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Development of chemical isotope labeling LC-MS for tissue metabolomics and its application for brain and liver metabolome profiling in Alzheimer's disease mouse model

机译:化学同位素标记LC-MS的组织代谢物质及其在阿尔茨海默病小鼠模型中脑和肝脏代谢谱的应用

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Tissue metabolomics can play an important role in biological studies and biomarker discovery. However, high-coverage metabolome analysis of tissue samples remains a challenge. In this work, we report an analytical method for in-depth tissue metabolome profiling with highly accurate metabolite quantification. This method is based on tissue homogenization with an extraction solvent mixture of methanol, dichloromethane and water, high-performance differential chemical isotope labeling (CIL) of metabolite extracts, followed by high-resolution liquid chromatography mass spectrometry (LC-MS) detection of labeled metabolites. The method development was initially carried out using chicken liver tissue. To demonstrate the analytical performance and potential applications of this approach in real world tissue metabolomics, we examined changes in the amine/phenol submetabolome of liver and brain tissues from an Alzheimer's disease (AD) mouse model. A total of 2319 and 1769 peak pairs or amine-/phenol-containing metabolites were commonly detected in 80% of the liver samples (n = 22) and 80% of the brain samples (n = 22), respectively. In liver samples, 89 metabolites were positively identified using labeled standard library and 1063 peak pairs were putatively matched to metabolome databases, while 78 were positively identified and 753 were putatively matched in brain samples. Using multivariate and univariate analyses to study these metabolites, we observed significant metabolome differences between AD transgenic mice and wild-type mice in both liver and brain tissues, with several metabolite biomarker candidates having good discriminative power. We envisage that the CIL LC-MS method reported herein can be used in various application areas requiring in-depth analysis of tissue metabolomes. (c) 2018 Elsevier B.V. All rights reserved.
机译:组织代谢物可以在生物学研究和生物标志物发现中发挥重要作用。然而,组织样品的高覆盖代谢分析仍然是一个挑战。在这项工作中,我们报告了一种具有高精度代谢物量化的深入组织代谢分析的分析方法。该方法基于组织均质化与甲醇,二氯甲烷和水,高性能差分化学同位素标记(CIL)的代谢物提取物的组织均匀化,其次是高分辨率液相色谱质谱(LC-MS)检测标记代谢物。方法开发最初使用鸡肝组织进行。为了证明这种方法在现实世界组织代谢组织中的分析性能和潜在应用,我们从阿尔茨海默病(AD)小鼠模型中检查了肝脏和脑组织的胺/苯酚子制剂的变化。共于2319和1769峰对或含胺/含酚的代谢物,分别在80%的肝脏样品(n = 22)和80%的脑样品(n = 22)中检测。在肝脏样品中,使用标记的标准文库阳性鉴定出89个代谢物,并且1063峰对与代谢物数据库匹配,而78次鉴定,753次脑样品中匹配753。使用多变量和单变量分析来研究这些代谢物,我们观察到肝脏和脑组织中的AD转基因小鼠和野生型小鼠之间的显着代谢差异,具有良好的辨别力的代谢物生物标志物候选。我们设想本文报道的CIL LC-MS方法可用于需要对组织代谢物进行深入分析的各种应用领域。 (c)2018 Elsevier B.v.保留所有权利。

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