Discovering Microbe-disease Associations with Weighted Graph Convolution Networks and Taxonomy Common Tree
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Published:2023-12-01
Issue:
Volume:18
Page:
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ISSN:1574-8936
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Container-title:Current Bioinformatics
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language:en
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Short-container-title:CBIO
Author:
Xing Jieqi1,
Shi Yu1,
Su Xiaoquan1ORCID,
Wu Shunyao1
Affiliation:
1. College of Computer Science and Technology, Qingdao University, Qingdao, Shandong, 266071, China
Abstract
Background::
Microbe-disease associations are integral to understanding complex dis-eases and their screening procedures.
Objective::
While numerous computational methods have been developed to detect these associa-tions, their performance remains limited due to inadequate utilization of weighted inherent similari-ties and microbial taxonomy hierarchy. To address this limitation, we have introduced WTHMDA (weighted taxonomic heterogeneous network-based microbe-disease association), a novel deep learning framework.
Methods::
WTHMDA combines a weighted graph convolution network and the microbial taxono-my common tree to predict microbe-disease associations effectively. The framework extracts mul-tiple microbe similarities from the taxonomy common tree, facilitating the construction of a mi-crobe-disease heterogeneous interaction network. Utilizing a weighted DeepWalk algorithm, node embeddings in the network incorporate weight information from the similarities. Subsequently, a deep neural network (DNN) model accurately predicts microbe-disease associations based on this interaction network.
Results::
Extensive experiments on multiple datasets and case studies demonstrate WTHMDA's su-periority over existing approaches, particularly in predicting unknown associations.
Conclusion::
Our proposed method offers a new strategy for discovering microbe-disease linkages, showcasing remarkable performance and enhancing the feasibility of identifying disease risk.
Publisher
Bentham Science Publishers Ltd.
Subject
Computational Mathematics,Genetics,Molecular Biology,Biochemistry