Authors
Kuo Yang, Kezhi Lu, Yang Wu, Jian Yu, Baoyan Liu, Yi Zhao, Jianxin Chen, Xuezhong Zhou
Publication date
2021/6
Journal
Human Genetics
Volume
140
Pages
897-913
Publisher
Springer Berlin Heidelberg
Description
Disease gene identification is a critical step towards uncovering the molecular mechanisms of diseases and systematically investigating complex disease phenotypes. Despite considerable efforts to develop powerful computing methods, candidate gene identification remains a severe challenge owing to the connectivity of an incomplete interactome network, which hampers the discovery of true novel candidate genes. We developed a network-based machine-learning framework to identify both functional modules and disease candidate genes. In this framework, we designed a semi-supervised non-negative matrix factorization model to obtain the functional modules related to the diseases and genes. Of note, we proposed a disease gene-prioritizing method called MapGene that integrates the correlations from both functional modules and network closeness. Our framework identified a set of functional …
Total citations
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