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HMCDA: a novel method based on the heterogeneous graph neural network and metapath for circRNA-disease associations prediction

Shiyang Liang, Siwei Liu, Junliang Song, Qiang Lin, Shihong Zhao, Shuaixin Li, Jiahui Li, Shangsong Liang, Jingjie Wang

2023BMC Bioinformatics13 citationsDOIOpen Access PDF

Abstract

Circular RNA (CircRNA) is a type of non-coding RNAs in which both ends are covalently linked. Researchers have demonstrated that many circRNAs can act as biomarkers of diseases. However, traditional experimental methods for circRNA-disease associations identification are labor-intensive. In this work, we propose a novel method based on the heterogeneous graph neural network and metapaths for circRNA-disease associations prediction termed as HMCDA. First, a heterogeneous graph consisting of circRNA-disease associations, circRNA-miRNA associations, miRNA-disease associations and disease-disease associations are constructed. Then, six metapaths are defined and generated according to the biomedical pathways. Afterwards, the entity content transformation, intra-metapath and inter-metapath aggregation are implemented to learn the embeddings of circRNA and disease entities. Finally, the learned embeddings are used to predict novel circRNA-disase associations. In particular, the result of extensive experiments demonstrates that HMCDA outperforms four state-of-the-art models in fivefold cross validation. In addition, our case study indicates that HMCDA has the ability to identify novel circRNA-disease associations.

Topics & Concepts

Circular RNAGraphDiseaseComputational biologyComputer scienceDNA microarrayNon-coding RNAmicroRNABiologyTheoretical computer scienceGeneticsGeneMedicinePathologyGene expressionCircular RNAs in diseasesCancer-related molecular mechanisms researchMicroRNA in disease regulation
HMCDA: a novel method based on the heterogeneous graph neural network and metapath for circRNA-disease associations prediction | Litcius