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Accelerated Discovery of Macrocyclic CDK2 Inhibitor QR-6401 by Generative Models and Structure-Based Drug Design.

Yang YuJunhong HuangHu HeJing HanGeyan YeTingyang XuXianqiang SunXiumei ChenXiaoming RenChunlai LiHuijuan LiWei HuangYangyang LiuXinjuan WangYongzhi GaoNianhe ChengNa GuoXibo ChenJianxia FengYuxia HuaChong LiuGuoyun ZhuZhi XieLili YaoWenge ZhongXinde ChenWei LiuHailong Li
Published in: ACS medicinal chemistry letters (2023)
Selective CDK2 inhibitors have the potential to provide effective therapeutics for CDK2-dependent cancers and for combating drug resistance due to high cyclin E1 (CCNE1) expression intrinsically or CCNE1 amplification induced by treatment of CDK4/6 inhibitors. Generative models that take advantage of deep learning are being increasingly integrated into early drug discovery for hit identification and lead optimization. Here we report the discovery of a highly potent and selective macrocyclic CDK2 inhibitor QR-6401 ( 23 ) accelerated by the application of generative models and structure-based drug design (SBDD). QR-6401 ( 23 ) demonstrated robust antitumor efficacy in an OVCAR3 ovarian cancer xenograft model via oral administration.
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