A novel approach for predicting microbe-disease associations by bi-random walk on the heterogeneous network

Since the microbiome has a significant impact on human health and disease, microbe-disease associations can be utilized as a valuable resource for understanding disease pathogenesis and promoting disease diagnosis and prognosis. Accordingly, it is necessary for researchers to achieve a comprehensive...

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Veröffentlicht in:PloS one 2017-09, Vol.12 (9), p.e0184394-e0184394
Hauptverfasser: Zou, Shuai, Zhang, Jingpu, Zhang, Zuping
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Zhang, Zuping
description Since the microbiome has a significant impact on human health and disease, microbe-disease associations can be utilized as a valuable resource for understanding disease pathogenesis and promoting disease diagnosis and prognosis. Accordingly, it is necessary for researchers to achieve a comprehensive and deep understanding of the associations between microbes and diseases. Nevertheless, to date, little work has been achieved in implementing novel human microbe-disease association prediction models. In this paper, we develop a novel computational model to predict potential microbe-disease associations by bi-random walk on the heterogeneous network (BiRWHMDA). The heterogeneous network was constructed by connecting the microbe similarity network and the disease similarity network via known microbe-disease associations. Microbe similarity and disease similarity were calculated by the Gaussian interaction profile kernel similarity measure; moreover, a logistic function was applied to regulate disease similarity. Additionally, leave-one-out cross validation and 5-fold cross validation were implemented to evaluate the predictive performance of our method; both cross validation methods performed well. The leave-one-out cross validation experiment results illustrate that our method outperforms other previously proposed methods. Furthermore, case studies on asthma and inflammatory bowel disease prove the favorable performance of our method. In conclusion, our method can be considered as an effective computational model for predicting novel microbe-disease associations.
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Accordingly, it is necessary for researchers to achieve a comprehensive and deep understanding of the associations between microbes and diseases. Nevertheless, to date, little work has been achieved in implementing novel human microbe-disease association prediction models. In this paper, we develop a novel computational model to predict potential microbe-disease associations by bi-random walk on the heterogeneous network (BiRWHMDA). The heterogeneous network was constructed by connecting the microbe similarity network and the disease similarity network via known microbe-disease associations. Microbe similarity and disease similarity were calculated by the Gaussian interaction profile kernel similarity measure; moreover, a logistic function was applied to regulate disease similarity. Additionally, leave-one-out cross validation and 5-fold cross validation were implemented to evaluate the predictive performance of our method; both cross validation methods performed well. The leave-one-out cross validation experiment results illustrate that our method outperforms other previously proposed methods. Furthermore, case studies on asthma and inflammatory bowel disease prove the favorable performance of our method. In conclusion, our method can be considered as an effective computational model for predicting novel microbe-disease associations.</abstract><cop>United States</cop><pub>Public Library of Science</pub><pmid>28880967</pmid><doi>10.1371/journal.pone.0184394</doi><tpages>e0184394</tpages><orcidid>https://orcid.org/0000-0001-9548-9010</orcidid><oa>free_for_read</oa></addata></record>
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subjects Algorithms
Asthma
Biology and Life Sciences
Case studies
Computation
Computational Biology - methods
Computer applications
Computer Simulation
Development and progression
Diagnosis
Genetic Association Studies
Genetic Predisposition to Disease - genetics
Immunology
Infection
Inflammatory bowel disease
Inflammatory bowel diseases
Information science
Intestine
Kinetics
Logistic Models
Mathematical models
Medicine and Health Sciences
Microbiota (Symbiotic organisms)
Microorganisms
Pathogenesis
Performance prediction
Physical Sciences
Physiological aspects
Prediction models
Prognosis
Random walk
Research and Analysis Methods
Risk Factors
Similarity
Streptococcus infections
Studies
title A novel approach for predicting microbe-disease associations by bi-random walk on the heterogeneous network
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