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Auxiliary Discrminator Sequence Generative Adversarial Networks for Few Sample Molecule Generation.

Haocheng Tang1, Jing Long2, Beihong Ji1

  • 1School of Pharmacy, University of Pittsburgh, Pittsburgh, Pennsylvania 15261, United States.

Journal of Chemical Information and Modeling
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Auxiliary Discriminator Sequence Generative Adversarial Networks (ADSeqGAN) enhance molecular generation for small datasets. This novel approach improves drug discovery by generating specific molecules, even with limited data.

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Area of Science:

  • Computational chemistry
  • Drug discovery
  • Machine learning for chemistry

Background:

  • Generative models struggle with small datasets common in drug discovery.
  • Scarcity of data for specific targets like CNS drugs and nucleic acid binders hinders development.

Purpose of the Study:

  • Introduce Auxiliary Discriminator Sequence Generative Adversarial Networks (ADSeqGAN) for molecular generation.
  • Improve quality and class specificity of generated molecules in data-scarce scenarios.

Main Methods:

  • Integrated an auxiliary random forest classifier into a GAN framework.
  • Utilized a pretrained generator and Wasserstein distance for stability and diversity.
  • Evaluated ADSeqGAN on nucleic acid binders, CNS drugs, and CB1 ligands.

Main Results:

  • ADSeqGAN demonstrated superior generation of nucleic acid binders compared to baseline models.
  • Oversampling with ADSeqGAN improved CNS drug generation yields.
  • Generated novel, druglike CB1 ligands with a high predicted active rate (32.8%).

Conclusions:

  • ADSeqGAN is a versatile framework for molecular design in data-limited settings.
  • The method shows significant promise for developing targeted therapeutics, including CNS drugs and specific ligand classes.