Urine metabolic profiling analysis revealed altered metabolic pathways in anaphylactic animals发表时间:2023-08-24 11:37
Urine metabolic profiling analysis revealed altered metabolic pathways in anaphylactic animals Peng Liu 1,2,3,Xincong Kang1,2,3#,Xia Hu2,3,Shanqing Pan4,Junge Liu3,Jian Kang5, Hongqi Xie1,2,3,Yunlin Wei6,Xiuling Ji6,Menghui Zhang7*, Dongbo Liu 1,2,3* 1Hunan Provincial Key Laboratory of Crop Germplasm Innovation and Utilization, Hunan Agricultural University, Changsha, Hunan, China; 2State Key Laboratory of Subhealth Intervention Technology, Changsha, Hunan, China; 3Hunan Agricultural University, Changsha, Hunan, China; 4Hunan Research Center for Safety Evaluation of Drug, Changsha, Hunan, China; 5Department of Dermatology, The Third Xiangya Hospital of Central South University, Changsha, Hunan, China; 6Kunming University of Science and Technology, Kunming, China; 7State Key Laboratory of Microbial Metabolism, Shanghai Jiao Tong University, Shanghai, China Running Head: Urine metabolic profiling analysis of anaphylactic animals Chronic Disease Management and Subhealth Intervention 2014; Vol 1:1-13 * Corresponding authors: Prof. Dongbo Liu, Hunan Agricultural University, Changsha, Hunan, China Tel: 86-731-84635293; Fax: 86-731-84635293; E-mail: chinasaga@163.com Prof. Menghui Zhang, Shanghai Jiao Tong University, Shanghai, China Tel: 86-21-34204878; Fax: 86-21-34204878; E-mail: mhzhang@sjtu.edu.cn #Liu and Kang contributed equally to the article. Financial This is an open-access article distributed under the terms of the International Standard Serial Number (2373-2806) and the International Union for Difficult-to-treat-Diseases (www/iudd.org). Reproduction is permitted for personal, noncommercial use, provided that the article is in whole, unmodified, and properly cited. Received: 09/25/2014; Accepted: 10/10/2014; Published: 10/15/2014. Abstract Routine diagnostic methods of anaphylaxis are usually based on history and physical exam with poor sensitivity and specificity, which challenge the identification and appropriate management of anaphylaxis. The application of metabolomics holds great potential for anaphylaxis diagnosis due to its high sensitivity and the ability to quantitatively measure the entire composition of metabolites. In this study, urine metabolic profiling was investigated to figure out altered metabolic pathways in anaphylactic animals by using Gas Chromatography-Mass Spectrometry (GC-MS). Principal Component Analysis (PCA) displayed obvious separation between the control group and two model groups (cattle albumin group and ovalbumin group). Two-group Partial Least Squares discriminant analysis (PLS-DA) supplemented with Martens’ uncertainty revealed twenty-two tentatively identified metabolites significantly different between control group and both model groups. The biological significance of these metabolites obtained from Kyoto Encyclopedia of Genes and Genomes (KEGG) revealed abnormal energy consumption of model groups in carbohydrate metabolism, lipid metabolism and amino acid metabolism. Moreover, the immune response modifications of cholesterol and benzene derivates were implied in the model groups. As a conclusion, urine metabolomic profiling would be a potential optimized tool to build metabolic probe library for anaphylaxis diagnosis and management. Keywords: Urine metabolic profiling; anaphylaxis; gas chromatography-mass spectrometry; energy metabolism; immune response Introduction Anaphylaxis is “a severe, life-threatening generalized or systemic hypersensitivity reaction” [1]. Its prevalence is as high as 2%, and appears to be rising, particularly in the younger age group [2-4]. Routine diagnostic methods of anaphylaxis are usually based on history and physical exam with little sensitivity and specificity, which challenge the identification and appropriate management of anaphylaxis [5]. Metabolomics provides an overview of the dynamic metabolic status of the organism and yield new biomarkers which can be a clinic tool for diagnosis of disease [6]. Studies regarding asthma [7,8] have established discriminate model subjects from healthy populations and uncovered some potential disease-relevant biomarkers. The application of metabolomics holds great potential for diagnosis of anaphylaxis due to its high sensitivity and the ability to quantitatively measure the entire composition of metabolites in animal models [9]. Small-molecule metabolites play an important role in understanding disease phenotypes in metabolomics investigation [10]. Analysis of small-molecule metabolite profiling in body fluids, involving serum, urine, saliva, et al [11-13], is prevalently applied in diagnosing and monitoring the state of biological organisms [14,15]. Urine, because of its superiorities of less complex, ease of collection, metabolite-rich, higher thermodynamic stability and less intermolecular interaction comparing to other body fluids [16-18], is becoming increasingly popular in metabolomics experiments. Furthermore, metabolic profiling of urine provides a fingerprint of personalized endogenous metabolite markers that correlate to a number of factors such as gender, disease, diet, toxicity, medication and age [19]. Thus monitoring certain metabolite levels in urine has become an important way to detect early stages in disease, such as urological cancer [20], breast cancer [21,22] and especially in kidney disease [23]. However, there is no report of urine metabolomics analysis of anaphylaxis available. Therefore, the aim of this study was to figure out urine metabolic profiling to identify potential biomarkers of anaphylaxis for clinical diagnosis and appropriate monitoring of anaphylaxis. Materials and Methods Chemicals All of the compounds and reagents were analytical grade and purchased from Sigma, except where stated otherwise. Urease (Cout: 5KU; Activity: 208U·mg-1), N, O-bis (Trimethylsilyl) trifluoroacetamide (BSTFA) and 1 % trimethylchlorosilane (TMCS) were purchased from Tokyo Chemical Industry (Tokyo, Japan). Reference standards (L-arabinitol, cholesterol, glucose, myo-inositol, fumaric acid, octadecanoic acid,L-ascorbic acid), hydrochloride and pyridine (silylation-grade) were obtained from Aladdin Chemistry (Shanghai, China). Acetonitrile (HPLC-grade) was from Sinopharm Chemic Reagent (Shanghai, China). Ultrapure water was produced by a Milli-Q Reagent Water System (Millipore, USA). Animal sensitization and sampling All guinea pigs (300-350g) were randomly divided into control group (n = 12, untreated, nonsensitized), ovalbumin group (n=12, guinea pigs sensitized to 0.1mg·mL−1 intraperitoneal ovalbumin) and cattle albumin group (n=12, guinea pigs sensitized to 100mg·mL−1 intraperitoneal cattle albumin). Animals in the model groups (ovalbumin and cattle albumin groups) were sensitized intraperitoneally with the corresponding allergen on the 1st, 3rd, and 5th days. Then the sensitized guinea pigs were challenged by intravenous injection with ovalbumin (0.1mg·mL−1) or cattle albumin (100mg·mL−1), respectively, on the 14th day [9]. Urine samples were collected on the 21th day after the first sensitization. Twenty-eight samples were collected with two (one in control and one in ovalbumin group) sampling failed. All samples were stored in aliquots at −80℃ until analysis. Ethics Statement This study was carried out in strict accordance with the recommendations in the guide for the Care and Use of Laboratory Animals of Hunan Provincial Institute for Drug Control (HPIDC). The protocol was approved by Laboratory Sample pretreatment and derivatization All samples were thawed at 4℃ and vortex-mixed. Each 100μL aliquot urine sample was mixed with 35μL urease solution (10 mg·mL-1), kept in a thermostatically controlled water bath (30 ℃) to hydrolyze urea. After adding 265μL icy acetonitrile to deprotein, samples were vortex mixed and centrifugated (12,000rpm, 15min, 4℃). Supernatant (100μL) was transferred into a GC vial and evaporated to dryness with nitrogen by using SE812 pressured gas-blowing concentrators (Shuaien technology Co., Ltd., Beijing, China). Oximation was conducted by adding methoxyamine hydrochloride (20mg·mL-1, 25μL) dissolved in dry pyridine, vortex mixed for 5 min, incubated at 40℃ for 90min. Silylation were performed by mixed 25μL BSTFA with 1% TMCS and incubated at 70℃ for 60min. The standard solutions were derived following the protocol of samples [9]. GC-MS method Samples (1μL) were injected into an Agilent QP2010 GC system (Shimadzu, Japan) equipped with a DB5-MS column (30m × 0.25mm × 0.1μm film). Helium was used as carrier gas at a flow rate of 0.8 mL·min-1. The split ratio is 20:1. The oven temperature increased from 60℃ to 85℃ at a rate of 2.5℃/min and from 85℃ to 280℃ at a rate of 9℃/min and then held at 280℃ for 4 min. The detector operated in the scan mode from 60m/z to 650m/z. The injector temperature, ion-source temperature and interface temperature were 280℃, 230℃ and 250℃, respectively [9]. Date extraction and statistical analysis Pretreatment of raw data included filtering, peak detection, deconvolution, peak alignment and normalization. The metabolite peaks were identified from their ion ratios and retention times on the base of matching percentage by using National Institute of Standards and Technology (NIST) mass spectrum database or reference standards detected in the same conditions. To further interpret the biological significance of these metabolites associated with anaphylaxis, Kyoto Encyclopedia of Genes and Genomes (KEGG) (http://www.genome.jp/kegg/) database was applied to link them to metabolic pathways. Principal Component Analysis (PCA), Partial Least Squares discriminant analysis (PLS-DA) and Martens’ uncertainty test were performed using built-in or in-house programs under the MATLAB® environment [24]. PERMANOVA used “adonis” function of package “vegan” in R (http://r-forge.r-project.org/projects/vegan/). Results Metabolomic analysis revealed twenty-two variables different between control and model groups Anaphylaxis models expressed typical clinical symptoms of anaphylaxis(nose rubbing, coughing, wheezing, death et al)and high IgE level in serum after challenge with allergen [9], interpreting successful model establishment. Among 28 samples, a total of 712 aligned individuals peaks (variables) were tentatively identified from GC-MS ion chromatograms of urine based on NIST mass spectra library (Table S 1, not shown). PCA displayed obvious separation between the control group and two model groups, whereas the two model groups were partially overlapped (Fig.1). Application of PERMANOVA [25] with 9999 permutations on the data obtained a p value less than 0.001, indicating the significance of the group separation inside the data ( R package, adonis {vegan}). To identify the important variables contributing to the group separation, two-group PLS-DA supplemented with Martens’ uncertainty was applied [26,27] to the three groups respectively. The former was for discriminant modeling and the latter was for searching important discriminant variables. The result showed that 61 variables (Table S 2; not shown) were significantly different between control group and cattle albumin group while 99 variables (Table S 3; not shown) differed between control group and ovalbumin group. Twenty-two tentatively identified metabolites (Table 1) were found identical in these two variable sets. Among them, four were increased, namely glycerol, phosphoric acid, galactaric acid and 3-hydroxypregn-5-en-20-one hydrazone, while the others decreased. Figure 1. Loading from Table 1 Twenty-two metabolites different between control group and both model groups in PLS-DA analysis No Metabolite Cattle-albumin/control Ovalbumin/control Pathway
表 1. PLS-DA分析获得的22种共同代谢标记物 序号代谢物 牛血清蛋白组/对照组 卵蛋白组/对照组 通路
Thirty-seven diverse variables were detected between cattle albumin group and ovalbumin group As observed, 116 variables were significantly different between control group and either model group (61 variables between control group and cattle albumin group while 99 variables between control group and ovalbumin group, with 22 shared variables removed). Ninety-five variables differed between cattle albumin group and ovalbumin group by PLS-DA analysis. The 95 variables compared with the 116 variables, thirty-seven variables were found identical (Fig. 2, Table S 4; not shown) [28]. Fig. 2 Venn diagram of diverse variables distributed in three comparisons (http://bioinfogp.cnb.csic.es/tools/venny/index.html). List 1 blue: different variables between control group and cattle albumin group List 2 yellow: different variables between control group and ovalbumin group List 3 green: different variables between cattle albumin group and ovalbumin group Twenty-two variables were shared by “List1” and “List2”. Thirty-seven diverse variables were detected with 15 variables shared by “List 1” and “List 3” and 22 variables shared by “List 2” and “List 3”. Tentatively identified metabolites were confirmed with the aid of reference standards Four out of 22 tentatively identified metabolites and 3 out of 37 tentatively identified metabolites were further identified by comparing the retention time and ion ratios with available reference standards, namely L-arabinitol, glucose, myo-inositol, cholesterol, octadecanoic acid, fumaric acid, L-ascorbic acid (Table 2), consequently confirmed the results based on NIST mass spectra library. Table 2 Metabolites identified with reference standards by retention time and ion ratios Retention time Ion ratios Sample/standards 23.30773/147/205/319Glucose 21.19073/103/147/205L-arabinitol 30.54243/121/145/353/368Cholesterol 25.36773/147/191/217/305Myo-inositol 26.86773/117/132/341Octadecanoic acid 23.21773/147/245Fumaric acid 23.02573/117/147/205/274L-ascorbic acid Function analysis linked anaphylaxis to energy consumption Information about biological function and involved pathways of the 22 selected metabolites which were obtained from the KEGG database implied to potential biomarkers of anaphylaxis. As shown in Table 1, glucose, 1,3-dyhydroxyl-benzene, myo-inositol, arabinitol, gluconic acid-6-phosphate, 5-hydroxyindole, benzeneacetic acid and cholesterol were decreased while glycerol, phosphoric acid, galactaric acid were increased in model groups. They were mainly related to carbohydrate metabolism, energy metabolism, lipid metabolism and amino acid metabolism with a ratio of 67% (Fig.3). Fig. 3. The function classification of 22 tentatively identified metabolites with differences between control group and both model groups in KEGG (red): carbohydrate metabolism; yellow: energy metabolism; green: lipid metabolism; blue: amino acid metabolism; brown: metabolism of cofactors and vitamins; pink: biosynthesis of other secondary metabolites; black: xenobiotics biodegradation and metabolism). Discussion In this study, anaphylaxis animal models were discriminated from the control in PCA analysis of GC-MS urinary metabolite spectra (Fig.1A and Fig.1B). The GC–MS method was validated by measuring repeatability (RSD<10 %) of seven tentatively identified metabolites, which were confirmed with the aid of reference standards (Table 2). Twenty-two potential biomarkers were observed significantly different between control group and both model groups, and the disturbed metabolic pathway (Fig.4) revealed abnormal energy consumption of model groups in carbohydrate metabolism, lipid metabolism and amino acid metabolism. Figure 4. Schematic diagram illustrating the most predominant disturbed metabolic pathways and the biochemical linkages among the biomarkers.
Anaphylaxis is an acute multisystem syndrome with sudden energy expenditure with carbohydrates as the first source of energy. Five of the 22 identified metabolites, including glucose, L-arabinitol, myo-inositol, galactaric acid, gluconic acid-6-phosphate, were related with carbohydrate metabolism. Among them, glucose, L-arabinitol, myo-inositol and gluconic acid-6-phosphate were used as substrates in glycolysis or tricarboxylic acid cycle and found decreased during anaphylaxis [29]. On the other hand, as product of myo-inositol, galactaric acid was observed at higher level. When adenosine triphosphate (ATP) produced from carbohydrates is not enough, the organism will burn fat to produce energy. Three anaphylaxis-related metabolites, namely cholesterol, phosphoric acid and glycerol, were involved in lipid metabolism. Cholesterol decreased in urine due to its consumption during anaphylaxis. At the same time, as the catabolites of cholesterol and triglyceride, phosphoric acid and glycerol markedly enhanced. Moreover, in addition to serving as energy source, cholesterol processes immune-response modification in anaphylaxis as well. Mast cell-dependent proteolytic modification of HDL particles would reduce cholesterol efflux from macrophage foam cells ex vivo during anaphylactic shock in mouse [30]. It was reported that acute lowering of cholesterol enhanced mast cell degranulation [31] and cholesterol has interactions with inflammation in asthma [32]. Besides carbohydrate and lipid metabolisms, amino acid metabolism yields carbon skeleton for TCA cycle regarding energy producing. Lower level of benzeneacetic acid in urine of allergic animal might be the result of its consuming in amino acid metabolism. Furthermore, as benzene derivatives, 1, 3-dyhydroxyl-benzene, benzenepropanoic acid, together with benzeneacetic acid might influence biochemical and functional activities of immunecompetent cells and impair immune responses [33]. The inhibitory effects of benzene derivatives on immune responses were supposed to be mediated by interfering early transduction signals including PI3 kinase [34]. In addition to these twenty-two shared variables, thirty-seven diverse variables were observed between cattle albumin group and ovalbumin group, which showed partially overlapped in PCA scatter plot (Fig.1). This diversity may be due to the epitopes that can be recognized by T cell on ovalbumin were different from that on cattle albumin [35,36]. Conclusions In this paper, metabolomics was first applied to investigate urine metabolic profiling in anaphylactic animals. Twenty-two potential biomarkers of anaphylaxis were observed in this investigation, which could be the metabolic probes of anaphylaxis. Among them, the disturbed metabolic pathway of metabolites (Fig.4) and the immune response modifications of cholesterol and benzene derivates were implied in the model groups. In summary, urine metabolomic profiling would be a potential optimized tool for anaphylaxis diagnosis and management. Abbreviations GC-MS: Gas Chromatography-Mass Spectrometry;PCA:Principal Component Analysis; PLS-DA:Partial Least Squares discriminant analysis;KEGG:Kyoto Encyclopedia of Genes and Genomes; BSTFA; O-bis (Trimethylsilyl) trifluoroacetamide; TMCS: trimethylchlorosilane; HPIDC:Hunan Provincial Institute for Drug Control;NIST:National Institute of Standards and Technology; ATP:adenosine triphosphate Acknowledgements The authors acknowledge financial support from the programs of international science and technology cooperation (No: 2013DFA31790, No: S2013ZR0181). 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