Multirelational Hypergraph Representation Learning for Predicting circRNA-miRNA Associations

One of the principal functions of circular RNA (circRNA) is to participate in gene regulation by sponging microRNAs (miRNAs). Using accumulated circRNA-miRNA associations (CMAs) to construct computational models for predicting potential associations provides a crucial tool for accelerating the valid...

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Veröffentlicht in:Journal of chemical information and modeling 2024-11, Vol.64 (21), p.8349-8360
Hauptverfasser: Yin, Wenjing, Wang, Shudong, Zhang, Yuanyuan, Qiao, Sibo, Wu, Wenhao, Li, Hengxiao
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Sprache:eng
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Zusammenfassung:One of the principal functions of circular RNA (circRNA) is to participate in gene regulation by sponging microRNAs (miRNAs). Using accumulated circRNA-miRNA associations (CMAs) to construct computational models for predicting potential associations provides a crucial tool for accelerating the validation of reliable associations through traditional experiments. Nevertheless, the current prediction models are constrained in their capacity to represent the higher-order relationships of CMAs and thus require further enhancement in terms of their predictive efficacy. In order to address this issue, we propose a new model based on multirelational hypergraph representation learning (MRHRL). This model employs hypergraphs to capture various higher-order relationships among RNAs and aggregates complementary information through a view attention mechanism. Furthermore, MRHRL introduces a hyperedge-level reconstruction task, jointly optimizing the prediction and reconstruction tasks within a unified framework to uncover potential information, thereby enhancing the model’s predictive and generalization capabilities. Experiments conducted on three real-world data sets demonstrate that MRHRL achieves satisfactory results in CMAs prediction, significantly outperforming existing prediction models.
ISSN:1549-9596
1549-960X
1549-960X
DOI:10.1021/acs.jcim.4c01436