Predicting Herb-disease Associations Through Graph Convolutional Network

Author:

Hu Xuan12ORCID,Lu You3,Tian Geng24,Bing Pingping56,Wang Bing1,He Binsheng56

Affiliation:

1. School of Electrical & Information Engineering, Anhui University of Technology, Anhui, 243002, China

2. Geneis Beijing Co., Ltd., Beijing, 100102, China

3. Department of Pharmacy, Emergency General Hospital, Beijing, 100028, China

4. Qingdao Geneis Institute of Big Data Mining and Precision Medicine, Qingdao, 266000, China

5. Academician Workstation, Changsha Medical University, Changsha, 410219, China

6. School of Pharmacy, Changsha Medical University, Changsha, 410219, China

Abstract

Background: In recent years, herbs have become very popular worldwide as a form of complementary and alternative medicine (CAM). However, there are many types of herbs and diseases, whose associations are impossible to be fully revealed. Identifying new therapeutic indications of herbs, that is drug repositioning, is a critical supplement for new drug development. Considering that exploring the associations between herbs and diseases by wet-lab techniques is time-consuming and laborious, there is an urgent need for reliable computational methods to fill this gap. : In this study, we first preprocessed the herbs and their indications in the TCM-Suit database, a comprehensive, accurate, and integrated traditional Chinese medicine database, to obtain the herb-disease association network. We then proposed a novel model based on a graph convolution network (GCN) to infer potential new associations between herbs and diseases. Methods: In our method, the effective features of herbs and diseases were extracted through multi-layer GCN, then the layer attention mechanism was introduced to combine the features learned from multiple GCN layers, and jump connections were added to reduce the over-smoothing phenomenon caused by multi-layer GCN stacking. Finally, the recovered herb-disease association network was generated by the bilinear decoder. We applied our model together with four other methods (including SCMFDD, BNNR, LRMCMDA, and DRHGCN) to predict herb-disease associations. Compared with all other methods, our model showed the highest area under the receiver operating characteristic curve (AUROC), the area under the precision-recall curve (AUPRC), as well as the highest recall in the five-fold cross-validation. Conclusion: We further used our model to predict the candidate herbs for Alzheimer's disease and found the compounds mediating herbs and diseases through the herb-compound-gene-disease network. The relevant literature also confirmed our findings.

Funder

National Natural Science Foundation of China

Anhui Province Collaborative Innovation Project

Hunan key laboratory cultivation base of the research and development of novel pharmaceutical preparations

Educational Commission of Anhui Province

Publisher

Bentham Science Publishers Ltd.

Subject

Computational Mathematics,Genetics,Molecular Biology,Biochemistry

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