Shen Cong, Ding Pingjian, Wee Junjie, Bi Jialin, Luo Jiawei, Xia Kelin
College of Computer Science and Electronic Engineering, Hunan University, Changsha, 410000, China.
School of Physical and Mathematical Sciences, Nanyang Technological University, 637371, Singapore.
Comput Struct Biotechnol J. 2024 Feb 15;23:1016-1025. doi: 10.1016/j.csbj.2024.02.006. eCollection 2024 Dec.
Geometric deep learning has demonstrated a great potential in non-Euclidean data analysis. The incorporation of geometric insights into learning architecture is vital to its success. Here we propose a curvature-enhanced graph convolutional network (CGCN) for biomolecular interaction prediction. Our CGCN employs Ollivier-Ricci curvature (ORC) to characterize network local geometric properties and enhance the learning capability of GCNs. More specifically, ORCs are evaluated based on the local topology from node neighborhoods, and further incorporated into the weight function for the feature aggregation in message-passing procedure. Our CGCN model is extensively validated on fourteen real-world bimolecular interaction networks and analyzed in details using a series of well-designed simulated data. It has been found that our CGCN can achieve the state-of-the-art results. It outperforms all existing models, as far as we know, in thirteen out of the fourteen real-world datasets and ranks as the second in the rest one. The results from the simulated data show that our CGCN model is superior to the traditional GCN models regardless of the positive-to-negative-curvature ratios, network densities, and network sizes (when larger than 500).
几何深度学习在非欧几里得数据分析中已展现出巨大潜力。将几何见解融入学习架构对其成功至关重要。在此,我们提出一种用于生物分子相互作用预测的曲率增强图卷积网络(CGCN)。我们的CGCN采用奥利维耶 - 里奇曲率(ORC)来表征网络局部几何特性,并增强图卷积网络(GCN)的学习能力。更具体地说,基于节点邻域的局部拓扑来评估ORC,并将其进一步纳入消息传递过程中特征聚合的权重函数。我们的CGCN模型在14个真实世界的双分子相互作用网络上进行了广泛验证,并使用一系列精心设计的模拟数据进行了详细分析。研究发现,我们的CGCN能够取得最优结果。据我们所知,在14个真实世界数据集中的13个数据集上,它优于所有现有模型,在其余一个数据集中排名第二。模拟数据的结果表明,无论正负曲率比、网络密度和网络大小(当大于500时)如何,我们的CGCN模型都优于传统的GCN模型。