4.8 Article

Deep generative design with 3D pharmacophoric constraints

期刊

CHEMICAL SCIENCE
卷 12, 期 43, 页码 14577-14589

出版社

ROYAL SOC CHEMISTRY
DOI: 10.1039/d1sc02436a

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资金

  1. Engineering and Physical Sciences Research Council (EPSRC) [EP/N509711/1]
  2. EPSRC
  3. LifeArc
  4. F. Hoffmann-La Roche AG
  5. UCB Pharma [EP/L016044/1]

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This study presents a method that improves the performance of generative models by incorporating 3D structural information, allowing for greater control over the design process in molecular design. The method performs well in linker and R-group design, effectively generating molecules with high 3D similarity.
Generative models have increasingly been proposed as a solution to the molecular design problem. However, it has proved challenging to control the design process or incorporate prior knowledge, limiting their practical use in drug discovery. In particular, generative methods have made limited use of three-dimensional (3D) structural information even though this is critical to binding. This work describes a method to incorporate such information and demonstrates the benefit of doing so. We combine an existing graph-based deep generative model, DeLinker, with a convolutional neural network to utilise physically-meaningful 3D representations of molecules and target pharmacophores. We apply our model, DEVELOP, to both linker and R-group design, demonstrating its suitability for both hit-to-lead and lead optimisation. The 3D pharmacophoric information results in improved generation and allows greater control of the design process. In multiple large-scale evaluations, we show that including 3D pharmacophoric constraints results in substantial improvements in the quality of generated molecules. On a challenging test set derived from PDBbind, our model improves the proportion of generated molecules with high 3D similarity to the original molecule by over 300%. In addition, DEVELOP recovers 10x more of the original molecules compared to the baseline DeLinker method. Our approach is general-purpose, readily modifiable to alternate 3D representations, and can be incorporated into other generative frameworks. Code is available at https://github.com/oxpig/DEVELOP.

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