| Literature DB >> 29285290 |
Yuxiao Sun1,2, Chuanyu Gao1,2, Xianqing Wang1,2, Yuhao Liu1,2.
Abstract
Keshan disease is a congestive cardiomyopathy. Dietary selenium deficiency combined with additional stressors are recognized to cause the cardiomyopathies. In this study, clinical condition of individuals with different subtypes including chronic and latent were analyzed. ECG abnormalities, chest radiography, echocardiography and blood selenium concentration were assessed. Subsequently, in effort to uncover proteins that were reliably changed in patients, isobaric tags for absolute and relative quantitation technology was applied. Bioinformatics analysis of the differentially expressed proteins were performed by means of Gene Ontology classification, KEGG pathway, and Ingenuity Pathway Analysis. ELISA experiment was used to detect the interesting proteins. As a result, chronic patients showed more EGC abnormalities compared to Latent. All patients had low blood selenium level. Proteomics data revealed 28 differentially expressed proteins. By ELISA variation, LGALS3BP was increased in chronic patients. PZP was elevated specially in latent patients. The above results might be beneficial for further biomarkers discovery and Keshan disease pathological mechanism study.Entities:
Keywords: DEPs; Keshan disease; biomarker; iTRAQ; proteomics
Year: 2017 PMID: 29285290 PMCID: PMC5739677 DOI: 10.18632/oncotarget.22397
Source DB: PubMed Journal: Oncotarget ISSN: 1949-2553
Figure 1Flowchart of iTRAQ proteomics approach
Baseline characteristics of the study population enrolled in clinical feature survey
| CKD (n=31) | LKD (n=40) | INC(n=30) | |
|---|---|---|---|
| Age, yrs | 46.8±9.1 | 45.7±11.8 | 44.1±13.8 |
| Female/male | 14/17 | 22/18 | 13/17 |
| NYHA class, n (%) | |||
| I | 0(0%) | 24(60.0%) | 28(93.3%) |
| II | 7(22.6%) | 13(32.5%) | 1(3%) |
| III | 12(38.7%) | 3(7.50%) | 0(0%) |
| IV | 12(38.76.5%) | 0(0%) | 0(0%) |
| Family history, n (%) | 19(61.3%) | 10(25.0%) | 1(3%) |
Standard 12-lead ECG data of KD patients and internal controls
| ECG abnormalities | CKD (n=31) | LKD (n=40) | INC (n=30) | |||
|---|---|---|---|---|---|---|
| Number | Ratio (%) | Number | Ratio (%) | Number | Ratio (%) | |
| Normal ECG | 1 | 3.2 | 10 | 25.0 | 27 | 90.0 |
| Atrial premature beats | 7 | 22.6 | 5 | 12.5 | 1 | 3 |
| Ventricular premature beat(VPB) | 21 | 67.4 | 6 | 15.0 | 0 | 0 |
| Frequent VBP | 15 | 48.4 | 3 | 7.5 | 0 | 0 |
| Occasional VBP | 4 | 12.9 | 3 | 7.5 | 0 | 0 |
| Junctional tachycardia | 1 | 3.2 | 0 | 0 | 0 | 0 |
| Complete right bundle branch block | 6 | 19.4 | 2 | 5.0 | 0 | 0 |
| Incomplete right bundle branch block | 4 | 12.9 | 3 | 7.5 | 1 | 3 |
| Intraventricular block (class I) | 4 | 12.9 | 4 | 10.0 | 1 | 3 |
| Intraventricular block (class II) | 3 | 9.7 | 0 | 0 | 0 | 0 |
| ST-T changes | 13 | 41.9 | 4 | 10.0 | 0 | 0 |
| Ventricular hypertrophy | 10 | 32.3 | 0 | 0 | 0 | 0 |
| Atrial flutter | 3 | 9.7 | 0 | 0 | 0 | 0 |
| Qtc prolongation | 4 | 12.9 | 0 | 0 | 0 | 0 |
Figure 2Clinical baseline data of study population
(A) Chest radiography examination reflected the extent of cardiac enlargement. (B, C) Echocardiography results. (D) Blood selenium level in KD patients and controls at baseline. * Compared to INC, p<0.05; # comparison in the 3 groups, p <0.01; △ compared to KD, p>0.05.
Baseline characteristics of the enrolled subjects in iTRAQ
| Groups | CKD | LKD | INC | EXC |
|---|---|---|---|---|
| N=10 | N=10 | N=10 | N=10 | |
| Age, yrs | 48.7±8.1 | 44.9±11.1 | 44.2±13.5 | 43.1±11.5 |
| Female/male | 6/4 | 5/5 | 5/5 | 5/5 |
| Blood selenium(μg/ml) | 0.065±0.017 * | 0.067±0.016 | 0.093±0.014 | |
| Family history of KD (%) | 4 (40)** | 1(10) | - | - |
| NYHA class, n (%) | ||||
| I | 0 (0)** | 8(80) | - | - |
| II | 1 (10)** | 2(20) | - | - |
| III | 4 (20)** | - | - | - |
| IV | 5 (50)** | - | - | - |
| Systolic BP(mmhg) | 111±15 | 117±12 | 120±17 | 123±15 |
| Diatolic BP(mmhg) | 72±9 | 79±7 | 77±9 | 80±8 |
| Cardiothoracic ratio | 0.63±0.06* | 0.47±0.03 | 0.45±0.04 | 0.44±0.44 |
| Echocardiography | ||||
| LVEF (%) | 36.43±10.08* | 56.12±10.64 | 64.31±8.12 | 67.18±7.54 |
| VE/VA | 1.32±0.29 | 1.44±0.65 | 1.47±0.68 | 1.62±0.34 |
#p<0.05, *p<0.01, ** p<0.001.
Summary of ratios, unique peptides, SC (%) and protein score of the 28 DEPs
| GI_Number | Protein name | Abbreviation | Fold change | Unique peptides | SC (%) | ` Protein score | |||||
|---|---|---|---|---|---|---|---|---|---|---|---|
| CKD/INC | CKD/EXC | LKD/INC | LKD/EXC | CKD/LKD | INC/EXC | ||||||
| gi5031863 | Galectin-3-binding protein | LGALS3BP | 3.352241 | 3.725793 | 1.47615 | 1.881961 | 1.980342 | 1.347234 | 4 | 68.63 | 217 |
| gi62871078 | Immunoglobulin alpha heavy chain variable region | - | 1.515717 | 1.827663 | 1.443929 | 1.283426 | 0.913831 | - | 9 | 12.34 | 162 |
| gi10636875 | Immunoglobulin heavy chain variable region | - | 1.36604 | 1.197479 | 1.526259 | 1.319508 | 0..888843 | - | 7 | 28.04 | 218 |
| gi31397 | Fibronectin precursor | FN1 | 1.292353 | 1.180993 | 1.239708 | 1.156688 | 1.035265 | - | 46 | 21.56 | 1620 |
| gi1620909 | Ceruloplasmin | CP | 1.265757 | 1.248331 | - | - | 1.057018 | - | 2 | 8.05 | 138 |
| gi177870 | Alpha-2-macroglobulin precursor | A2M | 1.265757 | 1.06437 | 1 | 1 | 1.394744 | 0.806642 | 3 | 11.53 | 247 |
| gi573114 | C1q B-chain precursor | C1QB | 1.248331 | 1.239708 | - | - | 1.049717 | - | 4 | 25.71 | 101 |
| gi4502261 | Antithrombin-III precursor | SERPINC1 | 1.148698 | 0.882703 | 1.375553 | 1.257013 | 0.697372 | - | 27 | 41.16 | 650 |
| gi77744385 | Complement factor H | CFH | 1.148698 | 1.042466 | 2.114036 | 2.056228 | 1.526259 | - | 4 | 9.5 | 281 |
| gi41388180 | Monoclonal IgM antibody heavy chain | - | 1.140764 | 1.079228 | 1.205808 | 0.888843 | 1.021012 | - | 26 | 30.85 | 615 |
| gi115298678 | Complement C3 precursor | C3 | 1.125058 | 0.933033 | 1.337928 | 1.042466 | 0.920188 | - | 99 | 43.48 | 2549 |
| gi37138 | Unnamed protein product | THBS1 | 1.071773 | 0.773782 | 1.180993 | 1.189207 | 0.870551 | 0.707107 | 7 | 12.65 | 375 |
| gi182412 | Coagulation factor V precursor | F5 | 1.049717 | 0.97942 | 1.613284 | 1.231144 | 0.806642 | - | 2 | 3.82 | 172 |
| gi130675 | Serum paraoxonase/arylesterase 1 | PON1 | 1.028114 | 1.117287 | 1.148698 | 1.125058 | 1.071773 | - | 7 | 33.24 | 328 |
| gi178849 | Apolipoprotein E | APOE | 1 | 0.852635 | 0.864537 | 0.882703 | 0.986233 | - | 41 | 52.05 | 735 |
| gi33989 | Inter-alpha-trypsin inhibitor heavy chain | ITIH1 | 1 | 1.197479 | 1 | 1.301342 | 0.920188 | 1.239708 | 8 | 32.13 | 229 |
| gi2258128 | Complement 9 | C9 | 0.607097 | 0.835088 | 0.532185 | 0.721965 | 1.132884 | 1.310393 | 2 | 6.75 | 106 |
| gi33985 | Trypsin inhibitor | ITIH2 | 0.773782 | 1.265757 | 1.057018 | 0.852635 | 1.140764 | 1.248331 | 3 | 13 | 279 |
| gi1655598 | Lipopolysaccharide binding protein | LBP | 0.864537 | 0.876606 | 1.079228 | 1.071773 | 0.586417 | - | 9 | 17.05 | 271 |
| gi190026 | Plasminogen | PLG | 0.888843 | 1.414214 | 0.757858 | 1.180993 | 1.172835 | 1.515717 | 2 | 11.36 | 144 |
| gi13477169 | Vitronectin | VTN | 0.895025 | 1.021012 | 1 | 1.156688 | 1.057018 | - | 54 | 26.15 | 449 |
| gi42716297 | Clusterin isoform 1 | CLU | 0.913831 | 0.97942 | 0.926588 | 0.972655 | 1.006956 | - | 42 | 27.15 | 458 |
| gi35825 | Pregnancy zone protein | PZP | 0.913831 | 1.392352 | 1.603851 | 3.961702 | 0.659754 | 2.173470 | 2 | 47.89 | 199 |
| gi35825 | Proapolipoprotein | APOA1 | 0.920188 | 1.021012 | 0.933033 | 1 | 1 | - | 148 | 70.68 | 868 |
| gi178775 | Unnamed protein product | F2 | 0.965936 | 0.876606 | 0.870551 | 0.82932 | 1.125058 | - | 40 | 37.14 | 907 |
| gi189066554 | C4b-binding protein alpha chain precursor | C4BPA | 0.972655 | 1.042466 | 1.057018 | 0.933033 | 0.965936 | - | 9 | 23.45 | 333 |
| gi4502503 | Alpha-1-antitrypsin | SERPINA1 | 0.993092 | 0.558644 | 2.20381 | 1.210335 | 0.450625 | 0.532185 | 2 | 34.21 | 240 |
| gi4502149 | Apolipoprotein A-II preproprotein | APOA2 | - | 1.464086 | - | 1.189207 | - | - | 9 | 54 | 174 |
“-” means no data
Figure 3Venn diagram of significantly DEPs compared to EXC
The numbers in each large circle represented the total number of proteins among various combinations; the overlap represented common proteins. Probable biomarkers within our results were exhibited.
Figure 4Bioinformation of the DEPs were shown
(A) The identified proteins were divided into 3 categories: cellular component, molecular function and biological process. The top components 10 (assigned by p value) are presented here. (B) IPA network analysis (ID 1, score 34). Take CKD vs EXC as an example. Red, up-regulated proteins; green, down-regulated proteins; white, proteins are involved in certain network but not identified in this study. The degree of alter for proteins is displayed by color depth. (C) IPA pathway analysis. -log (p value) of terms ranked 1-20 were showed. Vertical axis in right means the protein ratios.
IPA Networks ranking with relative molecules symbols
| ID | Molecules in network | Score | Focus molecules | Top functions |
|---|---|---|---|---|
| 1 | A2M, Akt, APOA2, APOE, C3, C9, calpain, CFH, chymotrypsin, Collagen type IV, Collagen (s), CP, Ecm, elastase, F2, F5, Fibrin, Fibrinogen, FN1, HDL, HDL-cholesterol, Intergrin, Laminin, LDL, MAC, Map, Pld, PLG, Pro-inflammatory Cytokine, Serine Protease, SERPINA1, SERPINC1, trypsin, VLDL-cholesterol, VTN | 34 | 15 | Cellular Movement, Hematological System Development and Function, Immune Cell Trafficking |
| 2 | BRAF, chemokine, CPL7A1, DHCR24, ERK1/2, gelatinase, HRG, IgG, IL1, IL12 (complex), IL12 (family), ILR1, Immunoglobulin, indicant, Jnk, LBP, LGALS3BP, Mapk, MIR320, MMP10, NFkB (complex), P38MARK, Pak, Pdgf (complex), PI3K (complex), Pka, Pld, Rac, SERPINC1, SERPINF2, Tgf beta, THBS1, TLR2/TLR4, Vegf | 5 | 3 | Cancer, Endocrine System Disorders, Carbohydrate Metabolism |
| 3 | Iti, ITIH1, ITIH2, ITIH3, ITIH4 | 5 | 2 | Cardiovascular Disease, Hereditary Disorder, Metabolic Disease |
| 4 | APOA1, APOE, CD47, CD59, cd59a, CTSD, cyclic GMP, dihydrotestosterone, EDN1, F2, Hba, HBB, Hbb-b2, heme, hemoglobin, HIF1A, HMOX1, homocysteine thiolactone, HP, IL10RB, iron, ITGB3, JAK2, lipid, MIF, NOS3, NR2C2, PDGFB, SCARB1, SLC40A1, SMAD7, SNAI2, SOD1, SPP1, TNFRSF9 | 5 | 3 | Hematological System Development and Function, Hematopoiesis, Tissue Morphology |
| 5 | C1q, C1QB, DMP1, DYSF, PPARA, PPARD, PSEN1, PSEN2 | 2 | 1 | Organ Morphlogy, Hair and Skin Development and Function, Hereditary Disorder |
The statistical likelihood (score) was used to rank the networks. Score value, number of molecules and top function for each network were listed
Figure 5Protein serum concentration of LGAL3BP and PZP in the four groups
*p<0.01 vs other groups.