2型糖尿病的粪便微生物组和尿液代谢组分析。

IF 2.5 4区 生物学 Q3 BIOTECHNOLOGY & APPLIED MICROBIOLOGY
Hye-Min Yi, Seok Won, Juhan Pak, Seong-Eun Park, Mi-Ri Kim, Ji-Hyun Kim, Eun-Young Park, Sun-Young Hwang, Mee-Hyun Lee, Hong-Seok Son, Suryang Kwak
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引用次数: 0

摘要

2型糖尿病是一种普遍存在的代谢紊乱,具有严重的健康后果,需要提高诊断方法和全面阐明其病理生理机制。我们比较了2型糖尿病患者与健康对照者的粪便微生物组和尿液代谢组特征,以评估其各自的诊断潜力。本研究对94名受试者(48名糖尿病患者,46名对照组)进行队列研究,采用16S rRNA扩增子测序进行粪便微生物组学分析,采用GC-MS进行尿液代谢组学分析。虽然粪便微生物组α多样性在两组之间没有显着差异,但尿代谢组学在2型糖尿病患者中显示出不同的结构模式和更高的均匀性。该研究确定了几种与糖尿病相关的尿代谢物,包括葡萄糖和肌醇水平升高,以及6种尿代谢物水平降低,包括乙醇酸、马粪酸和2-氨基乙醇。在粪便微生物组中,志贺氏杆菌属与2型糖尿病呈正相关,乳酸杆菌属与2型糖尿病呈负相关。受试者工作特征曲线分析显示,与粪便微生物组特征相比,尿液代谢物具有更好的诊断潜力,联合代谢物模型的曲线下面积为0.90,而综合细菌分类群模型的曲线下面积为0.82。这些发现表明,与粪便16S元条形码相比,尿代谢组学可能为2型糖尿病的诊断提供更可靠的方法,同时强调了多标记面板提高诊断准确性的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fecal Microbiome and Urine Metabolome Profiling of Type 2 Diabetes.

Type 2 diabetes is a prevalent metabolic disorder with serious health consequences, necessitating both enhanced diagnostic methodologies and comprehensive elucidation of its pathophysiological mechanisms. We compared fecal microbiome and urine metabolome profiles in type 2 diabetes patients versus healthy controls to evaluate their respective diagnostic potential. Using a cohort of 94 subjects (48 diabetics, 46 controls), this study employed 16S rRNA amplicon sequencing for fecal microbiome analysis and GC-MS for urinary metabolomics. While fecal microbiome alpha diversity showed no significant differences between groups, urinary metabolomics demonstrated distinct structural patterns and higher evenness in type 2 diabetes patients. The study identified several diabetes-associated urinary metabolites, including elevated levels of glucose and inositol, along with decreased levels of 6 urine metabolites including glycolic acid, hippurate, and 2-aminoethanol. In the fecal microbiome, genera such as Escherichia-Shigella showed positive correlation with type 2 diabetes, while Lacticaseibacillus demonstrated negative correlation. Receiver operating characteristic curve analyses revealed that urinary metabolites exhibited superior diagnostic potential compared to fecal microbiome features, with an area under the curve of 0.90 for the combined metabolite model versus 0.82 for the integrated bacterial taxa model. These findings suggest that urinary metabolomics may offer a more reliable approach for type 2 diabetes diagnosis compared to fecal 16S metabarcoding, while highlighting the potential of multi-marker panels for enhanced diagnostic accuracy.

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来源期刊
Journal of microbiology and biotechnology
Journal of microbiology and biotechnology BIOTECHNOLOGY & APPLIED MICROBIOLOGY-MICROBIOLOGY
CiteScore
5.50
自引率
3.60%
发文量
151
审稿时长
2 months
期刊介绍: The Journal of Microbiology and Biotechnology (JMB) is a monthly international journal devoted to the advancement and dissemination of scientific knowledge pertaining to microbiology, biotechnology, and related academic disciplines. It covers various scientific and technological aspects of Molecular and Cellular Microbiology, Environmental Microbiology and Biotechnology, Food Biotechnology, and Biotechnology and Bioengineering (subcategories are listed below). Launched in March 1991, the JMB is published by the Korean Society for Microbiology and Biotechnology (KMB) and distributed worldwide.
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