Characterization of gut microbial and metabolite alterations in faeces of Goto Kakizaki rats using metagenomic and untargeted metabolomic approach

In recent years, the incidence of type 2 diabetes (T2DM) has shown a rapid growth trend. Goto Kakizaki (GK) rats are a valuable model for the study of T2DM and share common glucose metabolism features with human T2DM patients. A series of studies have indicated that T2DM is associated with the gut m...

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Published inWorld journal of diabetes Vol. 14; no. 3; pp. 255 - 270
Main Authors Zhao, Jin-Dong, Sun, Min, Li, Yan, Yu, Chan-Juan, Cheng, Ruo-Dong, Wang, Si-Hai, Du, Xue, Fang, Zhao-Hui
Format Journal Article
LanguageEnglish
Published United States Baishideng Publishing Group Inc 15.03.2023
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Summary:In recent years, the incidence of type 2 diabetes (T2DM) has shown a rapid growth trend. Goto Kakizaki (GK) rats are a valuable model for the study of T2DM and share common glucose metabolism features with human T2DM patients. A series of studies have indicated that T2DM is associated with the gut microbiota composition and gut metabolites. We aimed to systematically characterize the faecal gut microbes and metabolites of GK rats and analyse the relationship between glucose and insulin resistance. To evaluate the gut microbial and metabolite alterations in GK rat faeces based on metagenomics and untargeted metabolomics. Ten GK rats (model group) and Wistar rats (control group) were observed for 10 wk, and various glucose-related indexes, mainly including weight, fasting blood glucose (FBG) and insulin levels, homeostasis model assessment of insulin resistance (HOMA-IR) and homeostasis model assessment of β cell (HOMA-β) were assessed. The faecal gut microbiota was sequenced by metagenomics, and faecal metabolites were analysed by untargeted metabolomics. Multiple metabolic pathways were evaluated based on the differential metabolites identified, and the correlations between blood glucose and the gut microbiota and metabolites were analysed. The model group displayed significant differences in weight, FBG and insulin levels, HOMA-IR and HOMA-β indexes ( < 0.05, < 0.01) and a shift in the gut microbiota structure compared with the control group. The results demonstrated significantly decreased abundances of sp. CAG:604 and ( < 0.05) and a significantly increased abundance of ( < 0.01) in the model group. A correlation analysis indicated that FBG and HOMA-IR were positively correlated with and negatively correlated with . An orthogonal partial least squares discriminant analysis suggested that the faecal metabolic profiles differed between the model and control groups. Fourteen potential metabolic biomarkers, including glycochenodeoxycholic acid, uric acid, 13(S)-hydroxyoctadecadienoic acid (HODE), N-acetylaspartate, β-sitostenone, sphinganine, 4-pyridoxic acid, and linoleic acid, were identified. Moreover, FBG and HOMA-IR were found to be positively correlated with glutathione, 13(S)-HODE, uric acid, 4-pyridoxic acid and allantoic acid and ne-gatively correlated with 3-α, 7-α, chenodeoxycholic acid glycine conjugate and 26-trihydroxy-5-β-cholestane ( < 0.05, < 0.01). was positively correlated with linoleic acid and sphinganine ( < 0.01), and 2-methyl-3-hydroxy-5-formylpyridine-4-carboxylate was negatively associated with sp. CAG:604 ( < 0.01). The metabolic pathways showing the largest differences were arginine biosynthesis; primary bile acid biosynthesis; purine metabolism; linoleic acid metabolism; alanine, aspartate and glutamate metabolism; and nitrogen metabolism. Metagenomics and untargeted metabolomics indicated that disordered compositions of gut microbes and metabolites may be common defects in GK rats.
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Author contributions: Zhao JD and Fang ZH participated in the design of the study and wrote the manuscript; Sun M, Li Y, Yu CJ, Cheng RD, Wang SH and Du X performed the experiment and helped complete the data analysis; The final version of the manuscript was reviewed and approved by all the authors.
Supported by the University Scientific Research Projects of Anhui, No. KJ2020A0401 and 2022AH050491; the open fund of the Ministry of Education Key Laboratory of Glucolipid Metabolic Disorder, No. GYDKFXM01; the Anhui University Collaborative Innovation Project, No. GXXT-2020-025; the National Natural Science Foundation of China, No. 82174153; the National Key Research and Development Program, No. 2018YFC1704202; the Anhui Provincial Quality Engineering Project of Universities, No. 2021jyxm0834; the Major and Difficult Diseases Project of Anhui Province, No. 2021zdynjb06; and the Clinical Research Project of Anhui University of Traditional Chinese Medicine, No. 2021yfylc01.
Corresponding author: Zhao-Hui Fang, PhD, Chief Doctor, Department of Endocrinology, The First Affiliated Hospital of Anhui University of Chinese Medicine, No. 117 Meishan Road, Hefei 230031, Anhui Province, China. fangzhaohui1111@163.com
ISSN:1948-9358
1948-9358
DOI:10.4239/wjd.v14.i3.255