核心概念
Combining 3D molecular generation with optimization frameworks for improved drug design.
摘要
Structure-based drug design aims to generate high-affinity ligands using 3D target structures. MolEdit3D proposes a novel 3D graph editing model to generate molecules, pre-trained on abundant 3D ligands. The model combines target-independent properties with target-guided self-learning to enhance target-related properties. MolEdit3D achieves state-of-the-art performance in various evaluation metrics, demonstrating its effectiveness in capturing both target-dependent and -independent properties.
统计
MolEdit3D achieves SOTA performance on Validity, Success Rate, High Affinity, and median Vina score.
MolEdit3D generates molecules with higher binding affinities compared to the best prior method (Vina score: -10.16 versus -9.77).
MolEdit3D improves success rate by an absolute of 13.8% from the previous best.
引用
"Existing optimization-based approaches choose to edit molecules in 2D space, hindering performance."
"MolEdit3D combines 3D molecular generation with optimization frameworks for improved results."
"MolEdit3D demonstrates strong capability in capturing both target-dependent and -independent properties."