Login / Signup

Molecular Generative Model via Retrosynthetically Prepared Chemical Building Block Assembly.

Seonghwan SeoJaechang LimWoo Youn Kim
Published in: Advanced science (Weinheim, Baden-Wurttemberg, Germany) (2023)
Deep generative models are attracting attention as a smart molecular design strategy. However, previous models often render molecules with low synthesizability, hindering their real-world applications. Here, a novel graph-based conditional generative model which makes molecules by tailoring retrosynthetically prepared chemical building blocks until achieving target properties in an auto-regressive fashion is proposed. This strategy improves the synthesizability and property control of the resulting molecules and also helps learn how to select appropriate building blocks and bind them together to achieve target properties. By applying a negative sampling method to the selection process of building blocks, this model overcame a critical limitation of previous fragment-based models, which can only use molecules from the training set during generation. As a result, the model works equally well with unseen building blocks without sacrificing computational efficiency. It is demonstrated that the model can generate potential inhibitors with high docking scores against the 3CL protease of SARS-COV-2.
Keyphrases
  • sars cov
  • risk assessment
  • machine learning
  • single molecule
  • protein protein
  • convolutional neural network
  • respiratory syndrome coronavirus
  • virtual reality