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Predicting circRNA-Disease Associations by Using Multi-Biomolecular Networks Based on Variational Graph Auto-Encoder with Attention Mechanism

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【作者】 Jing YANGXiujuan LEIYi PAN

【Author】 Jing YANG;Xiujuan LEI;Yi PAN;School of Computer Science, Shaanxi Normal University;Faculty of Computer Science and Control Engineering, Shenzhen Institute of Advanced Technology,Chinese Academy of Sciences;Shenzhen Key Laboratory of Intelligent Bioinformatics, Shenzhen Institute of Advanced Technology;

【通讯作者】 Xiujuan LEI;

【机构】 School of Computer Science, Shaanxi Normal UniversityFaculty of Computer Science and Control Engineering, Shenzhen Institute of Advanced Technology,Chinese Academy of SciencesShenzhen Key Laboratory of Intelligent Bioinformatics, Shenzhen Institute of Advanced Technology

【摘要】 CircRNA-disease association(CDA) can provide a new direction for the treatment of diseases. However,traditional biological experiment is time-consuming and expensive, this urges us to propose the reliable computational model to predict the associations between circRNAs and diseases. And there is existing more and more evidence indicates that the combination of multi-biomolecular information can improve the prediction accuracy. We propose a novel computational model for CDA prediction named MBCDA, we collect the multi-biomolecular information including circRNA, disease, miRNA and lncRNA based on 6 databases, and construct three heterogeneous network among them, then the multi-heads graph attention networks are applied to these three networks to extract the features of circRNAs and diseases from different views, the obtained features are put into variational graph auto-encoder(VGAE) network to learn the latent distributions of the nodes, a fully connected neural network is adopted to further process the output of VGAE and uses sigmoid function to obtain the predicted probabilities of circRNA-disease pairs.As a result, MBCDA achieved the values of AUC and AUPR under 5-fold cross-validation of 0.893 and 0.887. MBCDA was applied to the analysis of the top-25 predicted associations between circRNAs and diseases, these experimental results show that our proposed MBCDA is a powerful computational model for CDA prediction.

【Abstract】 CircRNA-disease association(CDA) can provide a new direction for the treatment of diseases. However,traditional biological experiment is time-consuming and expensive, this urges us to propose the reliable computational model to predict the associations between circRNAs and diseases. And there is existing more and more evidence indicates that the combination of multi-biomolecular information can improve the prediction accuracy. We propose a novel computational model for CDA prediction named MBCDA, we collect the multi-biomolecular information including circRNA, disease, miRNA and lncRNA based on 6 databases, and construct three heterogeneous network among them, then the multi-heads graph attention networks are applied to these three networks to extract the features of circRNAs and diseases from different views, the obtained features are put into variational graph auto-encoder(VGAE) network to learn the latent distributions of the nodes, a fully connected neural network is adopted to further process the output of VGAE and uses sigmoid function to obtain the predicted probabilities of circRNA-disease pairs.As a result, MBCDA achieved the values of AUC and AUPR under 5-fold cross-validation of 0.893 and 0.887. MBCDA was applied to the analysis of the top-25 predicted associations between circRNAs and diseases, these experimental results show that our proposed MBCDA is a powerful computational model for CDA prediction.

【基金】 supported by the National Natural Science Foundation of China (Grant Nos. 62272288 and 61972451);the Shenzhen Science and Technology Program (Grant No. KQTD20200820113106007);the Shenzhen Key Laboratory of Intelligent Bioinformatic (Grant No. ZDSYS20220422103800001);the Fundamental Research Funds for the Central Universities,Shaanxi Normal University (Grant No. GK202302006)
  • 【文献出处】 Chinese Journal of Electronics ,电子学报(英文) , 编辑部邮箱 ,2024年06期
  • 【分类号】O157.5;R318
  • 【下载频次】11
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