Conghao WangHiok Hian OngShunsuke ChibaJagath C. Rajapakse
De novo generation of molecules is a crucial task in drug discovery. The blossom of deep learning-based generative models, especially diffusion models, has brought forth promising advancements in de novo drug design by finding optimal molecules in a directed manner. However, due to the complexity of chemical space, existing approaches can only generate extremely small molecules. In this study, we propose a Graph Latent Diffusion Model (GLDM) that operates a diffusion model in the latent space modeled by a pretrained autoencoder. Applying diffusion processs on latent representations rather than original molecular graphs, GLDM improves training efficiency and enables generation of larger drug-like molecules. GLDM achieves state-of-the-art results on GuacaMol benchmarks.
Conghao WangHiok Hian OngShunsuke ChibaJagath C. Rajapakse
Conghao WangHiok Hian OngShunsuke ChibaJagath C. Rajapakse
Tian BianYifan NiuHeng ChangDivin YanJunzhou HuangYu RongTingyang XuJia LiHong Cheng
Qunhao ZhangJun XiaoDongjiang NiuZhixin ZhangS. DingZhen Li