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LDAPred: A Method Based on Information Flow Propagation and a Convolutional Neural Network for the Prediction of Disease-Associated lncRNAs

机译:LDAPred:一种基于信息流传播和卷积神经网络的疾病相关lncRNA预测方法

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摘要

Long non-coding RNAs (lncRNAs) play a crucial role in the pathogenesis and development of complex diseases. Predicting potential lncRNA–disease associations can improve our understanding of the molecular mechanisms of human diseases and help identify biomarkers for disease diagnosis, treatment, and prevention. Previous research methods have mostly integrated the similarity and association information of lncRNAs and diseases, without considering the topological structure information among these nodes, which is important for predicting lncRNA–disease associations. We propose a method based on information flow propagation and convolutional neural networks, called LDAPred, to predict disease-related lncRNAs. LDAPred not only integrates the similarities, associations, and interactions among lncRNAs, diseases, and miRNAs, but also exploits the topological structures formed by them. In this study, we construct a dual convolutional neural network-based framework that comprises the left and right sides. The embedding layer on the left side is established by utilizing lncRNA, miRNA, and disease-related biological premises. On the right side of the frame, multiple types of similarity, association, and interaction relationships among lncRNAs, diseases, and miRNAs are calculated based on information flow propagation on the bi-layer networks, such as the lncRNA–disease network. They contain the network topological structure and they are learned by the right side of the framework. The experimental results based on five-fold cross-validation indicate that LDAPred performs better than several state-of-the-art methods. Case studies on breast cancer, colon cancer, and osteosarcoma further demonstrate LDAPred’s ability to discover potential lncRNA–disease associations.
机译:长非编码RNA(lncRNA)在复杂疾病的发病机理和发展中起着至关重要的作用。预测潜在的lncRNA与疾病的关联可以增进我们对人类疾病分子机制的了解,并有助于识别用于疾病诊断,治疗和预防的生物标记物。先前的研究方法大多集成了lncRNA与疾病的相似性和关联信息,而没有考虑这些节点之间的拓扑结构信息,这对于预测lncRNA与疾病的关联非常重要。我们提出了一种基于信息流传播和卷积神经网络的方法,称为LDAPred,用于预测与疾病相关的lncRNA。 LDAPred不仅整合了lncRNA,疾病和miRNA之间的相似性,关联性和相互作用,而且还利用了由它们形成的拓扑结构。在这项研究中,我们构建了一个包含左侧和右侧的基于双卷积神经网络的框架。利用lncRNA,miRNA和与疾病相关的生物学前提建立左侧的嵌入层。在框架的右侧,基于双层网络(例如lncRNA-疾病网络)上的信息流传播,计算了lncRNA,疾病和miRNA之间的多种相似性,关联性和相互作用关系。它们包含网络拓扑结构,可以从框架的右侧学习。基于五重交叉验证的实验结果表明,LDAPred的性能优于几种最新方法。有关乳腺癌,结肠癌和骨肉瘤的案例研究进一步证明了LDAPred发现潜在的lncRNA-疾病关联的能力。

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