Cannabis Indica

Authors
Fangping Wan, Lixiang Hong, An Xiao, Tao Jiang, Jianyang Zeng
Publication date
2019/1/1
Journal
Bioinformatics
Volume
35
Issue
1
Pages
104-111
Publisher
Oxford Academic
Description
Results
Inspired by recent advance of information passing and aggregation techniques that generalize the convolution neural networks to mine large-scale graph data and greatly improve the performance of many network-related prediction tasks, we develop a new nonlinear end-to-end learning model, called NeoDTI, that integrates diverse information from heterogeneous network data and automatically learns topology-preserving representations of drugs and targets to facilitate DTI prediction. The substantial prediction performance improvement over other state-of-the-art DTI prediction methods as well as several novel predicted DTIs with evidence supports from previous studies have demonstrated the superior predictive power of NeoDTI. In addition, NeoDTI is robust against a wide range of choices of hyperparameters and is ready to integrate more drug and target related information (eg compound–protein …
Total citations
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