MSResG: Using GAE and Residual GCN to Predict Drug–Drug Interactions Based on Multi-source Drug Features

Drug–drug interaction refers to taking the two drugs may produce certain reaction which may be a threat to patients’ health, or enhance the efficacy helpful for medical work. Therefore, it is necessary to study and predict it. In fact, traditional experimental methods can be used for drug–drug inter...

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Veröffentlicht in:Interdisciplinary sciences : computational life sciences 2023-06, Vol.15 (2), p.171-188
Hauptverfasser: Guo, Lin, Lei, Xiujuan, Chen, Ming, Pan, Yi
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Chen, Ming
Pan, Yi
description Drug–drug interaction refers to taking the two drugs may produce certain reaction which may be a threat to patients’ health, or enhance the efficacy helpful for medical work. Therefore, it is necessary to study and predict it. In fact, traditional experimental methods can be used for drug–drug interaction prediction, but they are time-consuming and costly, so we prefer to use more accurate and convenient calculation methods to predict the unknown drug–drug interaction. In this paper, we proposed a deep learning framework called MSResG that considers multi-sources features of drugs and combines them with Graph Auto-Encoder to predicting. Firstly, the model obtains four feature representations of drugs from the database, namely, chemical substructure, target, pathway and enzyme, and then calculates the Jaccard similarity of the drugs. To balance different drug features, we perform similarity integration by finding the mean value. Then we will be comprehensive similarity network combined with drug interaction network, and encodes and decodes it using the graph auto-encoder based on residual graph convolution network. Encoding is to learn the potential feature vectors of drugs, which contain similar information and interaction information. Decoding is to reconstruct the network to predict unknown drug-drug interaction. The experimental results show that our model has advanced performance and is superior to other existing advanced methods. Case study also shows that MSResG has practical significance. Graphical Abstract
doi_str_mv 10.1007/s12539-023-00550-6
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subjects Biomedical and Life Sciences
Coders
Computational Biology/Bioinformatics
Computational Science and Engineering
Computer Appl. in Life Sciences
Databases, Factual
Deep learning
Drug interaction
Drug Interactions
Drugs
Experimental methods
Graph neural networks
Health Sciences
Humans
Life Sciences
Mathematical and Computational Physics
Medicine
Original Research Article
Research Design
Similarity
Statistics for Life Sciences
Theoretical
Theoretical and Computational Chemistry
title MSResG: Using GAE and Residual GCN to Predict Drug–Drug Interactions Based on Multi-source Drug Features
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