Drug targets are the main focus of drug discovery due to their key role in disease pathogenesis. Computational approaches are widely applied to drug development because of the increasing availability of biological molecular datasets. Popular generative approaches can create new drug molecules by learning the given molecule distributions. However, these approaches are mostly not for target-specific drug discovery. We developed an energy-based probabilistic model for computational target-specific drug discovery. Results show that our proposed TagMol can generate molecules with similar binding affinity scores as real molecules. GAT-based models showed faster and better learning relative to GCN baseline models.
翻译:药物目标由于其在疾病发病中的关键作用而成为药物发现的主要焦点。由于生物分子数据集的日益普及,对药物发展广泛采用了计算方法。普通的基因化方法可以通过学习特定分子分布产生新的药物分子。然而,这些方法大多不是针对特定药物的发现。我们开发了一种基于能源的计算目标特定药物发现概率模型。结果显示,我们提议的TagMol可以产生与真实分子相似的捆绑性近亲分数的分子。基于GAT模型显示,相对于GCN基线模型,GAT模型的学习速度更快,学习效果也更好。