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Fine-tuning of a generative neural network for designing multi-target compounds.

Thomas BlaschkeJürgen Bajorath
Published in: Journal of computer-aided molecular design (2021)
Exploring the origin of multi-target activity of small molecules and designing new multi-target compounds are highly topical issues in pharmaceutical research. We have investigated the ability of a generative neural network to create multi-target compounds. Data sets of experimentally confirmed multi-target, single-target, and consistently inactive compounds were extracted from public screening data considering positive and negative assay results. These data sets were used to fine-tune the REINVENT generative model via transfer learning to systematically recognize multi-target compounds, distinguish them from single-target or inactive compounds, and construct new multi-target compounds. During fine-tuning, the model showed a clear tendency to increasingly generate multi-target compounds and structural analogs. Our findings indicate that generative models can be adopted for de novo multi-target compound design.
Keyphrases
  • neural network
  • healthcare
  • air pollution
  • mental health
  • big data
  • machine learning
  • molecular docking
  • artificial intelligence
  • single molecule