Department of Computer Science, School of Computing, Tokyo Institute of Technology, Kanagawa 226-8501, Japan.
Molecules. 2023 Jul 26;28(15):5652. doi: 10.3390/molecules28155652.
Protein-protein interactions (PPIs) are associated with various diseases; hence, they are important targets in drug discovery. However, the physicochemical empirical properties of PPI-targeted drugs are distinct from those of conventional small molecule oral pharmaceuticals, which adhere to the "rule of five (RO5)". Therefore, developing PPI-targeted drugs using conventional methods, such as molecular generation models, is challenging. In this study, we propose a molecular generation model based on deep reinforcement learning that is specialized for the production of PPI inhibitors. By introducing a scoring function that can represent the properties of PPI inhibitors, we successfully generated potential PPI inhibitor compounds. These newly constructed virtual compounds possess the desired properties for PPI inhibitors, and they show similarity to commercially available PPI libraries. The virtual compounds are freely available as a virtual library.
蛋白质-蛋白质相互作用(PPIs)与各种疾病相关,因此它们是药物发现中的重要靶点。然而,与遵循“五规则(RO5)”的传统小分子口服药物相比,PPI 靶向药物的物理化学经验性质明显不同。因此,使用传统方法(例如分子生成模型)开发 PPI 靶向药物具有挑战性。在这项研究中,我们提出了一种基于深度强化学习的分子生成模型,专门用于生成 PPI 抑制剂。通过引入可以表示 PPI 抑制剂性质的评分函数,我们成功地生成了潜在的 PPI 抑制剂化合物。这些新构建的虚拟化合物具有 PPI 抑制剂所需的性质,并且与市售的 PPI 文库具有相似性。虚拟化合物作为虚拟库免费提供。