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A pharmacophore-guided deep learning approach for bioactive molecular generation

Author

Listed:
  • Huimin Zhu

    (Central South University)

  • Renyi Zhou

    (Central South University)

  • Dongsheng Cao

    (Central South University)

  • Jing Tang

    (University of Helsinki
    University of Helsinki)

  • Min Li

    (Central South University)

Abstract

The rational design of novel molecules with the desired bioactivity is a critical but challenging task in drug discovery, especially when treating a novel target family or understudied targets. We propose a Pharmacophore-Guided deep learning approach for bioactive Molecule Generation (PGMG). Through the guidance of pharmacophore, PGMG provides a flexible strategy for generating bioactive molecules. PGMG uses a graph neural network to encode spatially distributed chemical features and a transformer decoder to generate molecules. A latent variable is introduced to solve the many-to-many mapping between pharmacophores and molecules to improve the diversity of the generated molecules. Compared to existing methods, PGMG generates molecules with strong docking affinities and high scores of validity, uniqueness, and novelty. In the case studies, we use PGMG in a ligand-based and structure-based drug de novo design. Overall, the flexibility and effectiveness make PGMG a useful tool to accelerate the drug discovery process.

Suggested Citation

  • Huimin Zhu & Renyi Zhou & Dongsheng Cao & Jing Tang & Min Li, 2023. "A pharmacophore-guided deep learning approach for bioactive molecular generation," Nature Communications, Nature, vol. 14(1), pages 1-11, December.
  • Handle: RePEc:nat:natcom:v:14:y:2023:i:1:d:10.1038_s41467-023-41454-9
    DOI: 10.1038/s41467-023-41454-9
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    References listed on IDEAS

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    1. Oscar Méndez-Lucio & Benoit Baillif & Djork-Arné Clevert & David Rouquié & Joerg Wichard, 2020. "De novo generation of hit-like molecules from gene expression signatures using artificial intelligence," Nature Communications, Nature, vol. 11(1), pages 1-10, December.
    2. Omar Mahmood & Elman Mansimov & Richard Bonneau & Kyunghyun Cho, 2021. "Masked graph modeling for molecule generation," Nature Communications, Nature, vol. 12(1), pages 1-12, December.
    3. Zhao Ma & Jin Li & Kai Lin & Mythili Ramachandran & Dalin Zhang & Megan Showalter & Cristabelle Souza & Aaron Lindstrom & Lucas N. Solano & Bei Jia & Shiro Urayama & Yuyou Duan & Oliver Fiehn & Tzu-yi, 2020. "Pharmacophore hybridisation and nanoscale assembly to discover self-delivering lysosomotropic new-chemical entities for cancer therapy," Nature Communications, Nature, vol. 11(1), pages 1-12, December.
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