Compositional Flows for 3D Molecule and Synthesis Pathway Co-design
Compositional Flows for 3D Molecule and Synthesis Pathway Co-design
Many generative applications, such as synthesis-based 3D molecular design, involve constructing compositional objects with continuous features. Here, we introduce Compositional Generative Flows (CGFlow), a novel framework that extends flow matching to generate objects in compositional steps while modeling continuous states. Our key insight is that modeling compositional state transitions can be formulated as a straightforward extension of the flow matching interpolation process. We further build upon the theoretical foundations of generative flow networks (GFlowNets), enabling reward-guided sampling of compositional structures. We apply CGFlow to synthesizable drug design by jointly designing the molecule's synthetic pathway with its 3D binding pose. Our approach achieves state-of-the-art binding affinity on all 15 targets from the LIT-PCBA benchmark, and 5.8$\times$ improvement in sampling efficiency compared to 2D synthesis-based baseline. To our best knowledge, our method is also the first to achieve state of-art-performance in both Vina Dock (-9.38) and AiZynth success rate (62.2\%) on the CrossDocked benchmark.
Tony Shen、Seonghwan Seo、Ross Irwin、Kieran Didi、Simon Olsson、Woo Youn Kim、Martin Ester
药学生物工程学生物科学研究方法、生物科学研究技术
Tony Shen,Seonghwan Seo,Ross Irwin,Kieran Didi,Simon Olsson,Woo Youn Kim,Martin Ester.Compositional Flows for 3D Molecule and Synthesis Pathway Co-design[EB/OL].(2025-04-10)[2025-04-27].https://arxiv.org/abs/2504.08051.点此复制
评论