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An end-to-end heterogeneous graph representation learning-based framework for drug–target interaction prediction

Jiajie Peng, Yuxian Wang, Jiaojiao Guan, Jingyi Li, Ruijiang Han, Jianye Hao, Zhongyu Wei, Xuequn Shang

2020Briefings in Bioinformatics181 citationsDOI

Abstract

Accurately identifying potential drug-target interactions (DTIs) is a key step in drug discovery. Although many related experimental studies have been carried out for identifying DTIs in the past few decades, the biological experiment-based DTI identification is still timeconsuming and expensive. Therefore, it is of great significance to develop effective computational methods for identifying DTIs. In this paper, we develop a novel 'end-to-end' learning-based framework based on heterogeneous 'graph' convolutional networks for 'DTI' prediction called end-to-end graph (EEG)-DTI. Given a heterogeneous network containing multiple types of biological entities (i.e. drug, protein, disease, side-effect), EEG-DTI learns the low-dimensional feature representation of drugs and targets using a graph convolutional networks-based model and predicts DTIs based on the learned features. During the training process, EEG-DTI learns the feature representation of nodes in an end-to-end mode. The evaluation test shows that EEG-DTI performs better than existing state-of-art methods. The data and source code are available at: https://github.com/MedicineBiology-AI/EEG-DTI.

Topics & Concepts

End-to-end principleComputer scienceGraphRepresentation (politics)DrugArtificial intelligenceTheoretical computer sciencePharmacologyMedicinePoliticsPolitical scienceLawComputational Drug Discovery MethodsAdvanced Graph Neural NetworksBioinformatics and Genomic Networks
An end-to-end heterogeneous graph representation learning-based framework for drug–target interaction prediction | Litcius