Identifying circRNA-disease association based on relational graph attention network and hypergraph attention network

IF 2.6 4区 生物学 Q2 BIOCHEMICAL RESEARCH METHODS
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引用次数: 0

Abstract

In recent years, with the in-depth study of circRNA, scholars have begun to discover a synergistic relationship between circRNA and microorganisms. Traditional wet lab experiments in biology require expensive financial, material, and human resources to investigate the relationship between circRNA and diseases. Therefore, we propose a new predictive model for inferring the association between circRNA and diseases, called HAGACDA. Specifically, we first aggregate the unique features of circRNA and diseases themselves through singular value decomposition, Pearson similarity, and the biological information characteristics of circRNA and diseases. Utilizing the competitive relationships between miRNA and other microorganisms, we construct a circRNA-miRNA-disease multi-source heterogeneous network. Subsequently, we use a relational graph attention network to aggregate features based on the structural connections between different nodes. To address the inherent limitations in capturing high-order patterns in edge sets, we integrate a hypergraph attention network to extract features of circRNA and diseases. Finally, association prediction scores for node pairs are obtained through a multilayer perceptron. We conducted a comprehensive analysis of the model, including comparative experiments and case studies. Experimental results demonstrate that our model accurately predicts the association between circRNA and diseases.

Abstract Image

基于关系图注意力网络和超图注意力网络识别 circRNA 与疾病的关联性
近年来,随着对 circRNA 的深入研究,学者们开始发现 circRNA 与微生物之间的协同作用关系。传统的生物学湿法实验需要耗费大量的财力、物力和人力来研究 circRNA 与疾病的关系。因此,我们提出了一种用于推断 circRNA 与疾病关系的新预测模型,称为 HAGACDA。具体来说,我们首先通过奇异值分解、皮尔逊相似性以及 circRNA 和疾病的生物信息特征,聚合 circRNA 和疾病本身的独特特征。利用 miRNA 与其他微生物之间的竞争关系,我们构建了一个 circRNA-miRNA-Disease 多源异构网络。随后,我们利用关系图关注网络,根据不同节点之间的结构连接来聚合特征。为了解决捕捉边缘集高阶模式的固有局限性,我们整合了超图注意力网络来提取 circRNA 和疾病的特征。最后,通过多层感知器获得节点对的关联预测得分。我们对该模型进行了全面分析,包括对比实验和案例研究。实验结果表明,我们的模型能准确预测 circRNA 与疾病之间的关联。
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来源期刊
Analytical biochemistry
Analytical biochemistry 生物-分析化学
CiteScore
5.70
自引率
0.00%
发文量
283
审稿时长
44 days
期刊介绍: The journal''s title Analytical Biochemistry: Methods in the Biological Sciences declares its broad scope: methods for the basic biological sciences that include biochemistry, molecular genetics, cell biology, proteomics, immunology, bioinformatics and wherever the frontiers of research take the field. The emphasis is on methods from the strictly analytical to the more preparative that would include novel approaches to protein purification as well as improvements in cell and organ culture. The actual techniques are equally inclusive ranging from aptamers to zymology. The journal has been particularly active in: -Analytical techniques for biological molecules- Aptamer selection and utilization- Biosensors- Chromatography- Cloning, sequencing and mutagenesis- Electrochemical methods- Electrophoresis- Enzyme characterization methods- Immunological approaches- Mass spectrometry of proteins and nucleic acids- Metabolomics- Nano level techniques- Optical spectroscopy in all its forms. The journal is reluctant to include most drug and strictly clinical studies as there are more suitable publication platforms for these types of papers.
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