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Predicting Disease-related RNA Associations based on Graph Convolutional Attention Network

机译:基于图卷积注意力网络的疾病相关RNA关联预测

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Accumulating evidence has demonstrated that RNAs play an important role in identifying various complex human diseases. However, the number of known disease related RNAs is still small and many biological experiments are time-consuming and labor-intensive. Therefore, researchers have focused on developing useful computational algorithms to predict associations between diseases and RNAs. It is useful for people to identify complex human diseases at molecular level, especially in diseases diagnosis, therapy, prognosis and monitoring. In this paper, we propose a novel framework Graph Convolutional Attention Network(GCAN) to predict potential disease-RNAs associations. Facing thousands of associations, GCAN benefits from the efficiency of deep learning model. Compared to other disease-RNAs association prediction methods, GCAN operates the computation process from global structure of disease-RNAs network with graph convolution networks(GCN) and can also integrate local neighborhoods with the attention mechanism. What is more, GCAN is at the first attempt to utilize GCN to discover the feature representation of the latent nodes in disease-RNAs network. In order to evaluate the performance of GCAN, we conduct experiments on two different disease-RNAs networks: disease-miRNA and disease-lncRNA. Comparisons of several state-of-the-art methods using disease-RNAs networks show that our novel frameworks outperform baselines by a wide margin in potential disease-RNAs associations.
机译:越来越多的证据表明,RNA在鉴定各种复杂的人类疾病中起着重要的作用。但是,与疾病相关的已知RNA的数量仍然很少,许多生物学实验既费时又费力。因此,研究人员致力于开发有用的计算算法来预测疾病与RNA之间的关联。人们从分子水平识别复杂的人类疾病非常有用,特别是在疾病的诊断,治疗,预后和监测中。在本文中,我们提出了一种新颖的框架图卷积注意力网络(GCAN)来预测潜在的疾病-RNA关联。面对成千上万的协会,GCAN受益于深度学习模型的效率。与其他疾病-RNA关联预测方法相比,GCAN从疾病-RNA网络的全局结构与图卷积网络(GCN)进行运算,并且可以将局部邻域与注意力机制整合在一起。此外,GCAN首次尝试利用GCN来发现疾病-RNA网络中潜在节点的特征表示。为了评估GCAN的性能,我们在两种不同的疾病-RNA网络上进行了实验:疾病-miRNA和疾病-IncRNA。使用疾病-RNA网络对几种最新方法的比较表明,我们的新型框架在潜在的疾病-RNA关联方面大大超过了基线。

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