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NMR-based metabolomics coupled with pattern recognition methods in biomarker discovery and disease diagnosis

机译:基于NMR的代谢组学与模式识别方法相结合的生物标志物发现和疾病诊断

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摘要

Molecular biomarkers could detect biochemical changes associated with disease processes. The key metabolites have become an important part for improving the diagnosis, prognosis, and therapy of diseases. Because of the chemical diversity and dynamic concentration range, the analysis of metabolites remains a challenge. Assessment of fluctuations on the levels of endogenous metabolites by advanced NMR spectroscopy technique combined with multivariate statistics, the so-called metabolomics approach, has proved to be exquisitely valuable in human disease diagnosis. Because of its ability to detect a large number of metabolites in intact biological samples with isotope labeling of metabolites using nuclei such as H, C, N, and P, NMR has emerged as one of the most powerful analytical techniques in metabolomics and has dramatically improved the ability to identify low concentration metabolites and trace important metabolic pathways. Multivariate statistical methods or pattern recognition programs have been developed to handle the acquired data and to search for the discriminating features from biosample sets. Furthermore, the combination of NMR with pattern recognition methods has proven highly effective at identifying unknown metabolites that correlate with changes in genotype or phenotype. The research and clinical results achieved through NMR investigations during the first 13 years of the 21st century illustrate areas where this technology can be best translated into clinical practice. In this review, we will present several special examples of a successful application of NMR for biomarker discovery, implications for disease diagnosis, prognosis, and therapy evaluation, and discuss possible future improvements.
机译:分子生物标记物可以检测与疾病过程相关的生化变化。关键代谢物已成为改善疾病的诊断,预后和治疗的重要组成部分。由于化学多样性和动态浓度范围,代谢物的分析仍然是一个挑战。通过先进的NMR光谱技术结合多变量统计(所谓的代谢组学方法)评估内源性代谢物水平的波动,在人类疾病诊断中被证明非常有价值。由于NMR具有使用H,C,N和P等原子核对代谢物进行同位素标记的能力,可以检测完整生物样品中的大量代谢物,因此NMR已成为代谢组学中最强大的分析技术之一,并且已得到了显着改进识别低浓度代谢物并追踪重要代谢途径的能力。已经开发了多元统计方法或模式识别程序来处理获取的数据并从生物样本集中搜索区分特征。此外,已证明将NMR与模式识别方法相结合可有效地鉴定与基因型或表型变化相关的未知代谢物。在21世纪的前13年中,通过NMR研究获得的研究和临床结果表明,该技术可以最好地转化为临床实践。在这篇综述中,我们将介绍NMR成功应用于生物标志物发现,对疾病诊断,预后和治疗评估的意义的几个特殊示例,并讨论未来可能的改进。

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