Biomarkers and Nutrimetabolomic Laboratory, Department of Nutrition, Food Sciences and Gastronomy, XaRTA, INSA-UB, Faculty of Pharmacy and Food Sciences, University of Barcelona, Barcelona, Spain; CIBER de Fragilidad y Envejecimiento Saludable (CIBERFES), Instituto de Salud Carlos III, Barcelona, Spain.
Biomarkers and Nutrimetabolomic Laboratory, Department of Nutrition, Food Sciences and Gastronomy, XaRTA, INSA-UB, Faculty of Pharmacy and Food Sciences, University of Barcelona, Barcelona, Spain; CIBER de Fragilidad y Envejecimiento Saludable (CIBERFES), Instituto de Salud Carlos III, Barcelona, Spain.
Diabetes Metab. 2019 Apr;45(2):167-174. doi: 10.1016/j.diabet.2018.02.006. Epub 2018 Feb 20.
AIM: To characterize the urinary metabolomic fingerprint and multi-metabolite signature associated with type 2 diabetes (T2D), and to classify the population into metabotypes related to T2D. METHODS: A metabolomics analysis using the H-NMR-based, non-targeted metabolomic approach was conducted to determine the urinary metabolomic fingerprint of T2D compared with non-T2D participants in the PREDIMED trial. The discriminant metabolite fingerprint was subjected to logistic regression analysis and ROC analyses to establish and to assess the multi-metabolite signature of T2D prevalence, respectively. Metabotypes associated with T2D were identified using the k-means algorithm. RESULTS: A total of 33 metabolites were significantly different (P<0.05) between T2D and non-T2D participants. The multi-metabolite signature of T2D comprised high levels of methylsuccinate, alanine, dimethylglycine and guanidoacetate, and reduced levels of glutamine, methylguanidine, 3-hydroxymandelate and hippurate, and had a 96.4% AUC, which was higher than the metabolites on their own and glucose. Amino-acid and carbohydrate metabolism were the main metabolic alterations in T2D, and various metabotypes were identified in the studied population. Among T2D participants, those with a metabotype of higher levels of phenylalanine, phenylacetylglutamine, p-cresol and acetoacetate had significantly higher levels of plasma glucose. CONCLUSION: The multi-metabolite signature of T2D highlights the altered metabolic fingerprint associated mainly with amino-acid, carbohydrate and microbiota metabolism. Metabotypes identified in this patient population could be related to higher risk of long-term cardiovascular events and therefore require further studies. Metabolomics is a useful tool for elucidating the metabolic complexity and interindividual variation in T2D towards the development of stratified precision nutrition and medicine. Trial registration at www.controlled-trials.com: ISRCTN35739639.
目的:描绘与 2 型糖尿病(T2D)相关的尿代谢组指纹图谱和多代谢物特征,并将人群分类为与 T2D 相关的代谢表型。
方法:使用基于 H-NMR 的非靶向代谢组学方法进行代谢组学分析,以确定 PREDIMED 试验中 T2D 与非 T2D 参与者的尿代谢组指纹图谱。判别代谢指纹图谱进行逻辑回归分析和 ROC 分析,分别建立和评估 T2D 患病率的多代谢物特征。使用 k-均值算法确定与 T2D 相关的代谢表型。
结果:T2D 与非 T2D 参与者之间共有 33 种代谢物存在显著差异(P<0.05)。T2D 的多代谢物特征包括甲基琥珀酸、丙氨酸、二甲基甘氨酸和胍基乙酸盐水平升高,谷氨酰胺、甲基胍、3-羟马尿酸和 hippurate 水平降低,AUC 为 96.4%,高于单独使用代谢物和葡萄糖。氨基酸和碳水化合物代谢是 T2D 的主要代谢改变,在研究人群中确定了各种代谢表型。在 T2D 参与者中,苯丙氨酸、苯乙酰谷氨酰胺、对甲酚和乙酰乙酸盐水平较高的代谢表型者的血浆葡萄糖水平显著升高。
结论:T2D 的多代谢物特征突出了与氨基酸、碳水化合物和微生物群代谢相关的代谢指纹图谱的改变。在该患者人群中确定的代谢表型可能与更高的长期心血管事件风险相关,因此需要进一步研究。代谢组学是阐明 T2D 代谢复杂性和个体间变异性的有用工具,有助于开发分层精准营养和医学。试验在 www.controlled-trials.com 注册:ISRCTN35739639。
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