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Use of the Local False Discovery Rate for Identification of Metabolic Biomarkers in Rat Urine Following Genkwa Flos-Induced Hepatotoxicity

机译:Genkwa Flos诱导的肝毒性后大鼠尿液中代谢物生物标志物的局部错误发现率的使用。

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摘要

Metabolomics is concerned with characterizing the large number of metabolites present in a biological system using nuclear magnetic resonance (NMR) and HPLC/MS (high-performance liquid chromatography with mass spectrometry). Multivariate analysis is one of the most important tools for metabolic biomarker identification in metabolomic studies. However, analyzing the large-scale data sets acquired during metabolic fingerprinting is a major challenge. As a posterior probability that the features of interest are not affected, the local false discovery rate (LFDR) is a good interpretable measure. However, it is rarely used to when interrogating metabolic data to identify biomarkers. In this study, we employed the LFDR method to analyze HPLC/MS data acquired from a metabolomic study of metabolic changes in rat urine during hepatotoxicity induced by Genkwa flos (GF) treatment. The LFDR approach was successfully used to identify important rat urine metabolites altered by GF-stimulated hepatotoxicity. Compared with principle component analysis (PCA), LFDR is an interpretable measure and discovers more important metabolites in an HPLC/MS-based metabolomic study.
机译:代谢组学与利用核磁共振(NMR)和HPLC / MS(高效液相色谱质谱联用)表征生物系统中存在的大量代谢物有关。多元分析是代谢组学研究中代谢生物标志物鉴定的最重要工具之一。然而,分析在代谢指纹识别过程中获得的大规模数据集是一个重大挑战。作为关注特征不受影响的后验概率,本地错误发现率(LFDR)是一个很好的可解释性度量。但是,在查询代谢数据以识别生物标志物时很少使用它。在这项研究中,我们采用LFDR方法分析了从Genkwa flos(GF)诱导的肝毒性过程中大鼠尿液代谢变化的代谢组学研究获得的HPLC / MS数据。 LFDR方法已成功用于鉴定由GF刺激的肝毒性改变的重要大鼠尿液代谢产物。与主成分分析(PCA)相比,LFDR是一种可解释的方法,可在基于HPLC / MS的代谢组学研究中发现更多重要的代谢物。

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