Abstract

Metabolomics is a powerful new technology that allows the assessment of global low-molecular-weight metabolites in a biological system and which shows great potential in biomarker discovery. Analysis of the key metabolites in body fluids has become an important part of improving the diagnosis, prognosis, and therapy of diseases. Hepatitis C virus (HCV) is a major leading cause of liver disease worldwide and a serious burden on public health. However, the lack of a small-animal model has hampered the analysis of HCV pathogenesis. We hypothesize that an animal model (Tupaia belangeri chinensis) of HCV would produce a unique characterization of metabolic phenotypes. Ultra-performance liquid-chromatography/electrospray ionization-SYNAPT-high-definition mass spectrometry (UPLC/ESI-SYNAPT-HDMS) coupled with pattern recognition methods and system analysis was carried out to obtain comprehensive metabolomics profiling and pathways of large biological data sets. Taurine, hypotaurine, ether lipid, glycerophospholipid, arachidonic acid, tryptophan, and primary bile acid metabolism pathways were acutely perturbed, and 38 differential metabolites were identified. More important, five metabolite markers were selected via the "significance analysis for microarrays" method as the most discriminant and interesting biomarkers that were effective for the diagnosis of HCV. Network construction has led to the integration of metabolites associated with the multiple perturbation pathways. Integrated network analysis of the key metabolites yields highly related signaling pathways associated with the differentially expressed proteins, which suggests that the creation of new treatment paradigms targeting and activating these networks in their entirety, rather than single proteins, might be necessary for controlling and treating HCV efficiently.

Highlights

  • From the §National TCM Key Lab of Serum Pharmacochemistry and Key Pharmacometabolomics Platform of Chinese Medicines, Heilongjiang University of Chinese Medicine, Heping Road 24, Harbin 150040, China; ¶Zhongkaitao Biotechnology Co., Ltd., Guangzhou 510000 China

  • The stable Basic Peak Intensity (BPI) profiles reflected the stability of Ultra-performance liquid-chromatography (UPLC)-high-definition mass spectrometry (HDMS) analysis and the reliability of the metabolomic data

  • The principal components analysis (PCA) score plots showed that the metabolic profiles of the control and model groups significantly changed as a result of hepatitis C virus (HCV) infection (Figs. 1A and 2A)

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Summary

Introduction

From the §National TCM Key Lab of Serum Pharmacochemistry and Key Pharmacometabolomics Platform of Chinese Medicines, Heilongjiang University of Chinese Medicine, Heping Road 24, Harbin 150040, China; ¶Zhongkaitao Biotechnology Co., Ltd., Guangzhou 510000 China. Metabolomics attempts to capture global changes and overall physiological status in biochemical networks and pathways in order to elucidate sites of perturbations, and it has shown great promise as a means to identify biomarkers of disease (10 –13). It enables the parallel assessment of a broad range of endogenous metabolites and has a great impact in the investigation of physiological status, the discovery of biomarkers, disease diagnosis, and the identification of perturbed pathways due to disease or treatment [14, 15]. The present study was meant to identify the low-molecular-weight metabolites and pathways of HCV infection in tree shrews via the use of multivariate statistical data reduction tools

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