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MNMDCDA:通过从多个距离学习混合邻域信息来预测 circRNA-疾病关联。

MNMDCDA: prediction of circRNA-disease associations by learning mixed neighborhood information from multiple distances.

机构信息

School of Computer Science and Information Engineering, Hefei University of Technology, Hefei 230601, China.

Big Data and Intelligent Computing Research Center, Guangxi Academy of Sciences, Nanning 530007, China.

出版信息

Brief Bioinform. 2022 Nov 19;23(6). doi: 10.1093/bib/bbac479.

Abstract

Emerging evidence suggests that circular RNA (circRNA) is an important regulator of a variety of pathological processes and serves as a promising biomarker for many complex human diseases. Nevertheless, there are relatively few known circRNA-disease associations, and uncovering new circRNA-disease associations by wet-lab methods is time consuming and costly. Considering the limitations of existing computational methods, we propose a novel approach named MNMDCDA, which combines high-order graph convolutional networks (high-order GCNs) and deep neural networks to infer associations between circRNAs and diseases. Firstly, we computed different biological attribute information of circRNA and disease separately and used them to construct multiple multi-source similarity networks. Then, we used the high-order GCN algorithm to learn feature embedding representations with high-order mixed neighborhood information of circRNA and disease from the constructed multi-source similarity networks, respectively. Finally, the deep neural network classifier was implemented to predict associations of circRNAs with diseases. The MNMDCDA model obtained AUC scores of 95.16%, 94.53%, 89.80% and 91.83% on four benchmark datasets, i.e., CircR2Disease, CircAtlas v2.0, Circ2Disease and CircRNADisease, respectively, using the 5-fold cross-validation approach. Furthermore, 25 of the top 30 circRNA-disease pairs with the best scores of MNMDCDA in the case study were validated by recent literature. Numerous experimental results indicate that MNMDCDA can be used as an effective computational tool to predict circRNA-disease associations and can provide the most promising candidates for biological experiments.

摘要

新出现的证据表明,环状 RNA(circRNA)是多种病理过程的重要调节剂,可作为许多复杂人类疾病的有前途的生物标志物。然而,已知的 circRNA-疾病关联相对较少,通过湿实验室方法揭示新的 circRNA-疾病关联既费时又费钱。考虑到现有计算方法的局限性,我们提出了一种名为 MNMDCDA 的新方法,该方法结合了高阶图卷积网络(high-order GCN)和深度神经网络,以推断 circRNA 和疾病之间的关联。首先,我们分别计算 circRNA 和疾病的不同生物属性信息,并使用它们来构建多个多源相似性网络。然后,我们使用高阶 GCN 算法从构建的多源相似性网络中分别学习 circRNA 和疾病的高阶混合邻域信息的特征嵌入表示。最后,实现深度神经网络分类器来预测 circRNA 与疾病的关联。在使用 5 折交叉验证方法的四个基准数据集CircR2Disease、CircAtlas v2.0、Circ2Disease 和 CircRNADisease 上,MNMDCDA 模型分别获得了 95.16%、94.53%、89.80%和 91.83%的 AUC 得分。此外,在案例研究中,MNMDCDA 得分最高的 30 对 circRNA-疾病对中的 25 对已通过最近的文献得到验证。大量实验结果表明,MNMDCDA 可作为一种有效的计算工具来预测 circRNA-疾病关联,并为生物实验提供最有前途的候选物。

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