计算机科学
欧几里德几何
人工智能
特征(语言学)
图形
水准点(测量)
人工神经网络
模式识别(心理学)
特征学习
理论计算机科学
领域(数学)
欧几里得空间
双曲空间
特征向量
几何网络
欧几里德距离
双曲几何
特征提取
深度学习
钥匙(锁)
知识图
机器学习
空格(标点符号)
图论
合成数据
空间分析
数学
算法
作者
Haotian Guan,Tian Bai,Chuande Yang,Tao Zhang,Han Wang,Guishen Wang
标识
DOI:10.1021/acs.jcim.5c02826
摘要
Accurately predicting drug-target interactions (DTIs) is crucial for drug discovery, repositioning. However, most deep learning-based DTI models are designed in Euclidean space, making it difficult to effectively represent the hierarchical and scale-free characteristics of biological data. Due to its unique negatively curved geometric properties, hyperbolic space can more effectively represent hierarchical relationships within data. Therefore, we propose a multimanifold learning framework that integrates multimodal features in hyperbolic and Euclidean spaces for drug-target interaction prediction. Specifically, we employ a Hyperbolic Graph Neural Network (HGNN) to extract features from molecular graphs of small-molecular drugs, thereby effectively capturing the hierarchical structural information within these graphs. To integrate heterogeneous information, a Multi-Manifold Feature Fusion Module combines structural features from the HGNN, chemical fingerprints, and semantic embeddings derived from pretrained language models. Extensive experiments on benchmark data sets demonstrate that our framework achieves superior performance compared with state-of-the-art Euclidean-based methods. The experimental results demonstrate that hyperbolic geometry offers significant advantages in extracting hierarchical features from non-Euclidean data and also highlight the promising potential of multimanifold feature fusion in the field of drug-target interaction prediction.
科研通智能强力驱动
Strongly Powered by AbleSci AI