liting, Wang Yifei, Zou Jun, Yang Ruicheng, Luo Xinling, Wu Chengyong, Yang Wei, Tian Chenyu, Xu Haixing, Wang Falu, Yang Xin, Li Linli, Yang Shengyong

Journal:Nature Communications

IF:17.69

DOI:10.1038/s41467-022-34692-w

PMID:36371441

Published:2022-11-12

research field:分子生物学药理学深度学习药物发现

Abstract

The retrieval of hit/lead compounds with novel scaffolds during early drug development is an important but challenging task. Various generative models have been proposed to create drug-like molecules. However, the capacity of these generative models to design wet-lab-validated and target-specific molecules with novel scaffolds has hardly been verified. We herein propose a generative deep learning (GDL) model, a distribution-learning conditional recurrent neural network (cRNN), to generate tailor-made virtual compound libraries for given biological targets. The GDL model is then applied to RIPK1. Virtual screening against the generated tailor-made compound library and subsequent bioactivity evaluation lead to the discovery of a potent and selective RIPK1 inhibitor with a previously unreported scaffold, RI-962. This compound displays potent in vitro activity in protecting cells from necroptosis, and good in vivo efficacy in two inflammatory models. Collectively, the findings prove the capacity of our GDL model in generating hit/lead compounds with unreported scaffolds, highlighting a great potential of deep learning in drug discovery.

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