MAGCNSE: predicting lncRNA-disease associations using multi-view attention graph convolutional network and stacking ensemble model

计算机科学 卷积神经网络 机器学习 人工智能 分类器(UML) 图形 特征学习 疾病 集成学习 模式识别(心理学) 数据挖掘 理论计算机科学 医学 病理
作者
Ying Liang,Zequn Zhang,Nian-Nian Liu,Yikang Wu,Changlong Gu,Yinglong Wang
出处
期刊:BMC Bioinformatics [Springer Nature]
卷期号:23 (1) 被引量:12
标识
DOI:10.1186/s12859-022-04715-w
摘要

Many long non-coding RNAs (lncRNAs) have key roles in different human biologic processes and are closely linked to numerous human diseases, according to cumulative evidence. Predicting potential lncRNA-disease associations can help to detect disease biomarkers and perform disease analysis and prevention. Establishing effective computational methods for lncRNA-disease association prediction is critical.In this paper, we propose a novel model named MAGCNSE to predict underlying lncRNA-disease associations. We first obtain multiple feature matrices from the multi-view similarity graphs of lncRNAs and diseases utilizing graph convolutional network. Then, the weights are adaptively assigned to different feature matrices of lncRNAs and diseases using the attention mechanism. Next, the final representations of lncRNAs and diseases is acquired by further extracting features from the multi-channel feature matrices of lncRNAs and diseases using convolutional neural network. Finally, we employ a stacking ensemble classifier, consisting of multiple traditional machine learning classifiers, to make the final prediction. The results of ablation studies in both representation learning methods and classification methods demonstrate the validity of each module. Furthermore, we compare the overall performance of MAGCNSE with that of six other state-of-the-art models, the results show that it outperforms the other methods. Moreover, we verify the effectiveness of using multi-view data of lncRNAs and diseases. Case studies further reveal the outstanding ability of MAGCNSE in the identification of potential lncRNA-disease associations.The experimental results indicate that MAGCNSE is a useful approach for predicting potential lncRNA-disease associations.
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