通过多通道图卷积网络预测mirna与疾病的关联

Haoran Zheng, Qiu Xiao, Jiancheng Zhong
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摘要

大量的研究证据表明,microrna (mirna)的变异和失调是疾病的重要原因,因此mirna -疾病关联的研究在人类疾病研究和治疗领域具有重要的理论和应用意义。基于传统医学临床实验中验证mirna -疾病关联的时间和成本,利用多个生物学数据集预测潜在的mirna -疾病关联(mda)已成为近年来生物学研究领域的热点。本文提出了一种基于多通道图卷积网络和图注意的MDA-RGCN预测模型。本研究基于图论,将mda预测作为一个节点分类任务。为了学习不同强度的特征图节点之间的拓扑和各种相互作用,我们采用了两个独立的图关注网络,提高了训练效率和准确性。为了学习两个图共享的信息,我们同时使用了一个具有共享权矩阵的GCN。综合实验表明,MDA-RGCN的预测性能优于其他更复杂的mda预测模型。此外,我们通过选择两种人类疾病进行案例研究,进一步证实了MDA-RGCN在识别潜在疾病相关mirna方面的预测能力。
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Predicting miRNA-disease associations via multi-channel graph convolutional networks
Extensive research evidence shows that variation and dysregulation of microRNAs(miRNAs) are important causes of disease, and therefore the study of miRNA-disease associations has important theoretical and applied implications in the field of human disease research and treatment. Based on the time and cost of validating miRNA-disease associations in traditional medicine clinical experiments, using multiple biological datasets to predict potential miRNA-disease associations (MDAs) has become a hot topic in the field of biological research in recent years. This paper develops a novel model of MDA-RGCN based on a multi-channel graph convolutional network and graph attention for MDAs prediction. Based on graph theory, this study treats MDAs prediction as a node classification task. To learn the topology and various interactions between feature graph nodes of various strengths, we employ two independent graph attention networks, which increases training efficiency and accuracy. In order to learn information that is shared by both graphs, we employ a GCN with a shared weight matrix simultaneously. Comprehensive experiments reveal that the prediction performance of MDA-RGCN excels other more sophisticated models for MDAs prediction. Furthermore, we further confirmed the predictive ability of MDA-RGCN to identify potential disease-related miRNAs by selecting two human diseases for case study.
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