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Metabonomics-Based Study of Clinical Urine Samples in Suboptimal Health with Different Syndromes

机译:基于代谢组学的临床尿液样本与不同综合征亚健康状态研究

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Objective. To explore the urinary biochemistry features of syndromes of traditional Chinese medicine (TCM) such as syndrome of stagnation of liver Qi, spleen deficiency, liver Qi stagnation, and spleen deficiency (LSSDS) in sub-optimal health status (SHS).Methods. 12 cases for each syndrome group in SHS were selected, 12 subjects were used as a normal control group, and1H NMR detection was, respectively, carried out, and the data was corrected by the orthogonal signal correction (OSC) and then adopted a partial least squares (PLS) method for discriminate analysis.Results. The OSC-PLS (ctr) analysis results of the nuclear overhauser enhancement spectroscopy (NOESY) detection indicated that the syndromes in SHS could be differentiated, and there were significant differences in the levels of metabolites of the urine samples of the four groups; the biomarkers of LSSDS in SHS were found out. The contents of citric acid (2.54 and 2.66), trimethylamineoxide (3.26), and hippuric acid (3.98, 7.54, 7.58, 7.62, 7.66, 7.82, and 7.86) in the urine samples of LSSDS group were lower than that of the normal control group.Conclusion. There are differences in the1H-NMR metabolic spectrum of the urine samples of the four groups, and the specific metabolic products of the LSSDS in SHS can be identified from metabonomics analysis.
机译:目的。探讨中医证候(TCM)的泌尿生化特征,如肝气郁结,脾虚,肝气郁结和脾虚(LSSDS),处于次优健康状态(SHS)。方法。选择SHS的每个证候组12例,作为正常对照组,分别进行1 H NMR检测,并通过正交信号校正(OSC)校正数据,然后采用偏最小平方(PLS)方法进行区分分析。结果。 OSC-PLS(ctr)核超负荷增强光谱法(NOESY)检测的分析结果表明,SHS中的综合征可以区分,并且四组尿液样本中代谢产物的水平存在显着差异;在SHS中发现了LSSDS的生物标记。 LSSDS组尿液中的柠檬酸(2.54和2.66),三甲胺氧化物(3.26)和马尿酸(3.98、7.54、7.58、7.62、7.66、7.82和7.86)的含量低于正常对照组组。结论。四组尿液样品的1 H-NMR代谢谱存在差异,SHS中LSSDS的特定代谢产物可通过代谢组学分析确定。

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