Authors
Kuo Yang, Yi Zheng, Kezhi Lu, Kai Chang, Ning Wang, Zixin Shu, Jian Yu, Baoyan Liu, Zhuye Gao, Xuezhong Zhou
Publication date
2020/6/16
Journal
IEEE/ACM Transactions on Computational Biology and Bioinformatics
Volume
19
Issue
1
Pages
575-584
Publisher
IEEE
Description
The knowledge of phenotype-genotype associations is crucial for the understanding of disease mechanisms. Numerous studies have focused on developing efficient and accurate computing approaches to predict disease genes. However, owing to the sparseness and complexity of medical data, developing an efficient deep neural network model to identify disease genes remains a huge challenge. Therefore, we develop a novel deep neural network model that fuses the multi-view features of phenotypes and genotypes to identify disease genes (termed PDGNet). Our model integrated the multi-view features of diseases and genes and leveraged the feedback information of training samples to optimize the parameters of deep neural network and obtain the deep vector features of diseases and genes. The evaluation experiments on a large data set indicated that PDGNet obtained higher performance than the state …
Total citations
2021202220232024213105
Scholar articles
K Yang, Y Zheng, K Lu, K Chang, N Wang, Z Shu, J Yu… - IEEE/ACM Transactions on Computational Biology and …, 2020