HRGCNLDA: Forecasting of lncRNA-disease association based on hierarchical refinement graph convolutional neural network.

IF 2.6 4区 工程技术 Q1 Mathematics
Li Peng, Yujie Yang, Cheng Yang, Zejun Li, Ngai Cheong
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引用次数: 0

Abstract

Long non-coding RNA (lncRNA) is considered to be a crucial regulator involved in various human biological processes, including the regulation of tumor immune checkpoint proteins. It has great potential as both a cancer biomolecular biomarker and therapeutic target. Nevertheless, conventional biological experimental techniques are both resource-intensive and laborious, making it essential to develop an accurate and efficient computational method to facilitate the discovery of potential links between lncRNAs and diseases. In this study, we proposed HRGCNLDA, a computational approach utilizing hierarchical refinement of graph convolutional neural networks for forecasting lncRNA-disease potential associations. This approach effectively addresses the over-smoothing problem that arises from stacking multiple layers of graph convolutional neural networks. Specifically, HRGCNLDA enhances the layer representation during message propagation and node updates, thereby amplifying the contribution of hidden layers that resemble the ego layer while reducing discrepancies. The results of the experiments showed that HRGCNLDA achieved the highest AUC-ROC (area under the receiver operating characteristic curve, AUC for short) and AUC-PR (area under the precision versus recall curve, AUPR for short) values compared to other methods. Finally, to further demonstrate the reliability and efficacy of our approach, we performed case studies on the case of three prevalent human diseases, namely, breast cancer, lung cancer and gastric cancer.

HRGCNLDA:基于分层细化图卷积神经网络的 lncRNA-疾病关联预测。
长非编码 RNA(lncRNA)被认为是参与人类各种生物过程的重要调节因子,包括对肿瘤免疫检查点蛋白的调节。它作为癌症生物分子生物标志物和治疗靶点具有巨大的潜力。然而,传统的生物学实验技术既耗费资源又费时费力,因此开发一种精确高效的计算方法以促进发现 lncRNA 与疾病之间的潜在联系至关重要。在这项研究中,我们提出了一种利用分层细化图卷积神经网络预测lncRNA与疾病潜在联系的计算方法--HRGCNLDA。这种方法有效解决了多层图卷积神经网络堆叠产生的过度平滑问题。具体来说,HRGCNLDA 在信息传播和节点更新过程中增强了层表示,从而放大了与自我层相似的隐藏层的贡献,同时减少了差异。实验结果表明,与其他方法相比,HRGCNLDA 获得了最高的 AUC-ROC(接收者操作特征曲线下面积,简称 AUC)和 AUC-PR(精度与召回曲线下面积,简称 AUPR)值。最后,为了进一步证明我们方法的可靠性和有效性,我们对三种人类常见疾病(即乳腺癌、肺癌和胃癌)进行了案例研究。
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来源期刊
Mathematical Biosciences and Engineering
Mathematical Biosciences and Engineering 工程技术-数学跨学科应用
CiteScore
3.90
自引率
7.70%
发文量
586
审稿时长
>12 weeks
期刊介绍: Mathematical Biosciences and Engineering (MBE) is an interdisciplinary Open Access journal promoting cutting-edge research, technology transfer and knowledge translation about complex data and information processing. MBE publishes Research articles (long and original research); Communications (short and novel research); Expository papers; Technology Transfer and Knowledge Translation reports (description of new technologies and products); Announcements and Industrial Progress and News (announcements and even advertisement, including major conferences).
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