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采用代谢组学和多元统计分析结合 GC-MS 技术筛选大鼠生物标志物及其动态代谢应答。

Selection and dynamic metabolic response of rat biomarkers by metabonomics and multivariate statistical analysis combined with GC-MS.

机构信息

Modern Research Center for Traditional Chinese Medicine of Shanxi University, Taiyuan 030006, PR China.

Modern Research Center for Traditional Chinese Medicine of Shanxi University, Taiyuan 030006, PR China; College of Chemistry and Chemical Engineering of Shanxi University, Taiyuan 030006, PR China.

出版信息

Pharmacol Biochem Behav. 2014 Feb;117:85-91. doi: 10.1016/j.pbb.2013.12.013. Epub 2013 Dec 16.

Abstract

Depression is a common complex psychiatric disorder but its pathophysiological mechanism is not yet fully understood. Metabonomics by GC-MS and multivariate statistical analysis were used to select potential biomarkers associated with CUMS (chronic unpredictable mild stress) depression. The dynamic metabolic changes in rat serum were investigated to find potential disease biomarkers and to investigate the pathology of depression induced by the CUMS depression model. The changes in behavior and serum metabolic profiles were investigated during a three-week CUMS exposure. Serum samples were collected on days 0, 6, 9, 12, 15 and 21, and the serum metabolic profiling was carried out using GC-MS, followed by multivariate analysis. The potential biomarkers were screened from metabolites by principal component analysis and correlation analysis. The peak area of potential biomarkers was used to identify changes in depression in rats and describe their dynamics. Exposure to CUMS for three weeks caused depression-like behavior in rats, as indicated by significant decreases in weight gain, sucrose consumption, ambulation number and rearing numbers. Six potential biomarkers in serum, including glycine (Gly), glutamic acid (Glu), fructose, citric acid, glucose and hexadecanoic acid, were subjected to screening by metabonomics and multivariate statistical analysis. It was found that fructose, glucose and Gly were increased in the model group, while hexadecanoic acid, Glu and citric acid were reduced in the model group. According to the results of principal component analysis and correlation analysis, the correlation coefficient between the behavior scores and potential biomarkers in serum were all more than 0.9. This result suggests that the progression of depression may be associated with perturbation of glycometabolism, amino acid metabolism and energy metabolism. Gly, Glu, fructose, citric acid, glucose and hexadecanoic acid appear to be suitable quantitative diagnostic biomarkers for depression. The representative and unique nature of these biomarkers needs to be verified by pharmacological experiments, including molecular pharmacology investigations of enzymes or genes.

摘要

抑郁症是一种常见的复杂精神障碍,但其病理生理机制尚未完全了解。本研究采用 GC-MS 代谢组学和多变量统计分析方法,筛选与 CUMS(慢性不可预测轻度应激)抑郁相关的潜在生物标志物。研究了大鼠血清中的动态代谢变化,以寻找潜在的疾病生物标志物,并探讨 CUMS 抑郁模型诱导的抑郁病理。在三周的 CUMS 暴露期间,观察了行为和血清代谢谱的变化。在第 0、6、9、12、15 和 21 天收集血清样本,并通过 GC-MS 进行血清代谢谱分析,然后进行多变量分析。通过主成分分析和相关分析从代谢物中筛选潜在生物标志物。使用潜在生物标志物的峰面积来识别大鼠抑郁的变化,并描述其动态。CUMS 暴露三周导致大鼠出现抑郁样行为,表现为体重增加、蔗糖消耗、活动次数和站立次数显著减少。通过代谢组学和多变量统计分析,筛选出 6 种血清中的潜在生物标志物,包括甘氨酸(Gly)、谷氨酸(Glu)、果糖、柠檬酸、葡萄糖和十六烷酸。结果发现,模型组果糖、葡萄糖和 Gly 增加,而模型组十六烷酸、Glu 和柠檬酸减少。根据主成分分析和相关分析的结果,行为评分与血清中潜在生物标志物之间的相关系数均大于 0.9。这一结果表明,抑郁的进展可能与糖代谢、氨基酸代谢和能量代谢的紊乱有关。Gly、Glu、果糖、柠檬酸、葡萄糖和十六烷酸似乎是抑郁的合适定量诊断生物标志物。这些生物标志物的代表性和独特性需要通过药理学实验来验证,包括对酶或基因的分子药理学研究。

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