CGINet: graph convolutional network-based model for identifying chemical-gene interaction in an integrated multi-relational graph.
Wei WangXi YangChengkun WuCanqun YangPublished in: BMC bioinformatics (2020)
We study three model implementations CGINet-1/2/3 with various components and compare them with baseline approaches. As the experimental results suggest, our models exhibit competitive performances on identifying chemical-gene interactions. Besides, the subgraph perspective and the latent link both play positive roles in learning much more informative node embeddings and can lead to improved prediction.