PIDiff: Physics informed diffusion model for protein pocket-specific 3D molecular generation.

Comput Biol Med

Department of Computer Science, Yonsei University, Seoul, 03722, Republic of Korea. Electronic address:

Published: September 2024

AI Article Synopsis

  • Designing drugs that can effectively bind to target proteins is crucial for treating diseases, and advancements in geometric deep learning have improved how ligands are generated in 3D.
  • Many existing methods mainly focus on the geometric modeling of ligands, ignoring the fundamental physicochemical principles that drive protein-ligand interactions.
  • The proposed model, PIDiff, incorporates these principles to optimize ligand binding by minimizing binding free energy, showing superior performance in assessments compared to traditional methods and existing models.

Article Abstract

Designing drugs capable of binding to the structure of target proteins for treating diseases is essential in drug development. Recent remarkable advancements in geometric deep learning have led to unprecedented progress in three-dimensional (3D) generation of ligands that can bind to the protein pocket. However, most existing methods primarily focus on modeling the geometric information of ligands in 3D space. Consequently, these methods fail to consider that the binding of proteins and ligands is a phenomenon driven by intrinsic physicochemical principles. Motivated by this understanding, we propose PIDiff, a model for generating molecules by accounting in the physicochemical principles of protein-ligand binding. Our model learns not only the structural information of proteins and ligands but also to minimize the binding free energy between them. To evaluate the proposed model, we introduce an experimental framework that surpasses traditional assessment methods by encompassing various essential aspects for the practical application of generative models to actual drug development. The results confirm that our model outperforms baseline models on the CrossDocked2020 benchmark dataset, demonstrating its superiority. Through diverse experiments, we have illustrated the promising potential of the proposed model in practical drug development.

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Source
http://dx.doi.org/10.1016/j.compbiomed.2024.108865DOI Listing

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