Dual-channel hypergraph convolutional network for predicting herb–disease associations

Author:

Hu Lun123ORCID,Zhang Menglong123,Hu Pengwei123,Zhang Jun123,Niu Chao245,Lu Xueying267,Jiang Xiangrui89,Ma Yupeng123

Affiliation:

1. The Xinjiang Technical Institute of Physics and Chemistry, Chinese Academy of Sciences , Urumqi China

2. University of Chinese Academy of Sciences , Beijing , China

3. Xinjiang Laboratory of Minority Speech and Language Information Processing , Urumqi , China

4. State Key Laboratory Basis of Xinjiang Indigenous Medicinal Plants Resource Utilization , Key Laboratory of Chemistry of Plant Resources in Arid Regions, Xinjiang Technical Institute of Physicsand Chemistry, Urumqi, China

5. Chinese Academy of Sciences , Key Laboratory of Chemistry of Plant Resources in Arid Regions, Xinjiang Technical Institute of Physicsand Chemistry, Urumqi, China

6. State Key Laboratory Basis of Xinjiang Indigenous Medicinal Plants Resource Utilization , Key Laboratory of Chemistry of Plant Resources in Arid Regions, Xinjiang Technical Institute of Physicsand Chemistry, , China

7. Chinese Academy of Sciences Urumqi , Key Laboratory of Chemistry of Plant Resources in Arid Regions, Xinjiang Technical Institute of Physicsand Chemistry, , China

8. State Key Laboratory of Drug Research , Shanghai Institute of Materia Medica, , China

9. Chinese Academy of Sciences Shanghai , Shanghai Institute of Materia Medica, , China

Abstract

Abstract Herbs applicability in disease treatment has been verified through experiences over thousands of years. The understanding of herb–disease associations (HDAs) is yet far from complete due to the complicated mechanism inherent in multi-target and multi-component (MTMC) botanical therapeutics. Most of the existing prediction models fail to incorporate the MTMC mechanism. To overcome this problem, we propose a novel dual-channel hypergraph convolutional network, namely HGHDA, for HDA prediction. Technically, HGHDA first adopts an autoencoder to project components and target protein onto a low-dimensional latent space so as to obtain their embeddings by preserving similarity characteristics in their original feature spaces. To model the high-order relations between herbs and their components, we design a channel in HGHDA to encode a hypergraph that describes the high-order patterns of herb-component relations via hypergraph convolution. The other channel in HGHDA is also established in the same way to model the high-order relations between diseases and target proteins. The embeddings of drugs and diseases are then aggregated through our dual-channel network to obtain the prediction results with a scoring function. To evaluate the performance of HGHDA, a series of extensive experiments have been conducted on two benchmark datasets, and the results demonstrate the superiority of HGHDA over the state-of-the-art algorithms proposed for HDA prediction. Besides, our case study on Chuan Xiong and Astragalus membranaceus is a strong indicator to verify the effectiveness of HGHDA, as seven and eight out of the top 10 diseases predicted by HGHDA for Chuan-Xiong and Astragalus-membranaceus, respectively, have been reported in literature.

Funder

Natural Science Foundation of Xinjiang Uygur Autonomous Region

National Natural Science Foundation of China

Xinjiang Tianchi Talents Program

CAS Light of the West Multidisciplinary Team project

Pioneer Hundred Talents Program of Chinese Academy of Sciences

Publisher

Oxford University Press (OUP)

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