Dual graph convolutional neural network for predicting chemical networks

Abstract Background Predicting of chemical compounds is one of the fundamental tasks in bioinformatics and chemoinformatics, because it contributes to various applications in metabolic engineering and drug discovery. The recent rapid growth of the amount of available data has enabled applications of...

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Main Authors: Shonosuke Harada, Hirotaka Akita, Masashi Tsubaki, Yukino Baba, Ichigaku Takigawa, Yoshihiro Yamanishi, Hisashi Kashima
Format: Article
Language:English
Published: BMC 2020-04-01
Series:BMC Bioinformatics
Subjects:
Online Access:http://link.springer.com/article/10.1186/s12859-020-3378-0
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spelling doaj-2a2393e02fe04f9fbd6987b1c20df6812020-11-25T02:48:52ZengBMCBMC Bioinformatics1471-21052020-04-0121S311310.1186/s12859-020-3378-0Dual graph convolutional neural network for predicting chemical networksShonosuke Harada0Hirotaka Akita1Masashi Tsubaki2Yukino Baba3Ichigaku Takigawa4Yoshihiro Yamanishi5Hisashi Kashima6Kyoto UniversityPreferred NetworksNational Institute of Advanced Industrial Science and TechnologyTsukuba UniversityHokkaido UniversityKyushu Institute of TechnologyKyoto UniversityAbstract Background Predicting of chemical compounds is one of the fundamental tasks in bioinformatics and chemoinformatics, because it contributes to various applications in metabolic engineering and drug discovery. The recent rapid growth of the amount of available data has enabled applications of computational approaches such as statistical modeling and machine learning method. Both a set of chemical interactions and chemical compound structures are represented as graphs, and various graph-based approaches including graph convolutional neural networks have been successfully applied to chemical network prediction. However, there was no efficient method that can consider the two different types of graphs in an end-to-end manner. Results We give a new formulation of the chemical network prediction problem as a link prediction problem in a graph of graphs (GoG) which can represent the hierarchical structure consisting of compound graphs and an inter-compound graph. We propose a new graph convolutional neural network architecture called dual graph convolutional network that learns compound representations from both the compound graphs and the inter-compound network in an end-to-end manner. Conclusions Experiments using four chemical networks with different sparsity levels and degree distributions shows that our dual graph convolution approach achieves high prediction performance in relatively dense networks, while the performance becomes inferior on extremely-sparse networks.http://link.springer.com/article/10.1186/s12859-020-3378-0Chemical network predictionGraph convolutional neural networkGraph of graphs
collection DOAJ
language English
format Article
sources DOAJ
author Shonosuke Harada
Hirotaka Akita
Masashi Tsubaki
Yukino Baba
Ichigaku Takigawa
Yoshihiro Yamanishi
Hisashi Kashima
spellingShingle Shonosuke Harada
Hirotaka Akita
Masashi Tsubaki
Yukino Baba
Ichigaku Takigawa
Yoshihiro Yamanishi
Hisashi Kashima
Dual graph convolutional neural network for predicting chemical networks
BMC Bioinformatics
Chemical network prediction
Graph convolutional neural network
Graph of graphs
author_facet Shonosuke Harada
Hirotaka Akita
Masashi Tsubaki
Yukino Baba
Ichigaku Takigawa
Yoshihiro Yamanishi
Hisashi Kashima
author_sort Shonosuke Harada
title Dual graph convolutional neural network for predicting chemical networks
title_short Dual graph convolutional neural network for predicting chemical networks
title_full Dual graph convolutional neural network for predicting chemical networks
title_fullStr Dual graph convolutional neural network for predicting chemical networks
title_full_unstemmed Dual graph convolutional neural network for predicting chemical networks
title_sort dual graph convolutional neural network for predicting chemical networks
publisher BMC
series BMC Bioinformatics
issn 1471-2105
publishDate 2020-04-01
description Abstract Background Predicting of chemical compounds is one of the fundamental tasks in bioinformatics and chemoinformatics, because it contributes to various applications in metabolic engineering and drug discovery. The recent rapid growth of the amount of available data has enabled applications of computational approaches such as statistical modeling and machine learning method. Both a set of chemical interactions and chemical compound structures are represented as graphs, and various graph-based approaches including graph convolutional neural networks have been successfully applied to chemical network prediction. However, there was no efficient method that can consider the two different types of graphs in an end-to-end manner. Results We give a new formulation of the chemical network prediction problem as a link prediction problem in a graph of graphs (GoG) which can represent the hierarchical structure consisting of compound graphs and an inter-compound graph. We propose a new graph convolutional neural network architecture called dual graph convolutional network that learns compound representations from both the compound graphs and the inter-compound network in an end-to-end manner. Conclusions Experiments using four chemical networks with different sparsity levels and degree distributions shows that our dual graph convolution approach achieves high prediction performance in relatively dense networks, while the performance becomes inferior on extremely-sparse networks.
topic Chemical network prediction
Graph convolutional neural network
Graph of graphs
url http://link.springer.com/article/10.1186/s12859-020-3378-0
work_keys_str_mv AT shonosukeharada dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT hirotakaakita dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT masashitsubaki dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT yukinobaba dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT ichigakutakigawa dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT yoshihiroyamanishi dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
AT hisashikashima dualgraphconvolutionalneuralnetworkforpredictingchemicalnetworks
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