Peng Li, Yang Cheng, Yang Jiahuai, Tu Yuan, Yu Qingchun, Li Zejun, Chen Min, Liang Wei
IEEE J Biomed Health Inform. 2025 Mar;29(3):1668-1679. doi: 10.1109/JBHI.2024.3434439. Epub 2025 Mar 6.
Exploring simple and efficient computational methods for drug repositioning has emerged as a popular and compelling topic in the realm of comprehensive drug development. The crux of this technology lies in identifying potential drug-disease associations, which can effectively mitigate the burdens caused by the exorbitant costs and lengthy periods of conventional drugs development. However, existing computational drug repositioning methods continue to encounter challenges in accurately predicting associations between drugs and diseases. In this paper, we propose a Multi-view Representation Learning method (MRLHGNN) with Heterogeneous Graph Neural Network for drug repositioning. This method is based on a collection of data from multiple biological entities associated with drugs or diseases. It consists of a view-specific feature aggregation module with meta-paths and auto multi-view fusion encoder. To better utilize local structural and semantic information from specific views in heterogeneous graph, MRLHGNN employs a feature aggregation model with variable-length meta-paths to expand the local receptive field. Additionally, it utilizes a transformer based semantic aggregation module to aggregate semantic features across different view-specific graphs. Finally, potential drug-disease associations are obtained through a multi-view fusion decoder with an attention mechanism. Cross-validation experiments demonstrate the effectiveness and interpretability of the MRLHGNN in comparison to nine state-of-the-art approaches. Case studies further reveal that MRLHGNN can serve as a powerful tool for drug repositioning.
探索用于药物重新定位的简单高效计算方法,已成为全面药物开发领域中一个热门且引人注目的话题。这项技术的关键在于识别潜在的药物 - 疾病关联,这可以有效减轻传统药物开发成本过高和周期过长所带来的负担。然而,现有的计算药物重新定位方法在准确预测药物与疾病之间的关联方面仍面临挑战。在本文中,我们提出了一种用于药物重新定位的基于异构图神经网络的多视图表示学习方法(MRLHGNN)。该方法基于与药物或疾病相关的多个生物实体的数据集合。它由一个带有元路径的视图特定特征聚合模块和自动多视图融合编码器组成。为了更好地利用异构图中特定视图的局部结构和语义信息,MRLHGNN采用了一个具有可变长度元路径的特征聚合模型来扩展局部感受野。此外,它利用基于Transformer的语义聚合模块来聚合不同视图特定图的语义特征。最后,通过带有注意力机制的多视图融合解码器获得潜在的药物 - 疾病关联。交叉验证实验表明,与九种先进方法相比,MRLHGNN具有有效性和可解释性。案例研究进一步表明,MRLHGNN可以作为药物重新定位的有力工具。