Laboratory of Metabolism, Center for Cancer Research, National Cancer Institute, National Institutes of Health, Bethesda, Maryland 20892, USA.
J Biol Chem. 2011 Jun 3;286(22):19511-22. doi: 10.1074/jbc.M111.221739. Epub 2011 Apr 12.
To enhance understanding of the metabolic indicators of type 2 diabetes mellitus (T2DM) disease pathogenesis and progression, the urinary metabolomes of well characterized rhesus macaques (normal or spontaneously and naturally diabetic) were examined. High-resolution ultra-performance liquid chromatography coupled with the accurate mass determination of time-of-flight mass spectrometry was used to analyze spot urine samples from normal (n = 10) and T2DM (n = 11) male monkeys. The machine-learning algorithm random forests classified urine samples as either from normal or T2DM monkeys. The metabolites important for developing the classifier were further examined for their biological significance. Random forests models had a misclassification error of less than 5%. Metabolites were identified based on accurate masses (<10 ppm) and confirmed by tandem mass spectrometry of authentic compounds. Urinary compounds significantly increased (p < 0.05) in the T2DM when compared with the normal group included glycine betaine (9-fold), citric acid (2.8-fold), kynurenic acid (1.8-fold), glucose (68-fold), and pipecolic acid (6.5-fold). When compared with the conventional definition of T2DM, the metabolites were also useful in defining the T2DM condition, and the urinary elevations in glycine betaine and pipecolic acid (as well as proline) indicated defective re-absorption in the kidney proximal tubules by SLC6A20, a Na(+)-dependent transporter. The mRNA levels of SLC6A20 were significantly reduced in the kidneys of monkeys with T2DM. These observations were validated in the db/db mouse model of T2DM. This study provides convincing evidence of the power of metabolomics for identifying functional changes at many levels in the omics pipeline.
为了深入了解 2 型糖尿病(T2DM)发病机制和进展的代谢指标,我们对特征明确的恒河猴(正常或自发性、自然发生的糖尿病)的尿液代谢组进行了研究。采用高分辨率超高效液相色谱结合飞行时间质谱精确质量测定法,分析了 10 只正常(n=10)和 11 只 T2DM(n=11)雄性猴子的点尿样本。随机森林机器学习算法将尿液样本分为正常或 T2DM 猴子。对用于开发分类器的重要代谢物进行了进一步研究,以确定其生物学意义。随机森林模型的分类错误小于 5%。基于精确质量(<10 ppm)鉴定了代谢物,并通过对纯化合物的串联质谱进行了验证。与正常组相比,T2DM 组尿液中显著增加(p<0.05)的化合物包括甜菜碱(9 倍)、柠檬酸(2.8 倍)、犬尿氨酸(1.8 倍)、葡萄糖(68 倍)和哌啶酸(6.5 倍)。与 T2DM 的传统定义相比,这些代谢物也可用于定义 T2DM 状态,并且尿液中甜菜碱和哌啶酸(以及脯氨酸)的升高表明 SLC6A20 介导的肾脏近端小管中的重吸收缺陷,SLC6A20 是一种 Na(+)-依赖性转运体。T2DM 猴子肾脏中 SLC6A20 的 mRNA 水平显著降低。这些观察结果在 T2DM 的 db/db 小鼠模型中得到了验证。本研究为代谢组学在多个层面上识别功能变化的能力提供了令人信服的证据。