Publication | Open Access
A novel candidate disease gene prioritization method using deep graph convolutional networks and semi-supervised learning
19
Citations
52
References
2022
Year
This study shows that the proposed semi-supervised learning method appropriately classifies and ranks candidate disease genes using a graph convolutional network and an innovative method to create three feature vectors for genes based on the molecular function, cellular component, and biological process terms from GO data.
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