肠道菌群
生物
背景(考古学)
表型
殖民地化
脂肪变性
无菌的
微生物学
免疫学
内分泌学
细菌
殖民地化
遗传学
生物化学
基因
古生物学
作者
Laurence Daoust,Béatrice S.-Y. Choi,Anne-Laure Agrinier,Thibault Varin,Adia Ouellette,Patricia L. Mitchell,Nolwenn Samson,Geneviève Pilon,Émile Lévy,Yves Desjardins,Mathieu Laplante,Fernando F. Anhê,Vanessa P. Houde,André Marette
出处
期刊:Gut
[BMJ]
日期:2022-09-02
卷期号:72 (5): 896-905
被引量:5
标识
DOI:10.1136/gutjnl-2021-326475
摘要
Faecal microbiota transplantation (FMT) in germ-free (GF) mice is a common approach to study the causal role of the gut microbiota in metabolic diseases. Lack of consideration of housing conditions post-FMT may contribute to study heterogeneity. We compared the impact of two housing strategies on the metabolic outcomes of GF mice colonised by gut microbiota from mice treated with a known gut modulator (cranberry proanthocyanidins (PAC)) or vehicle.High-fat high-sucrose diet-fed GF mice underwent FMT-PAC colonisation in sterile individual positive flow ventilated cages under rigorous housing conditions and then maintained for 8 weeks either in the gnotobiotic-axenic sector or in the specific pathogen free (SPF) sector of the same animal facility.Unexpectedly, 8 weeks after colonisation, we observed opposing liver phenotypes dependent on the housing environment of mice. Mice housed in the GF sector receiving the PAC gut microbiota showed a significant decrease in liver weight and hepatic triglyceride accumulation compared with control group. Conversely, exacerbated liver steatosis was observed in the FMT-PAC mice housed in the SPF sector. These phenotypic differences were associated with housing-specific profiles of colonising bacterial in the gut and of faecal metabolites.These results suggest that the housing environment in which gnotobiotic mice are maintained post-FMT strongly influences gut microbiota composition and function and can lead to distinctive phenotypes in recipient mice. Better standardisation of FMT experiments is needed to ensure reproducible and translatable results.
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