深度学习
化学空间
计算生物学
生成语法
生成对抗网络
弦(物理)
生成模型
交互信息
图形
药物发现
计算机科学
生物
人工智能
理论计算机科学
生物信息学
物理
统计
数学
量子力学
作者
Tao Song,Yongqi Ren,Shuang Wang,Peifu Han,Lulu Wang,Xue Li,Alfonso Rodriguez-Patón
出处
期刊:Methods
[Elsevier]
日期:2023-03-01
卷期号:211: 10-22
被引量:1
标识
DOI:10.1016/j.ymeth.2023.02.001
摘要
Deep learning is improving and changing the process of de novo molecular design at a rapid pace. In recent years, great progress has been made in drug discovery and development by using deep generative models for de novo molecular design. However, most of the existing methods are string-based or graph-based and are limited by the lack of some very important properties, such as the three-dimensional information of molecules. We propose DNMG, a deep generative adversarial network (GAN) combined with transfer learning. Specifically, we use a Wasserstein-variant GAN based network architecture that considers the 3D grid spatial information of the ligand with atomic physicochemical properties to generate a representation of the molecule, which is then parsed into SMILES strings using an improved captioning network. Comprehensive in experiments demonstrate the ability of DNMG to generate valid and novel drug-like ligands. The DNMG model is used to design inhibitors for three targets, MK14, FNTA, and CDK2. The computational results show that the molecules generated by DNMG have better binding ability to the target proteins and better physicochemical properties. Overall, our deep generative model has excellent potential to generate molecules with high binding affinity for targets and explore the space of drug-like chemistry.
科研通智能强力驱动
Strongly Powered by AbleSci AI