Authors
Kuo Yang, Ruyu Wang, Guangming Liu, Zixin Shu, Ning Wang, Runshun Zhang, Jian Yu, Jianxin Chen, Xiaodong Li, Xuezhong Zhou
Publication date
2018/9/16
Journal
IEEE journal of biomedical and health informatics
Volume
23
Issue
4
Pages
1805-1815
Publisher
IEEE
Description
The discovery of disease-causing genes is a critical step towards understanding the nature of a disease and determining a possible cure for it. In recent years, many computational methods to identify disease genes have been proposed. However, making full use of disease-related (e.g., symptoms) and gene-related (e.g., gene ontology and protein-protein interactions) information to improve the performance of disease gene prediction is still an issue. Here, we develop a heterogeneous disease-gene-related network (HDGN) embedding representation framework for disease gene prediction (called HerGePred). Based on this framework, a low-dimensional vector representation (LVR) of the nodes in the HDGN can be obtained. Then, we propose two specific algorithms, namely, an LVR-based similarity prediction and a random walk with restart on a reconstructed heterogeneous disease-gene network (RWRDGN), to …
Total citations
20192020202120222023202421111221811
Scholar articles
K Yang, R Wang, G Liu, Z Shu, N Wang, R Zhang, J Yu… - IEEE journal of biomedical and health informatics, 2018