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Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis

Comprehensive analyses of multi-omics data may provide insights into interactions between different biological layers concerning distinct clinical features. We integrated data on the gut microbiota, blood parameters and urine metabolites of treatment-naive individuals presenting a wide range of meta...

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Autores principales: Li, Rui-Jun, Jie, Zhu-Ye, Feng, Qiang, Fang, Rui-Ling, Li, Fei, Gao, Yuan, Xia, Hui-Hua, Zhong, Huan-Zi, Tong, Bin, Madsen, Lise, Zhang, Jia-Hao, Liu, Chun-Lei, Xu, Zhen-Guo, Wang, Jian, Yang, Huan-Ming, Xu, Xun, Hou, Yong, Brix, Susanne, Kristiansen, Karsten, Yu, Xin-Lei, Jia, Hui-Jue, He, Kun-Lun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Frontiers Media S.A. 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8529068/
https://www.ncbi.nlm.nih.gov/pubmed/34692558
http://dx.doi.org/10.3389/fcimb.2021.708088
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author Li, Rui-Jun
Jie, Zhu-Ye
Feng, Qiang
Fang, Rui-Ling
Li, Fei
Gao, Yuan
Xia, Hui-Hua
Zhong, Huan-Zi
Tong, Bin
Madsen, Lise
Zhang, Jia-Hao
Liu, Chun-Lei
Xu, Zhen-Guo
Wang, Jian
Yang, Huan-Ming
Xu, Xun
Hou, Yong
Brix, Susanne
Kristiansen, Karsten
Yu, Xin-Lei
Jia, Hui-Jue
He, Kun-Lun
author_facet Li, Rui-Jun
Jie, Zhu-Ye
Feng, Qiang
Fang, Rui-Ling
Li, Fei
Gao, Yuan
Xia, Hui-Hua
Zhong, Huan-Zi
Tong, Bin
Madsen, Lise
Zhang, Jia-Hao
Liu, Chun-Lei
Xu, Zhen-Guo
Wang, Jian
Yang, Huan-Ming
Xu, Xun
Hou, Yong
Brix, Susanne
Kristiansen, Karsten
Yu, Xin-Lei
Jia, Hui-Jue
He, Kun-Lun
author_sort Li, Rui-Jun
collection PubMed
description Comprehensive analyses of multi-omics data may provide insights into interactions between different biological layers concerning distinct clinical features. We integrated data on the gut microbiota, blood parameters and urine metabolites of treatment-naive individuals presenting a wide range of metabolic disease phenotypes to delineate clinically meaningful associations. Trans-omics correlation networks revealed that candidate gut microbial biomarkers and urine metabolite feature were covaried with distinct clinical phenotypes. Integration of the gut microbiome, the urine metabolome and the phenome revealed that variations in one of these three systems correlated with changes in the other two. In a specific note about clinical parameters of liver function, we identified Eubacteriumeligens, Faecalibacteriumprausnitzii and Ruminococcuslactaris to be associated with a healthy liver function, whereas Clostridium bolteae, Tyzzerellanexills, Ruminococcusgnavus, Blautiahansenii, and Atopobiumparvulum were associated with blood biomarkers for liver diseases. Variations in these microbiota features paralleled changes in specific urine metabolites. Network modeling yielded two core clusters including one large gut microbe-urine metabolite close-knit cluster and one triangular cluster composed of a gut microbe-blood-urine network, demonstrating close inter-system crosstalk especially between the gut microbiome and the urine metabolome. Distinct clinical phenotypes are manifested in both the gut microbiome and the urine metabolome, and inter-domain connectivity takes the form of high-dimensional networks. Such networks may further our understanding of complex biological systems, and may provide a basis for identifying biomarkers for diseases. Deciphering the complexity of human physiology and disease requires a holistic and trans-omics approach integrating multi-layer data sets, including the gut microbiome and profiles of biological fluids. By studying the gut microbiome on carotid atherosclerosis, we identified microbial features associated with clinical parameters, and we observed that groups of urine metabolites correlated with groups of clinical parameters. Combining the three data sets, we revealed correlations of entities across the three systems, suggesting that physiological changes are reflected in each of the omics. Our findings provided insights into the interactive network between the gut microbiome, blood clinical parameters and the urine metabolome concerning physiological variations, and showed the promise of trans-omics study for biomarker discovery.
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spelling pubmed-85290682021-10-22 Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis Li, Rui-Jun Jie, Zhu-Ye Feng, Qiang Fang, Rui-Ling Li, Fei Gao, Yuan Xia, Hui-Hua Zhong, Huan-Zi Tong, Bin Madsen, Lise Zhang, Jia-Hao Liu, Chun-Lei Xu, Zhen-Guo Wang, Jian Yang, Huan-Ming Xu, Xun Hou, Yong Brix, Susanne Kristiansen, Karsten Yu, Xin-Lei Jia, Hui-Jue He, Kun-Lun Front Cell Infect Microbiol Cellular and Infection Microbiology Comprehensive analyses of multi-omics data may provide insights into interactions between different biological layers concerning distinct clinical features. We integrated data on the gut microbiota, blood parameters and urine metabolites of treatment-naive individuals presenting a wide range of metabolic disease phenotypes to delineate clinically meaningful associations. Trans-omics correlation networks revealed that candidate gut microbial biomarkers and urine metabolite feature were covaried with distinct clinical phenotypes. Integration of the gut microbiome, the urine metabolome and the phenome revealed that variations in one of these three systems correlated with changes in the other two. In a specific note about clinical parameters of liver function, we identified Eubacteriumeligens, Faecalibacteriumprausnitzii and Ruminococcuslactaris to be associated with a healthy liver function, whereas Clostridium bolteae, Tyzzerellanexills, Ruminococcusgnavus, Blautiahansenii, and Atopobiumparvulum were associated with blood biomarkers for liver diseases. Variations in these microbiota features paralleled changes in specific urine metabolites. Network modeling yielded two core clusters including one large gut microbe-urine metabolite close-knit cluster and one triangular cluster composed of a gut microbe-blood-urine network, demonstrating close inter-system crosstalk especially between the gut microbiome and the urine metabolome. Distinct clinical phenotypes are manifested in both the gut microbiome and the urine metabolome, and inter-domain connectivity takes the form of high-dimensional networks. Such networks may further our understanding of complex biological systems, and may provide a basis for identifying biomarkers for diseases. Deciphering the complexity of human physiology and disease requires a holistic and trans-omics approach integrating multi-layer data sets, including the gut microbiome and profiles of biological fluids. By studying the gut microbiome on carotid atherosclerosis, we identified microbial features associated with clinical parameters, and we observed that groups of urine metabolites correlated with groups of clinical parameters. Combining the three data sets, we revealed correlations of entities across the three systems, suggesting that physiological changes are reflected in each of the omics. Our findings provided insights into the interactive network between the gut microbiome, blood clinical parameters and the urine metabolome concerning physiological variations, and showed the promise of trans-omics study for biomarker discovery. Frontiers Media S.A. 2021-10-07 /pmc/articles/PMC8529068/ /pubmed/34692558 http://dx.doi.org/10.3389/fcimb.2021.708088 Text en Copyright © 2021 Li, Jie, Feng, Fang, Li, Gao, Xia, Zhong, Tong, Madsen, Zhang, Liu, Xu, Wang, Yang, Xu, Hou, Brix, Kristiansen, Yu, Jia and He https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.
spellingShingle Cellular and Infection Microbiology
Li, Rui-Jun
Jie, Zhu-Ye
Feng, Qiang
Fang, Rui-Ling
Li, Fei
Gao, Yuan
Xia, Hui-Hua
Zhong, Huan-Zi
Tong, Bin
Madsen, Lise
Zhang, Jia-Hao
Liu, Chun-Lei
Xu, Zhen-Guo
Wang, Jian
Yang, Huan-Ming
Xu, Xun
Hou, Yong
Brix, Susanne
Kristiansen, Karsten
Yu, Xin-Lei
Jia, Hui-Jue
He, Kun-Lun
Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title_full Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title_fullStr Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title_full_unstemmed Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title_short Network of Interactions Between Gut Microbiome, Host Biomarkers, and Urine Metabolome in Carotid Atherosclerosis
title_sort network of interactions between gut microbiome, host biomarkers, and urine metabolome in carotid atherosclerosis
topic Cellular and Infection Microbiology
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8529068/
https://www.ncbi.nlm.nih.gov/pubmed/34692558
http://dx.doi.org/10.3389/fcimb.2021.708088
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