Affiliation:
1. School of Computer Science Shaanxi Normal University Xi'an Shaanxi China
2. School of Medical Technology Beijing Institute of Technology Beijing China
Abstract
AbstractCircular RNA (circRNA) is a common non‐coding RNA and plays an important role in the diagnosis and therapy of human diseases, circRNA‐disease associations prediction based on computational methods can provide a new way for better clinical diagnosis. In this article, we proposed a novel method for circRNA‐disease associations prediction based on ensemble learning, named ELCDA. First, the association heterogeneous network was constructed via collecting multiple information of circRNAs and diseases, and multiple similarity measures are adopted here, then, we use metapath, matrix factorization and GraphSAGE‐based models to extract features of nodes from different views, the final comprehensive features of circRNAs and diseases via ensemble learning, finally, a soft voting ensemble strategy is used to integrate the predicted results of all classifier. The performance of ELCDA is evaluated by fivefold cross‐validation and compare with other state‐of‐the‐art methods, the experimental results show that ELCDA is outperformance than others. Furthermore, three common diseases are used as case studies, which also demonstrate that ELCDA is an effective method for predicting circRNA‐disease associations.
Funder
National Natural Science Foundation of China
Fundamental Research Funds for the Central Universities