NeoDTI
Drug interaction predictor
A deep learning framework for predicting new drug-target interactions by integrating neighbor information from heterogeneous networks
NeoDTI: Neural integration of neighbor information from a heterogeneous network for discovering new drug-target interactions
75 stars
5 watching
34 forks
Language: Python
last commit: almost 4 years ago
Linked from 2 awesome lists
bioinformaticscomputational-biologydeep-learninggraph-convolutionmachine-learning
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