School of Computer Science and Technology, Heilongjiang University, Harbin 150080, China.
School of Information Science and Technology, Heilongjiang University, Harbin 150080, China.
Int J Mol Sci. 2018 Nov 23;19(12):3732. doi: 10.3390/ijms19123732.
Identification of disease-related microRNAs (disease miRNAs) is helpful for understanding and exploring the etiology and pathogenesis of diseases. Most of recent methods predict disease miRNAs by integrating the similarities and associations of miRNAs and diseases. However, these methods fail to learn the deep features of the miRNA similarities, the disease similarities, and the miRNA⁻disease associations. We propose a dual convolutional neural network-based method for predicting candidate disease miRNAs and refer to it as CNNDMP. CNNDMP not only exploits the similarities and associations of miRNAs and diseases, but also captures the topology structures of the miRNA and disease networks. An embedding layer is constructed by combining the biological premises about the miRNA⁻disease associations. A new framework based on the dual convolutional neural network is presented for extracting the deep feature representation of associations. The left part of the framework focuses on integrating the original similarities and associations of miRNAs and diseases. The novel miRNA and disease similarities which contain the topology structures are obtained by random walks on the miRNA and disease networks, and their deep features are learned by the right part of the framework. CNNDMP achieves the superior prediction performance than several state-of-the-art methods during the cross-validation process. Case studies on breast cancer, colorectal cancer and lung cancer further demonstrate CNNDMP's powerful ability of discovering potential disease miRNAs.
鉴定与疾病相关的 microRNA(疾病 microRNA)有助于理解和探索疾病的病因和发病机制。大多数最近的方法通过整合 microRNA 和疾病的相似性和关联来预测疾病 microRNA。然而,这些方法未能学习到 microRNA 相似性、疾病相似性和 microRNA-疾病关联的深层特征。我们提出了一种基于双卷积神经网络的预测候选疾病 microRNA 的方法,称为 CNNDMP。CNN-DMP 不仅利用了 microRNA 和疾病的相似性和关联,还捕获了 microRNA 和疾病网络的拓扑结构。通过组合关于 microRNA-疾病关联的生物学前提,构建了一个嵌入层。提出了一个基于双卷积神经网络的新框架,用于提取关联的深层特征表示。框架的左半部分专注于整合 microRNA 和疾病的原始相似性和关联。通过在 microRNA 和疾病网络上进行随机游走,获得包含拓扑结构的新颖的 microRNA 和疾病相似性,并通过框架的右半部分学习其深层特征。在交叉验证过程中,CNN-DMP 实现了优于几种最先进方法的预测性能。乳腺癌、结直肠癌和肺癌的案例研究进一步证明了 CNN-DMP 发现潜在疾病 microRNA 的强大能力。