MiDi:用于分子生成的混合图和三维去噪扩散

Clément Vignac, Nagham Osman, L. Toni, P. Frossard
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引用次数: 9

摘要

本文介绍了一种新的扩散模型MiDi,用于共同生成分子图及其相应的原子三维排列。现有的方法依赖于基于3D构象的预定义规则来确定分子键,MiDi提供了一种端到端可微分的方法,简化了分子生成过程。实验结果证明了该方法的有效性。在具有挑战性的geomo - drugs数据集上,MiDi生成了92%的稳定分子,而之前使用原子间距离进行键预测的EDM模型生成了6%的稳定分子,使用EDM后直接优化键顺序的算法生成了40%的稳定分子。我们的代码可在github.com/cvignac/MiDi上获得。
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MiDi: Mixed Graph and 3D Denoising Diffusion for Molecule Generation
This work introduces MiDi, a novel diffusion model for jointly generating molecular graphs and their corresponding 3D arrangement of atoms. Unlike existing methods that rely on predefined rules to determine molecular bonds based on the 3D conformation, MiDi offers an end-to-end differentiable approach that streamlines the molecule generation process. Our experimental results demonstrate the effectiveness of this approach. On the challenging GEOM-DRUGS dataset, MiDi generates 92% of stable molecules, against 6% for the previous EDM model that uses interatomic distances for bond prediction, and 40% using EDM followed by an algorithm that directly optimize bond orders for validity. Our code is available at github.com/cvignac/MiDi.
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