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Zeng, F.* ; Su, X.* ; Liang, X.* ; Liao, M. ; Zhong, H.* ; Xu, J.* ; Gou, W.* ; Zhang, X.* ; Shen, L.* ; Zheng, J.S.* ; Chen, Y.M.*

Gut microbiome features and metabolites in non-alcoholic fatty liver disease among community-dwelling middle-aged and older adults.

BMC Med. 22:104 (2024)
Publ. Version/Full Text DOI PMC
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BACKGROUND: The specific microbiota and associated metabolites linked to non-alcoholic fatty liver disease (NAFLD) are still controversial. Thus, we aimed to understand how the core gut microbiota and metabolites impact NAFLD. METHODS: The data for the discovery cohort were collected from the Guangzhou Nutrition and Health Study (GNHS) follow-up conducted between 2014 and 2018. We collected 272 metadata points from 1546 individuals. The metadata were input into four interpretable machine learning models to identify important gut microbiota associated with NAFLD. These models were subsequently applied to two validation cohorts [the internal validation cohort (n = 377), and the prospective validation cohort (n = 749)] to assess generalizability. We constructed an individual microbiome risk score (MRS) based on the identified gut microbiota and conducted animal faecal microbiome transplantation experiment using faecal samples from individuals with different levels of MRS to determine the relationship between MRS and NAFLD. Additionally, we conducted targeted metabolomic sequencing of faecal samples to analyse potential metabolites. RESULTS: Among the four machine learning models used, the lightGBM algorithm achieved the best performance. A total of 12 taxa-related features of the microbiota were selected by the lightGBM algorithm and further used to calculate the MRS. Increased MRS was positively associated with the presence of NAFLD, with odds ratio (OR) of 1.86 (1.72, 2.02) per 1-unit increase in MRS. An elevated abundance of the faecal microbiota (f__veillonellaceae) was associated with increased NAFLD risk, whereas f__rikenellaceae, f__barnesiellaceae, and s__adolescentis were associated with a decreased presence of NAFLD. Higher levels of specific gut microbiota-derived metabolites of bile acids (taurocholic acid) might be positively associated with both a higher MRS and NAFLD risk. FMT in mice further confirmed a causal association between a higher MRS and the development of NAFLD. CONCLUSIONS: We confirmed that an alteration in the composition of the core gut microbiota might be biologically relevant to NAFLD development. Our work demonstrated the role of the microbiota in the development of NAFLD.
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Publication type Article: Journal article
Document type Scientific Article
Keywords 16s Rrna Gene Sequence ; Gut Metabolites ; Gut Microbiota Feature ; Machine Learning Algorithms ; Non-alcoholic Fatty Liver Disease; Bile-acid Metabolism; Modulation; Diet
Language english
Publication Year 2024
HGF-reported in Year 2024
ISSN (print) / ISBN 1741-7015
e-ISSN 1741-7015
Journal BMC Medicine
Quellenangaben Volume: 22, Issue: 1, Pages: , Article Number: 104 Supplement: ,
Publisher Bmc
Publishing Place Campus, 4 Crinan St, London N1 9xw, England
Reviewing status Peer reviewed
Institute(s) Institute of Epidemiology (EPI)
POF-Topic(s) 30202 - Environmental Health
Research field(s) Genetics and Epidemiology
PSP Element(s) G-504000-001
Grants Guangdong Basic and Applied Basic Research Foundation
Scopus ID 85187116999
PubMed ID 38454425
Erfassungsdatum 2024-04-30