Supporting data for "Connections between human gut microbiome and gestational diabetes mellitus"

The human gut microbiome can modulate metabolic health and affect insulin resistance, and may play an important role in the etiology of gestational diabetes mellitus (GDM). Here, we compared the gut microbial composition of 43 GDM patients and 81 healthy pregnant women via whole-metagenome shotgun s...

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Hauptverfasser: Ya-Shu Kuang, Lu, Jin-Hua, Sheng-Hui Li, Li, Jun-Hua, Yuan, Ming-Yang, He, Jian-Rong, Nian-Nian Chen, Xiao, Wan-Qing, Shen, Song-Ying, Qiu, Lan, Wu, Ying-Fang, Cui-Yue Hu, Wu, Yan-Yan, Li, Wei-Dong, Qiao-Zhu Chen, Deng, Hong-Wen, Papasian, Christopher J, Xia, Hui-Min, Qiu, Xiu
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Sprache:eng
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Zusammenfassung:The human gut microbiome can modulate metabolic health and affect insulin resistance, and may play an important role in the etiology of gestational diabetes mellitus (GDM). Here, we compared the gut microbial composition of 43 GDM patients and 81 healthy pregnant women via whole-metagenome shotgun sequencing of their fecal samples collected at 21-29 weeks, to explore associations between GDM and the composition of microbial taxonomic units and functional genes. Metagenome-wide association study (MGWAS) identified 154,837 genes, which clustered into 129 metagenome linkage groups (MLGs) for species description, with significant relative abundance differences between the two cohorts. Parabacteroides distasonis, Klebsiella variicola, etc., were enriched in GDM patients, whereas Methanobrevibacter smithii, Alistipes spp., Bifidobacterium spp. and Eubacterium spp. were enriched in controls. The ratios of the gross abundances of GDM-enriched MLGs to control-enriched MLGs were positively correlated with blood glucose levels. Random Forest model shows fecal MLGs have excellent discriminatory power to predict GDM status.
DOI:10.5524/100326