International Journal of Molecular Sciences (Jun 2024)

AC-ModNet: Molecular Reverse Design Network Based on Attribute Classification

  • Wei Wei,
  • Jun Fang,
  • Ning Yang,
  • Qi Li,
  • Lin Hu,
  • Lanbo Zhao,
  • Jie Han

DOI
https://doi.org/10.3390/ijms25136940
Journal volume & issue
Vol. 25, no. 13
p. 6940

Abstract

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Deep generative models are becoming a tool of choice for exploring the molecular space. One important application area of deep generative models is the reverse design of drug compounds for given attributes (solubility, ease of synthesis, etc.). Although there are many generative models, these models cannot generate specific intervals of attributes. This paper proposes a AC-ModNet model that effectively combines VAE with AC-GAN to generate molecular structures in specific attribute intervals. The AC-ModNet is trained and evaluated using the open 250K ZINC dataset. In comparison with related models, our method performs best in the FCD and Frag model evaluation indicators. Moreover, we prove the AC-ModNet created molecules have potential application value in drug design by comparing and analyzing them with medical records in the PubChem database. The results of this paper will provide a new method for machine learning drug reverse design.

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