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Hepatitis C virus infection diagnosis using metabonomics.

机译:使用代谢组学诊断丙型肝炎病毒感染。

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Metabonomics based on nuclear magnetic resonance (NMR) can reveal the profile of endogenous metabolites of low molecular weight in biofluids related to disease. The profile is identified a 'metabolic fingerprint' like from the pathological process, why this metabonomics has been used as a diagnostic method. The aim of the present study was to apply metabonomics to identify patients infected with the hepatitis C virus (HCV) through an analysis of (1)H NMR spectra of urine samples associated with multivariate statistical methods. A pilot study was carried out for the diagnostic test evaluation, involving two groups: (i) 34 patients positive for anti-HCV and HCV-RNA and negative for anti-HBc (disease group); and (ii) 32 individuals positive for anti-HBc and negative for HBsAg and anti-HCV. The urine samples were analyzed through (1)H NMR, applying principal component analysis and discriminant analysis for classification. The metabonomics model was capable of identifying 32 of the 34 patients in the disease group as positive and 31 of the 32 individuals in the control group as negative, demonstrating 94% sensitivity and specificity of 97% as well as positive and negative predictive values of 97% and 94%, respectively, and 95% accuracy (P < 0.001). In conclusion, the metabonomics model based on (1)H NMR spectra of urine samples in this preliminary study discriminated patients with HCV infection with high sensitivity and specificity, thereby demonstrating this model to be a potential tool for use in medical practice in the near future.
机译:基于核磁共振(NMR)的代谢组学可以揭示与疾病相关的生物流体中低分子量内源性代谢物的概况。就像从病理过程中一样,该特征被识别为“代谢指纹”,这就是为什么该代谢组学被用作诊断方法的原因。本研究的目的是通过结合多元统计方法对尿液样本的(1)H NMR谱进行分析,应用代谢组学方法鉴定感染丙型肝炎病毒(HCV)的患者。为诊断测试评估进行了一项初步研究,分为两组:(i)34例抗HCV和HCV-RNA阳性且抗HBc阴性的患者(疾病组); (ii)32例抗HBc阳性,而HBsAg和抗HCV阴性。尿液样本通过(1)NMR进行分析,应用主成分分析和判别分析进行分类。代谢组学模型能够将疾病组的34名患者中的32名识别为阳性,对照组中的32名患者中的31名确定为阴性,证明94%的敏感性和特异性为97%,阳性和阴性的预测值为97分别为%和94%,以及95%的准确度(P <0.001)。总之,在这项初步研究中,基于尿液样品的(1)H NMR谱建立的代谢组学模型以高敏感性和特异性区分了HCV感染患者,从而证明该模型可作为在不久的将来用于医学实践的潜在工具。

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