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Pocket-Based Generative Diffusion Model Accelerates Potent Influenza A Hemagglutinin Inhibitor Discovery

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Figshare2026-02-13 更新2026-04-28 收录
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https://figshare.com/articles/dataset/Pocket-Based_Generative_Diffusion_Model_Accelerates_Potent_Influenza_A_Hemagglutinin_Inhibitor_Discovery/31333114
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The deep generative model has recently advanced 3D chemical space exploration but overlooked the balance between target affinity and structural rationality, limiting their effectiveness in drug discovery. Herein, we established a novel dual conditional diffusion model (DCDM) that leveraged ligand-protein interaction features to refine 3D target-based molecular generation. DCDM exhibited superiority in enhancing predicted binding affinity while maintaining high structural rationality and diversity. Subsequently, we applied DCDM to optimize penindolone (PND), a marine-derived lead compound from our laboratory, targeting influenza A hemagglutinin (HA). Efficiently, a promising candidate (compound C2e) was successfully obtained from eight synthesized derivatives inspired by the DCDM-generated molecules, with a 26-fold higher affinity for HA. Notably, C2e exhibited a 10-fold decrease in IC50 compared with the parent compound PND. Further in vivo assessments demonstrated its potent antiviral activity and safety. All results indicate that DCDM is a valuable generative model, capable of accelerating drug development in real-world applications.
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2026-02-13
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