Navigating the frontier of drug-like chemical space with cutting-edge generative AI models.
摘要:
Deep generative models (GMs) have transformed the exploration of drug-like chemical space (CS) by generating novel molecules through complex, nontransparent processes, bypassing direct structural similarity. This review examines five key architectures for CS exploration: recurrent neural networks (RNNs), variational autoencoders (VAEs), generative adversarial networks (GANs), normalizing flows (NF), and Transformers. It discusses molecular representation choices, training strategies for focused CS exploration, evaluation criteria for CS coverage, and related challenges. Future directions include refining models, exploring new notations, improving benchmarks, and enhancing interpretability to better understand biologically relevant molecular properties.
收起
展开
DOI:
10.1016/j.drudis.2024.104133
被引量:
年份:
1970


通过 文献互助 平台发起求助,成功后即可免费获取论文全文。
求助方法1:
知识发现用户
每天可免费求助50篇
求助方法1:
关注微信公众号
每天可免费求助2篇
求助方法2:
完成求助需要支付5财富值
您目前有 1000 财富值
相似文献(114)
参考文献(0)
引证文献(1)
来源期刊
影响因子:暂无数据
JCR分区: 暂无
中科院分区:暂无