2022
DOI: 10.1088/1742-6596/2400/1/012018
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A Graph Convolutional Network-based Method for Drug-Target Interaction Prediction Running title: GCNDTI

Abstract: Studying the interaction between drugs and targets is the key step of drug repositioning. Through machine learning methods, we can provide reliable drug-target pairs for drug-target interaction (DTI) identification for wet-lab experiments and improve its efficiency. Previous methods did not combine node attributes and relationships of drug and target, which limited the performance of those methods. To this end, we propose a prediction method that takes into account both node attributes and topology information… Show more

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