Affiliation:
1. School of Electronic and Information Engineering, Suzhou University of Science and Technology, Suzhou, 215009,
China
2. Gusu School, Nanjing Medical University, Suzhou, Jiangsu, China
Abstract
Background:
New drugs are costly, time-consuming, and often accompanied by safety concerns. With the development of deep learning, computer-aided drug design has become more mainstream, and convolutional neural networks and graph neural networks have been widely used for drug–target affinity (DTA) prediction.
Objective:
The paper proposes a method of predicting DTA using graph convolutional networks and multiscale convolutional neural networks.
Methods:
We construct drug molecules into graph representation vectors and learn feature expressions through graph attention networks and graph convolutional networks. A three-branch convolutional neural network learns the local and global features of protein sequences, and the two feature representations are merged into a regression module to predict the DTA.
Results:
We present a novel model to predict DTA, with a 2.5% improvement in the consistency index and a 21% accuracy improvement in terms of the mean squared error on the Davis dataset compared to DeepDTA. Morever, our method outperformed other mainstream DTA prediction models namely, GANsDTA, WideDTA, GraphDTA and DeepAffinity.
Conclusion:
The results showed that the use of multiscale convolutional neural networks was better than a single-branched convolutional neural network at capturing protein signatures and the use of graphs to express drug molecules yielded better results.
Funder
National Natural Science Foundation of China
National Research Project
Opening Topic Fund of Big Data Intelligent Engineering Laboratory of Jiangsu Province
Provincial Key Laboratory for Computer Information Processing Technology, Soochow University
Publisher
Bentham Science Publishers Ltd.
Subject
Computational Mathematics,Genetics,Molecular Biology,Biochemistry
Cited by
1 articles.
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