Literature DB >> 33013889

Urinary Proteomics Identifying Novel Biomarkers for the Diagnosis of Adult-Onset Still's Disease.

Yue Sun1, Fan Wang1, Zhuochao Zhou1, Jialin Teng1, Yutong Su1, Huihui Chi1, Zhihong Wang1, Qiongyi Hu1, Jinchao Jia1, Tingting Liu1, Honglei Liu1, Xiaobing Cheng1, Hui Shi1, Yun Tan2, Chengde Yang1, Junna Ye1.   

Abstract

Adult-onset Still's disease (AOSD) is a systemic, multigenic autoinflammatory disease, and the diagnosis of AOSD must rule out neoplasms, infections, and other autoimmune diseases. Development of a rapid and efficient but non-invasive diagnosis method is urgently needed for improving AOSD therapy. In this study, we first performed a urinary proteomic study using isobaric tags for relative and absolute quantification (iTRAQ) labeling combined with liquid chromatography-tandem mass spectrometry analysis in patients with AOSD and healthy control (HC) subjects. The urinary proteins were enriched in pathways of the innate immune system and neutrophil degranulation, and we identified that the α-1-acid glycoprotein 1 (LRG1), orosomucoid 1 (ORM1), and ORM2 proteins were highly expressed in patients with AOSD. The elevated urine levels of LRG1, ORM1, and ORM2 were further validated by enzyme-linked immunosorbent assay in active patients with AOSD, disease controls, and HC subjects. Receiver operating characteristic curves showed that the areas under the curve of LRG1, ORM1, and ORM2 were 0.700, 0.837, and 0.736, respectively (all p < 0.05). Furthermore, we found that the urine levels of LRG1, ORM1, and ORM2 were positively correlated with the systemic score and erythrocyte sedimentation rate and that the urine levels of LRG1 were positively correlated with interleukin 1β (IL-1β), IL-6, and IL-18 levels, whereas the urine levels of ORM1 were positively correlated with the IL-1β level. Together, our study identified novel urinary markers for non-invasive and simple screening of AOSD.
Copyright © 2020 Sun, Wang, Zhou, Teng, Su, Chi, Wang, Hu, Jia, Liu, Liu, Cheng, Shi, Tan, Yang and Ye.

Entities:  

Keywords:  adult-onset Still’s disease; biomarker; orosomucoid; urinary proteomics; α-1-acid glycoprotein 1

Mesh:

Substances:

Year:  2020        PMID: 33013889      PMCID: PMC7500098          DOI: 10.3389/fimmu.2020.02112

Source DB:  PubMed          Journal:  Front Immunol        ISSN: 1664-3224            Impact factor:   7.561


Introduction

Adult-onset Still’s disease (AOSD) is a systemic, multigenic autoinflammatory disease characterized by cardinal manifestations of fever, arthritis and/or arthralgia, skin rash, sore throat, leukocytosis, and excessive neutrophil proportion, in combination with other symptoms, such as myalgia, pericarditis, pleuritis, and elevated erythrocyte sedimentation rate (ESR), C-reactive protein (CRP), and ferritin levels (1–3). The disease may cause life-threatening complications such as fulminant hepatic failure, pulmonary arterial hypertension, disseminated intravascular coagulation, acute respiratory distress syndrome, and macrophage activation syndrome (1). The pathogenesis of AOSD is complicated and still undetermined. AOSD could be affected by genetic background; for example, human leukocyte antigen (HLA) region-related mutations are closely related to the disease (2, 4). Moreover, a recent report declared that cytomegalovirus infections may be implicated as trigger factors for AOSD (5). Most importantly, macrophage and neutrophil activation–associated inflammatory cytokine storms play a crucial role in the disease progression of AOSD (1–3). Pathogen-associated molecular patterns or danger-associated molecular patterns trigger inflammasome activation and the production of interleukin 1β (IL-1β) and IL-18, further improving the expression of the proinflammatory cytokines tumor necrosis factor α (TNF-α) and IL-6 and the anti-inflammatory cytokines IL-10 and IL-37 (1, 6, 7). Additionally, a markedly high frequency of elevated serum molecules such as alarmins (S100A8/A9 and S100A12), chemokines (C-X-C motif chemokine ligand 9, 10, and 11), and microRNAs, which correlate with disease activity, was noticed in patients with AOSD (8–12). Although AOSD shares many common manifestations and has been considered the archetype of systemic, non-familial autoinflammatory disorders, the current diagnosis of AOSD must rule out neoplasms, infections, and other autoimmune diseases with similar symptoms (1). Thus, developing a rapid, efficient, and non-invasive diagnostic method is urgently needed for the early diagnosis of AOSD. Urine is an important source for the diagnosis of many diseases, because of its non-invasive nature and simple collection. Some contents of urine samples, including metabolites, circulating DNA, microRNAs, and protein, can serve as biomarkers for renal injury–associated diseases or other disorders such as various carcinomas (13–15). However, the urine protein profiles in patients with AOSD are still unknown and might provide potential urinary biomarkers beneficial to disease diagnosis. In this study, we performed urinary proteomics to explore the landscape of urinary proteins in patients with AOSD and identified three glycoproteins, α-1-acid glycoprotein 1 (LRG1), orosomucoid 1 (ORM1, alternatively named leucine-rich α-2-glycoprotein 1, AGP1), and orosomucoid 2 (ORM2 or AGP2), as potential non-invasive markers assisting the diagnosis of AOSD. Furthermore, we explored the urinary levels of LRG1, ORM1, and ORM2 in patients with AOSD, rheumatoid arthritis (RA), neoplasms, and infections and healthy control (HC) subjects by enzyme-linked immunosorbent assay (ELISA) and determined the correlation between the urinary levels of LRG1, ORM1, and ORM2 and clinical symptoms of AOSD.

Materials and Methods

Patients

A total of 70 patients with active AOSD who visited the Department of Rheumatology and Immunology, Ruijin Hospital, Shanghai Jiao Tong University School of Medicine, from January 2018 to April 2019 were consecutively enrolled in this study. The diagnosis of AOSD was made according to the criteria of Yamaguchi et al. (16) after excluding malignancies, infections, and other autoimmune diseases. Fifty age- and sex-matched HC subjects were enrolled. An additional independent set consisting of 24 patients with RA, 14 patients with sepsis, and a heterogeneous group of 27 patients with neoplastic disorders (all malignant, including 19 gastrointestinal neoplasms, 3 genitourinary neoplasms, 3 breast carcinomas, and 2 lung carcinomas) was used to compare the specificity of urinary proteins in AOSD patients. RA was diagnosed according to the 2010 American College of Rheumatology classification criteria (17). Patients with neoplastic disorders were diagnosed with senior oncologists and confirmed by pathology. All sepsis patients fulfilled the Third International Consensus Definitions for Sepsis and Septic Shock (Sepsis-3) (18). The study was performed in accordance with the Declaration of Helsinki and the principles of good clinical practice. Biological samples were obtained under a protocol approved by the Institutional Research Ethics Committee of Ruijin Hospital (identifier 2016–62), Shanghai, China. Informed consent was obtained from the recruited subjects. Urine samples were collected from patients with active AOSD before treatment with steroid or synthetic disease-modifying antirheumatic drugs. The clinical characteristics and laboratory values (including blood count; ESR, CRP, rheumatoid factor, antinuclear antibody, and ferritin levels; and liver function tests) of each subject were recorded. AOSD disease activity was assessed according to the systemic disease score method (19). Patients with AOSD who had a fever, and/or an inflammatory arthralgia/arthritis, and/or any suggestive cutaneous lesions, and/or a sore throat were considered to be at an active stage (20). All urine and serum samples were immediately stored at −80°C before use.

Proteomic and Analysis

To examine the different proteins/peptides from urine between patients with new-onset, treatment-naive AOSD (n = 15, from a total of 70 patients) and age- and sex-matched HC subjects (n = 15), isobaric tags for relative and absolute quantification (iTRAQ) labeling combined with liquid chromatography–tandem mass spectrometry (LC-MS/MS) analysis were performed by GENECHEM (Shanghai, China) according to a previous report (21). Considering the low abundance of proteins in urine, we pooled urine specimens from five individuals into one sample (combined with different sexes and ages), and each group contained three samples. The UniProt (HomoSapiens_161584_20180123) database was used to blast search the discovered peptides/proteins. The fold change of a protein >2 or <0.5 (p < 0.05) considered the difference between the AOSD and HC groups. A heatmap and a volcano plot were generated by R language (the gplots and ggplot packages, respectively). Bioinformatics analysis was performed using the String database[1]. In particular, the biological process of Gene Ontology (GO) analysis and Reactome pathway analysis are shown in Figures 1C,D. Furthermore, 26 secreted proteins listed in Table 1 were enriched in the String database and confirmed by the UniProt database.
FIGURE 1

Urinary proteomic analysis in patients with AOSD and HC subjects. (A) Heatmap showing the differentially expressed proteins between patients with AOSD (B group) and HC subjects (A group). (B) A volcano plot displaying that LRG1, ORM1, and ORM2 were differentially expressed in patients with AOSD. GO analysis (C) and Reactome pathway analysis (D) showing the enriched pathways in urine samples of AOSD patients.

TABLE 1

Differentially secreted urinary proteins in patients with AOSD.

AccessionProtein nameDescriptionFold changep
Up-regulated proteins
P02750LRG1Leucine-rich α-2-glycoprotein10.87920.0267
Q68CK4HMFT1766Leucine-rich α-2-glycoprotein8.43400.0133
P02763ORM1Alpha-1-acid glycoprotein 14.57200.0188
P19652ORM2Alpha-1-acid glycoprotein 24.15460.0114
A0A1S5UZH5TXNMitochondrial thioredoxin3.49510.0146
P15814IGLL1Immunoglobulin lambda-like polypeptide 13.30730.0114
Q9UIH2TNFR2Tumor necrosis factor receptor 2 (fragment)3.06440.0147
B6V6K6MYOCMutant myocilin2.94480.0042
P25311AZGP1Zinc α-2-glycoprotein;α-2-glycoprotein 1, zinc2.88280.0191
Q16661GUCA2BGuanylate cyclase activator 2B2.87100.0074
A0A0S2Z4R6SCGB1A1Secretoglobin family 1A member 1 isoform 1 (fragment)2.60520.0434
D0PNI2LOXLysyl oxidase2.34260.0162
Q5H8C1FREM1FRAS1-related extracellular matrix protein 12.31860.0137
O60234GMFGGlia maturation factor γ2.30940.0376
P05161ISG15Ubiquitin-like protein ISG152.24500.0040
Q9UNU2C4BComplement protein C4B frameshift mutant (fragment)2.21660.0097
S4R471AMBPα-1-Microglobulin/bikunin precursor (fragment)2.15460.0009
Q9UGM5FETUBFetuin-B2.04410.0066
A0A024R930PRG4Proteoglycan 4, isoform CRA_a2.00650.0059
A0A024R7R1HK3Hexokinase 3 (white cell), isoform CRA_b2.00550.0045
Down-regulated proteins
X6RBG4UMODUromodulin0.38560.0115
D3DNU8KNG1Kininogen-10.40450.0330
A0A024R6L1DLK1Protein delta homolog 10.43330.0015
G8JLH6CD9CD9 antigen0.45630.0228
P02768ALBSerum albumin0.46410.0110
Q01469FABP5Fatty acid–binding protein 50.48430.0449
Urinary proteomic analysis in patients with AOSD and HC subjects. (A) Heatmap showing the differentially expressed proteins between patients with AOSD (B group) and HC subjects (A group). (B) A volcano plot displaying that LRG1, ORM1, and ORM2 were differentially expressed in patients with AOSD. GO analysis (C) and Reactome pathway analysis (D) showing the enriched pathways in urine samples of AOSD patients. Differentially secreted urinary proteins in patients with AOSD.

Enzyme-Linked Immunosorbent Assay

Enzyme-linked immunosorbent assay kits were purchased from Cusabio (Hubei, China) for LRG1 (CSB-E12962h), ORM1 (CSB-EL017237HU), and ORM2 (CSB-E11821h). The urine levels of LRG1, ORM1, and ORM2 in each sample (not pooled together) were detected according to the manufacturer’s instructions. Briefly, 50 μL of the urine samples was added to the previously capture antibody-coated plate, followed by the addition of 50 μL of horseradish peroxidase–conjugated detection antibody and incubation at 37°C for 1 h. After three washes, 90 μL of TMB substrate was added to each well and incubated for 20 min at 37°C. Then, 50 μL of stop solution was added and read immediately at 450 nm using a microplate reader (BioTek Epoch, Winooski, VT, United States). The serum levels of IL-1β, IL-6, IL-18, and TNF-α were examined by an electrochemiluminescence assay kit from Meso Scale Discovery (MSD, Rockville, MD, United States) according to previous reports (6, 7).

Statistical Analysis

GraphPad Prism 8.00 software from GraphPad Software Inc. (San Diego, CA, United States) was used to analyze the results in the current study. The KS normality test was used to analyze whether the data fit the parametric contribution. Parametric data are expressed as the mean ± SD, and non-parametric data are expressed as the median with interquartile range. The differences between each group were compared by the non-parametric Mann–Whitney U test. The non-parametric Spearman correlation test was performed to analyze the associations between the urinary levels of LRG1, ORM1, and ORM2 and different variables. Receiver operating characteristic (ROC) curves and areas under the curve (AUCs) were determined to evaluate the sensitivity and specificity of the markers. The two-sided principle was carried out during the analyses, and we considered differences to be significant if P < 0.05.

Results

Urinary Proteomics Analysis Revealed a Unique Panel of Proteins Distinguishing AOSD Patients From HC Subjects

To systematically identify potential biomarkers of AOSD, we collected urine samples and performed proteomics analysis in patients with active AOSD and HC subjects. A total of 92 differentially expressed proteins were identified, of which 71 proteins were up-regulated, and 21 proteins were down-regulated in urine from patients with AOSD compared to those in HC subjects (fold change > 2 or <0.5; p < 0.05; Figures 1A,B; Supplementary Table 1). These differentially expressed proteins included 59 functional proteins and 33 proteins with unknown functions. Among the 59 functional proteins, their biological processes displayed the enrichment in the urine of patients with AOSD (Figure 1C). We further analyzed these proteins by Reactome pathway analysis and found that the most enriched pathways were the innate immune system and neutrophil degranulation, in accordance with the pathological features of AOSD (Figure 1D). Interestingly, platelet degranulation-related proteins were also enriched in the urine of AOSD patients (Figure 1D). Moreover, the GO analysis revealed that 26 proteins were secreted (Table 1), and the levels of the proteins LRG1, ORM1, and ORM2 were highly increased in the urine samples of patients with active AOSD and showed strong protein–protein interactions with each other, as analyzed with the String database (Supplementary Figure 1).

The Levels of LRG1, ORM1, and ORM2 Increased in Urine From AOSD Patients Validated by Enzyme-Linked Immunosorbent Assay

To confirm the proteomics data, we next validated the protein levels of LRG1, ORM1, and ORM2, the top three increased secreted proteins in the urine samples of patients with AOSD by ELISA. In total, 70 active AOSD patients were enrolled; 50 sex- and age-matched HC subjects were collected as HCs; and 24 patients with RA, 27 patients with neoplasms, and 14 patients with infections were enrolled as disease controls. The clinical and laboratory characteristics of the patients and controls are listed in Table 2. As shown in Figures 2A–C, the urine protein levels of LRG1 were higher in patients with AOSD than in patients with RA or neoplasms and HC subjects, and the urine protein levels of ORM1 and ORM2 in AOSD patients were dramatically higher than those in patients with RA, neoplasms, or infections and HC subjects. Furthermore, we analyzed the diagnostic role of these markers to distinguish AOSD from non-AOSD subjects (including HCs and disease controls). The results in Figure 2D showed that the AUC of LRG1 was 0.700 (p = 0.000), the AUC of ORM1 was 0.837 (p = 0.000), and the AUC of ORM2 was 0.736 (p = 0.000), and a three-panel combined AUC was 0.838 (p = 0.000; Supplementary Table 2), suggesting that these three urinary proteins, especially ORM1, could be used as diagnostic markers for AOSD.
TABLE 2

Clinical characteristics of patients with AOSD, disease controls, and HC subjects at the time of enrollment.

Active AOSD (n = 70)RA (n = 24)Neoplasm (n = 27)Infection (n = 14)HC (n = 50)
Age (year)39.6 ± 15.851.6 ± 16.859.3 ± 10.556.0 ± 19.337.8 ± 10.3
Gender (female/male)53/1715/917/103/1137/13
Duration (months)38.3 ± 65.1105.2 ± 86.4NANANA
Clinical features
Fever68 (97.1)0 (0.0)NANANA
Sore throat41 (58.6)0 (0.0)NANANA
Skin rash59 (84.3)2 (0.1)NANANA
Lymphadenopathy43 (61.4)0 (0.0)NANANA
Splenomegaly21 (30.0)0 (0.0)NANANA
Hepatomegaly3 (4.3)0 (0.0)NANANA
Pericarditis14 (20.0)0 (0.0)NANANA
Pleuritis18 (25.7)0 (0.0)NANANA
Pneumonia28 (40.0)0 (0.0)NANANA
Myalgia23 (32.9)0 (0.0)NANANA
Arthralgia60 (85.7)24 (100.0)NANANA
Systemic score5.8 ± 1.61.1 ± 0.3NANANA
Laboratory markers
Hemoglobin, g/L109.3 ± 21.9117.2 ± 15.7121.9 ± 17.1119.1 ± 27.0NA
Leukocyte, ×109/L13.0 ± 7.96.5 ± 1.95.6 ± 2.011.2 ± 4.4NA
Platelet, ×109/L252.1 ± 99.4266.5 ± 91.7201.9 ± 89.1265.3 ± 95.8NA
ESR, mm/h55.8 ± 35.945.1 ± 39.5NA46.8 ± 36.0NA
CRP, mg/L66.5 ± 65.025.9 ± 44.93.1 ± 1.178.5 ± 64.2NA
ALT, U/L66.3 ± 112.714.7 ± 5.829.7 ± 27.131.3 ± 16.2NA
AST, U/L74.6 ± 172.816.6 ± 6.030.5 ± 16.831.7 ± 16.7NA
Ferritin, ng/mL2351.6 ± 3604.6208.4 ± 281.2NANANA
ANA positivity12 (17.4)6 (25.0)NANANA
RF positivity1 (1.4)16 (66.7)NANANA
FIGURE 2

The urinary levels of LRG1, ORM1, and ORM2 were elevated in patients with active AOSD. The levels of LRG1 (A), ORM1 (B), and ORM2 (C) in patients with active AOSD (○; n = 70), RA (∇; n = 24), neoplasm (□; n = 27), infection (▲; n = 14), and HC subjects (🌑; n = 50) were determined by ELISA. (D) ROC curves for LRG1 (blue line), ORM1 (red line), and ORM2 (black line) levels to distinguish AOSD from non-AOSD subjects. The correlation between the levels of LRG1 (E), ORM1 (F), and ORM2 (G) and the systemic score of AOSD. *p < 0.05; **p < 0.01; and ***p < 0.001.

Clinical characteristics of patients with AOSD, disease controls, and HC subjects at the time of enrollment. The urinary levels of LRG1, ORM1, and ORM2 were elevated in patients with active AOSD. The levels of LRG1 (A), ORM1 (B), and ORM2 (C) in patients with active AOSD (○; n = 70), RA (∇; n = 24), neoplasm (□; n = 27), infection (▲; n = 14), and HC subjects (🌑; n = 50) were determined by ELISA. (D) ROC curves for LRG1 (blue line), ORM1 (red line), and ORM2 (black line) levels to distinguish AOSD from non-AOSD subjects. The correlation between the levels of LRG1 (E), ORM1 (F), and ORM2 (G) and the systemic score of AOSD. *p < 0.05; **p < 0.01; and ***p < 0.001.

The Relationship Between the Urinary Protein Levels of LRG1, ORM1, and ORM2 and Disease Activity

To evaluate the relationship between the levels of these proteins and disease activity, we analyzed the correlation of the levels of LRG1, ORM1, and ORM2 with the systemic score and laboratory parameters. First, we found that the levels of LRG1 (r = 0.419, p = 0.000; Figure 2E), ORM1 (r = 0.343, p = 0.004; Figure 2F), and ORM2 (r = 0.303, p = 0.012; Figure 2G) were positively correlated with the systemic score. Furthermore, as shown in Figure 3, the levels of LRG1 (r = 0.286, p = 0.019), ORM1 (r = 0.370, p = 0.002), and ORM2 (r = 0.275, p = 0.026) were correlated with ESR. In addition, a positive correlation was found between the levels of LRG1 and aspartate transaminase (r = 0.310, p = 0.011) and between the levels of ORM2 and alanine transaminase (r = 0.264, p = 0.032).
FIGURE 3

Correlation of urinary LRG1, ORM1, and ORM2 levels with laboratory values in AOSD patients. *p < 0.05; **p < 0.01; and ***p < 0.001.

Correlation of urinary LRG1, ORM1, and ORM2 levels with laboratory values in AOSD patients. *p < 0.05; **p < 0.01; and ***p < 0.001.

The Association Between the Urinary Levels of LRG1, ORM1, and ORM2 and Clinical Manifestations

Next, we determined the relationship between the typical manifestations of AOSD and the urinary levels of LRG1, ORM1, and ORM2. As shown in Supplementary Table 3, the levels of LRG1 were increased in patients with lymphadenopathy, pneumonia, and pleuritis (p < 0.05); the levels of ORM1 were increased in patients with pericarditis and pneumonia (p < 0.05).

The Correlation Between the Urinary Levels of LRG1, ORM1, and ORM2 and Inflammatory Factors

Because cytokine storm is the hallmark of AOSD, we next analyzed the correlation between the urinary levels of LRG1, ORM1, and ORM2 and the levels of serum cytokines including IL-1β, IL-6, IL-18, and TNF-α. As listed in Figure 3, the urinary levels of LRG1 were positively correlated with those of IL-1β (r = 0.356, p = 0.019), IL-6 (r = 0.342, p = 0.021), and IL-18 (0.380, p = 0.010); the urinary levels of ORM1 were positively correlated with those of IL-1β (r = 0.318, p = 0.038). Taken together, these results indicated that the urinary levels of LRG1 and ORM1 were associated with the inflammatory conditions of AOSD.

Discussion

Adult-onset Still’s disease is a systemic autoinflammatory disease, and the pathogenesis of the disease is largely unknown. Thus, using different methods at multiple levels is crucial to understand the landscape of AOSD. In a previous study, we first screened the susceptibility of genetic factors in AOSD using a genome-wide association study and revealed that the SNPs rs3115628 (HLA class I region) and rs9268832 (HLA class II region) were strongly associated with AOSD in the Chinese population (4). Moreover, we identified plasma microRNA profiles using microRNA sequencing in patients with AOSD (12). In the current study, we further explored the urine proteomics of AOSD by iTRAQ-labeling combined with LC-MS/MS analysis. The increased urinary proteins in AOSD were enriched in pathways of the innate immune system and neutrophil degranulation. Hyperactivation of innate immune cells, especially monocytes/macrophages and neutrophils, is the hallmark of AOSD (1, 3). Additionally, the levels of neutrophil granular protein myeloperoxidase and elastase-combined DNA were elevated in patients with AOSD (22). All these results suggested that our proteomic data were coincident with the characteristics of AOSD. We next confirmed the levels of highly enriched secreted proteins LRG1, ORM1, and ORM2 in the urine samples from patients with AOSD by ELISA. Urinary LRG1, ORM1, and ORM2 levels were increased in patients with AOSD compared with those in controls and were positively correlated with disease activity, indicating that the urinary levels of the LRG1, ORM1, and ORM2 proteins might serve as biomarkers for the diagnosis of AOSD. Although previous studies have identified several serum protein markers for AOSD, such as ferritin, inflammatory cytokines (IL-1β and IL-18), anti-inflammatory cytokines (IL-10 and IL-37), and chemokines (CXCL9/10/11) (6, 7, 20, 23), identifying urinary markers will furnish a more non-invasive method for clinical diagnosis. α-1-acid glycoprotein 1, encoding leucine-rich α-2-glycoprotein 1, is a secreted protein belonging to the leucine-rich repeat (LRR) family. LRG1 is abundant in human serum, mainly produced by hepatocytes, and is involved in the pathogenesis of tumorigenesis and angiogenesis (24, 25). Recently, LRG1 has been recognized as a proinflammatory marker and found to be elevated in patients with ulcerative colitis, type 1 diabetes or RA (26–29). A previous study demonstrated that the serum levels of LRG1 were significantly higher in AOSD patients than in RA patients and HC subjects (30), which was consistent with our results that the urinary levels of LRG1 increased in patients with AOSD compared to those in non-AOSD subjects. Moreover, we demonstrated that the levels of LRG1 were positively correlated with the serum levels of the inflammatory cytokines IL-1β, IL-6, and IL-18 (Figure 3). LRG1 is highly expressed during granulocyte differentiation (31) and facilitates neutrophil differentiation and CD11b expression via G-CSFR signals (32). Further study revealed that LRG1 is a granule protein of neutrophils and cosecreted with lactoferrin (a secondary granule component) when neutrophils are activated (33). Our previous work found that AOSD patients spontaneously released neutrophil extracellular traps including the granule proteins myeloperoxidase and elastase (22), suggesting that neutrophils might be the major source of circulation LRG1 proteins and LRG1 might be involved in the hyperactivation of neutrophils during AOSD pathogenesis. Orosomucoid 1 and ORM2, encoding ORM1 and ORM2, are plasma proteins related to acute inflammation (34). The ORM proteins are mainly expressed in hepatocytes under stressful conditions, including infections, carcinogenesis, and inflammation (35, 36). The ORM proteins are regulated by TNF-α and IL-1β (36), which were remarkably increased in AOSD and serve as therapeutic targets of the disease (1), suggesting the observed high urinary levels of ORM1 and ORM2 owing to the overproduction of TNF-α or IL-1 in patients with AOSD. Although the function of ORM1 and ORM2 has not yet been well established, the acute-phase protein ORM displays anti-inflammatory features (35). In an ischemic stroke mouse model, ORM inhibited the production of the inflammatory cytokines IL-1β, IL-6, and TNF-α (37). In LPS-induced neuroinflammation, ORM2 attenuated C-C chemokine ligand 4 (CCL4)–mediated activation and migration of microglia (38). ORM proteins could be applied as diagnostic markers for the early events of many pathological states. Elevated urinary ORM levels have been reported as biomarkers for multiple carcinomas and inflammatory diseases such as psoriasis, Crohn disease, and sepsis (39–43). Notably, Park et al. (44) demonstrated that the urinary levels of ORM1 and ORM2 were increased in patients with RA and correlated with disease activity. Interestingly, they revealed that the urinary levels of ORM2 could predict radiographic progression in patients with RA. Arthralgia is a primary symptom of AOSD involving 73.1% of patients with AOSD in China (45) and might progress into arthritis after a long disease duration. Therefore, whether urinary ORM2 could be a predictive biomarker for arthritis in AOSD is a meaningful topic and requires a long-term follow-up study. It is interesting that the three proteins and the other proteins discovered by proteomic analysis, such as zinc α-2-glycoprotein (AZGP1) and α-1-microglobulin/bikunin precursor (AMBP), are all glycoproteins and associated with inflammatory conditions, indicating an indispensable role of glycoproteins and glycosylation in inflammatory diseases. However, there are some limitations in our study. First, only active AOSD patients were enrolled in the current study, and these patients need follow-up. Second, patients with neoplasms possessed mixed conditions, including different diseases. More specific disease controls should be collected, and the numbers of disease controls need to be enlarged in future studies. Third, the detailed functions and mechanisms of LRG1, ORM1, and ORM2 remain inadequately determined and need future explorations. Overall, for the first time, we performed a proteomic analysis to analyze the urinary protein profiles of AOSD and unveiled that the urinary levels of LRG1, ORM1, and ORM2 were highly enriched in patients with AOSD and correlated with disease activity and inflammatory indicators. Moreover, the remarkable ROC performance of the ORM1 protein provided a much more convenient, non-invasive approach for the screening of AOSD.

Data Availability Statement

The datasets generated for this study can be found in the integrated proteome resources (iProX) with project ID of IPX0002355000.

Ethics Statement

The studies involving human participants were reviewed and approved by the Institutional Research Ethics Committee of Ruijin Hospital (identifier 2016–62), Shanghai, China. The patients/participants provided their written informed consent to participate in this study.

Author Contributions

YS and JY conceived of the study and participated in its design and coordination. FW and ZZ carried out the ELISA and performed the statistical analysis. JT, YS, HC, ZW, QH, JJ, TL, HL, XC, and HS collected samples and contributed to data acquisition, analysis, and critical review for intellectual content. FW performed the statistical analyses for all the data. YS, JY, YT, and CY drafted the manuscript and revised the manuscript. All authors read, revised, and approved the final manuscript.

Conflict of Interest

The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.
  45 in total

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3.  Urinary orosomucoid: a novel, early biomarker of sepsis with promising diagnostic performance.

Authors:  Péter Kustán; Balázs Szirmay; Zoltán Horváth-Szalai; Andrea Ludány; Gábor L Kovács; Attila Miseta; Tamás Kőszegi; Diána Mühl
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4.  Serum S100A12 may be a useful biomarker of disease activity in adult-onset Still's disease.

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Journal:  J Rheumatol       Date:  2014-10-01       Impact factor: 4.666

5.  Role of acute-phase protein ORM in a mice model of ischemic stroke.

Authors:  Jing-Jing Wan; Peng-Yuan Wang; Yu Zhang; Zhen Qin; Yang Sun; Bo-Han Hu; Ding-Feng Su; Dong-Ping Xu; Xia Liu
Journal:  J Cell Physiol       Date:  2019-04-26       Impact factor: 6.384

6.  Clinical features and current treatments of adult-onset Still's disease: a multicentre survey of 517 patients in China.

Authors:  Qiong-Yi Hu; Ting Zeng; Chuan-Yin Sun; Cai-Nan Luo; Shuang Liu; Ting-Ting Ding; Zong-Fei Ji; Anxin Lu; Kuerbanjiang Yimaiti; Jia-Lin Teng; Xiao-Bing Cheng; Jun-Na Ye; Yu-Tong Su; Hui Shi; Yue Sun; Hui-Hui Chi; Zhuo-Chao Zhou; Lin-Jie Chen; Jian Xu; Lin-Di Jiang; Li-Jun Wu; Jin Lin; Cheng-De Yang; Hong-Lei Liu
Journal:  Clin Exp Rheumatol       Date:  2019-09-27       Impact factor: 4.473

7.  Elevated urinary orosomucoid excretion as a novel biomarker in Crohn's disease.

Authors:  Balázs Szirmay; András Tárnok; Patrícia Sarlós; Nóra Szigeti; Andrea Ludány; Péter Kustán; Zoltán Horváth-Szalai; Attila Miseta; Tamás Kőszegi
Journal:  Eur J Clin Invest       Date:  2018-12-13       Impact factor: 4.686

8.  Urinary metabolic signatures of human adiposity.

Authors:  Paul Elliott; Joram M Posma; Queenie Chan; Isabel Garcia-Perez; Anisha Wijeyesekera; Magda Bictash; Timothy M D Ebbels; Hirotsugu Ueshima; Liancheng Zhao; Linda van Horn; Martha Daviglus; Jeremiah Stamler; Elaine Holmes; Jeremy K Nicholson
Journal:  Sci Transl Med       Date:  2015-04-29       Impact factor: 17.956

9.  Cytomegalovirus Infection May Trigger Adult-Onset Still's Disease Onset or Relapses.

Authors:  Jinchao Jia; Hui Shi; Mengguo Liu; Tingting Liu; Jieyu Gu; Liyan Wan; Jialin Teng; Honglei Liu; Xiaobing Cheng; Junna Ye; Yutong Su; Yue Sun; Wen Gong; Chengde Yang; Qiongyi Hu
Journal:  Front Immunol       Date:  2019-04-24       Impact factor: 7.561

10.  Cysteine-Rich Angiogenic Inducer 61 Serves as a Potential Serum Biomarker for the Remission of Adult-Onset Still's Disease.

Authors:  Yutong Su; Zhihong Wang; Junna Ye; Tienan Feng; Fan Wang; Huihui Chi; Zhuochao Zhou; Qiongyi Hu; Honglei Liu; Xiaobing Cheng; Hui Shi; Jialin Teng; Chengde Yang; Yue Sun
Journal:  Front Med (Lausanne)       Date:  2019-11-20
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  7 in total

1.  Serum Heparin-Binding Protein as a Potential Biomarker to Distinguish Adult-Onset Still's Disease From Sepsis.

Authors:  Rui Tian; Xia Chen; Chengde Yang; Jialin Teng; Hongping Qu; Hong-Lei Liu
Journal:  Front Immunol       Date:  2021-03-31       Impact factor: 7.561

Review 2.  Research Progress on Leucine-Rich Alpha-2 Glycoprotein 1: A Review.

Authors:  Yonghui Zou; Yi Xu; Xiaofeng Chen; Yaoqi Wu; Longsheng Fu; Yanni Lv
Journal:  Front Pharmacol       Date:  2022-01-05       Impact factor: 5.810

3.  Urine Proteomics Differentiate Primary Thrombotic Antiphospholipid Syndrome From Obstetric Antiphospholipid Syndrome.

Authors:  Zhuochao Zhou; Yijun You; Fan Wang; Yue Sun; Jialin Teng; Honglei Liu; Xiaobing Cheng; Yutong Su; Hui Shi; Qiongyi Hu; Huihui Chi; Jinchao Jia; Liyan Wan; Tingting Liu; Mengyan Wang; Ce Shi; Chengde Yang; Junna Ye
Journal:  Front Immunol       Date:  2021-08-19       Impact factor: 7.561

Review 4.  New insights on multigenic autoinflammatory diseases.

Authors:  Petros Efthimiou; Olga Petryna; Priscila Nakasato; Apostolos Kontzias
Journal:  Ther Adv Musculoskelet Dis       Date:  2022-09-03       Impact factor: 3.625

5.  An Immunological Axis Involving Interleukin 1β and Leucine-Rich-α2-Glycoprotein Reflects Therapeutic Response of Children with Kawasaki Disease: Implications from the KAWAKINRA Trial.

Authors:  Christoph Kessel; Isabelle Koné-Paut; Stéphanie Tellier; Alexandre Belot; Katja Masjosthusmann; Helmut Wittkowski; Sabrina Fuehner; Linda Rossi-Semerano; Perrine Dusser; Isabelle Marie; Nadja Boukhedouni; Helène Agostini; Céline Piedvache; Dirk Foell
Journal:  J Clin Immunol       Date:  2022-06-14       Impact factor: 8.542

Review 6.  Adult-Onset Still's Disease: Novel Biomarkers of Specific Subsets, Disease Activity, and Relapsing Forms.

Authors:  Beatrice Maranini; Giovanni Ciancio; Marcello Govoni
Journal:  Int J Mol Sci       Date:  2021-12-11       Impact factor: 5.923

7.  Proteome Analysis of Urinary Biomarkers in a Bovine IRBP-Induced Uveitis Rat Model via Data-Independent Acquisition and Parallel Reaction Monitoring Proteomics.

Authors:  Weiwei Qin; Xuyan Qin; Lujun Li; Youhe Gao
Journal:  Front Mol Biosci       Date:  2022-02-22
  7 in total

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