Volume 2019, Issue 1 5679518
Research Article
Open Access

Increased Serum Soluble Urokinase-Type Plasminogen Activator Receptor (suPAR) Levels in FSGS: A Meta-Analysis

Jiwon M. Lee

Jiwon M. Lee

Department of Pediatrics, Chungnam National University College of Medicine, Daejeon, Republic of Korea cnu.ac.kr

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Jae Won Yang

Jae Won Yang

Department of Nephrology, Yonsei University Wonju College of Medicine, Wonju, Gangwon, Republic of Korea yonsei.ac.kr

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Andreas Kronbichler

Andreas Kronbichler

Department of Internal Medicine IV (Nephrology and Hypertension), Medical University Innsbruck, Innsbruck, Austria i-med.ac.at

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Michael Eisenhut

Michael Eisenhut

Pediatric Department, Luton & Dunstable University Hospital NHS Foundation Trust, Luton, UK ldh.nhs.uk

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Gaeun Kim

Gaeun Kim

Keimyung University College of Nursing, Daegu, Republic of Korea kmu.ac.kr

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Keum Hwa Lee

Keum Hwa Lee

Department of Pediatric Nephrology, Severance Children’s Hospital, Seoul, Republic of Korea

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Jae Il Shin

Corresponding Author

Jae Il Shin

Department of Pediatric Nephrology, Severance Children’s Hospital, Seoul, Republic of Korea

Department of Pediatrics, Yonsei University College of Medicine, Seoul, Republic of Korea yonsei.ac.kr

Institute of Kidney Disease Research, Yonsei University College of Medicine, Seoul, Republic of Korea yonsei.ac.kr

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First published: 04 April 2019
Citations: 6
Academic Editor: Alvaro González

Abstract

Introduction. The soluble urokinase-type plasminogen activator receptor (suPAR) has been found to be elevated in primary focal segmental glomerulosclerosis (pFSGS). However, its usefulness as a biomarker for FSGS remains controversial. We conducted a meta-analysis aiming at investigating the significance of suPAR in diagnosing pFSGS. Methods. Electronic databases (PubMed and EMBASE) were searched to identify studies comparing suPAR levels in FSGS patients and controls, from the earliest available date to May 1, 2018. A random-effects model with standardized mean difference (SMD) was used for meta-analyses. Risk of bias was assessed using the Newcastle-Ottawa quality assessment scale. Results. A total of 187 articles were screened, and the final analysis included 13 articles. In comparison to healthy controls, serum suPAR levels were significantly increased in pFSGS patients (SMD, 1.07, 95% confidence interval (CI) 0.65 to 1.48; participants = 814; studies = 9, I2 = 85%). Higher suPAR levels were also found in patients with pFSGS compared to those with minimal change disease (SMD 0.53, 95% CI 0.22 to 0.84). Of note, such a difference was not found in pediatric groups (SMD 0.42, 95% CI -0.13 to 0.96) while it was more evidently noted in adult patients (SMD 1.32, 95% CI 0.90 to 1.74). Serum suPAR levels did not differ between pFSGS patients in remission compared to those in active proteinuric state (SMD 0.29, 95% CI -0.30 to 0.88). Comparison with membranous nephropathy and IgA nephropathy showed no significant difference. Conclusions. Our meta-analysis demonstrated that, in comparison to both healthy controls and controls with minimal change disease, suPAR levels were significantly higher in adult patients with pFSGS. suPAR levels did not differ between pFSGS patients during the initial period of diagnosis and those in remission.

1. Introduction

Primary focal segmental glomerulosclerosis (pFSGS) is a leading cause of glomerulonephritis which can progress to end-stage renal disease (ESRD). pFSGS is estimated to be responsible for 40% of adult and 20% of pediaric cases with nephrotic syndrome [1]. Prompt differential diagnosis of FSGS in a proteinuric patient is therefore an important step in the management and disease course. Efforts to discover potential novel biomarkers have been attempted to promote early diagnosis of pFSGS.

In the pathogenesis of pFSGS, circulating factors have been regarded as significant because in about 40% of patients, this disease recurs after transplantation [2, 3]. The soluble urokinase plasminogen activator receptor (suPAR) is a protein circulating in the human blood and body fluids, which is present at low concentration in healthy individuals and high levels in patients with infections, chronic kidney disease (CKD), and other inflammatory disorders [4]. In that, its usefulness as a biomarker has been investigated in various diseases, such as sepsis [5], pneumonia [6], chronic obstructive pulmonary disease (COPD) [7], and kidney diseases including pFSGS [3, 810]. Regarding pFSGS, suPAR has been proposed to be a marker for diagnosis and posttransplantation recurrence [1, 1113]. However, its significance and reliability as a diagnostic marker for pFSGS has later been refuted and still remains controversial [1416].

Hence, we conducted a meta-analysis of published studies that have measured suPAR in patients with pFSGS and controls, in order to investigate and review the usefulness of suPAR as a potential biomarker.

2. Methods

2.1. Literature Search and Study Selection

We performed a PubMed and EMBASE search to identify eligible articles. A forward search of the retrieved articles was performed, and “Google Scholar” was also assessed to screen for nonindexed publications. The last search in EMBASE and PubMed was performed on May 1, 2018. The search terms included focal segmental glomerulosclerosis OR FSGS AND soluble urokinase-type plasminogen activator receptor OR urokinase plasminogen OR suPAR. Records were managed by EndNote X8.0 (Clarivate Analytics, Philadelphia, PA, United States) to remove duplicates. Publications were screened first by title, second by abstract, and finally by full text, based on our eligibility criteria (Figure 1).

Details are in the caption following the image
Flow chart of literature search.  Abbreviations: SUPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis.

2.2. Inclusion and Exclusion Criteria

We included cross-sectional or longitudinal studies which compared serum suPAR levels in patients with pFSGS and healthy controls or non-FSGS glomerular diseases: minimal change disease (MCD), membranous nephropathy (MN), and immunoglobulin A nephropathy (IgAN). Studies which compared suPAR levels of active FSGS (defined as initial diagnosis or during relapse) with FSGS during remission were also included. We excluded studies that have measured suPAR levels in the urine or other body fluids. The exclusion criteria also included review articles, case reports, and animal experiments.

2.3. Data Extraction and Outcomes

Data extraction was carried out as recommended by the Cochrane handbook and included authors, year of publication, study design, participants, demographic characteristics, histopathology, and measurement of serum suPAR. Both review of full texts and extraction of data were independently performed by two reviewers (Lee JM and Yang JW). Any disagreement between the two primary reviewers was resolved by discussion with the third party (Shin JI).

Serum suPAR levels were collected as mean ± standard deviation (SD). Where data were given in median and interquartile ranges (IQR), we used the quantile method for estimating X (mean) and S (standard deviation) from mean and IQR, proposed by Wan and colleagues [17]:
(1)

2.4. Quality Assessment

This meta-analysis was conducted and reported according to the PRISMA (Preferred Reporting Items for Systematic Reviews and Meta-Analysis) statement (Supplementary Table S1). Risk of bias of individual studies at the outcome level was assessed by using the Newcastle-Ottawa Scale (NOS) (Supplementary Table S2).

2.5. Statistical Analysis and Evaluation of Heterogeneity and Publication Bias

In the meta-analysis, the standardized mean difference (SMD) method and corresponding 95% confidence intervals (CIs) were used to compare suPAR levels. Random effect models were used because of heterogeneity of the included studies. We assessed the heterogeneity of the studies by using the Cochran Q test, and a P value of <0.1 was considered significant. The inconsistency across the studies was also measured by the I2 metric, as a measure of the percentage of total variation across the studies because of the heterogeneity. I2 values of <25, 25-75, and >75% were considered to represent low, moderate, and high levels of heterogeneity, respectively. Publication bias of each article was estimated by inspecting the funnel plot and using the Egger test when there were 10 or more eligible studies. All analyses were conducted using Comprehensive Meta-Analysis v.2.0 (Biostat, Englewood, NJ, USA) and RevMan 5.3 (The Nordic Cochrane Centre).

3. Results

3.1. Study Selection and Characteristics

A total of 187 articles were identified using electronic and manual research. After reviewing titles and abstracts, 19 studies were selected for full-text reading. Of them, 6 were excluded (3 studies had no control groups and 3 studies were not available for the raw data) to finally include 13 eligible articles [1315, 1827]. The detailed process of article selection is shown in Figure 1. The respective characteristics of the included studies are described in detail in Table 1.

Table 1. Characteristics of all studies included in the meta-analysis.
Author, year Age group Study groups Estimated GFR (ml/min per 1.73 m2) N Gender M/F Age (mean ± SD or range) suPAR levels (pg/ml)
Bock et al., 2013 [18] Children Control N/A 29 N/A N/A 2430 ± 411
pFSGS 81.9 ± 47.3 20 12 : 8 12.1 ± 5.0 2676 ± 859
MCD 5 N/A N/A 3272 ± 1173
IgAN 3 N/A N/A 3190 ± 322
  
Huang et al., 2013 [15] Adult + children Control Graphs only 56 33 : 23 21-47 1793 ± 361
pFSGS 74 50 : 24 13-84 3163 ± 1596
MCD 14 7 : 7 17-71 2037 ± 323
MN 29 18 : 11 33-79 2085 ± 891
  
Franco Palacios et al., 2013 [19] Adult Control Inverse correlation with eGFR (R = −0.36, P = 0.003) 10 4 : 6 42.6 ± 9.6 2399 ± 487
pFSGS 28 N/A 51.2 ± 11.2 5795 ± 2193
  
Wada et al., 2014 [20] Adult Control Inverse correlation with eGFR (R2 = 0.242, P < 0.001) 17 9 : 8 45.3 ± 15.5 1745 ± 395
pFSGS 38 26 : 12 55.6 ± 16.3 3119 ± 1037
MCD 11 6 : 5 41.2 ± 18.1 2375 ± 589
MN 9 4 : 5 67.9 ± 10.3 3312 ± 655
IgAN 11 5 : 6 42.2 ± 20.8 2311 ± 777
  
Sinha et al., 2014 [14] Children Control 95.6 ± 25.4 83 42 : 41 8.3 ± 4.1 3021 ± 1417
pFSGS-A 105.3 ± 34.8a 46 83:37a 9.4 ± 4.8a 3104 ± 994
pFSGS-N Inverse correlation with eGFR (P < 0.001) 28 3695 ± 1374
pFSGS-R 52 a 3310 ± 1082
MCD-A 54 85:32b 7.8 ± 4.3b 3403 ± 1684
MCD-N 17 2947 ± 875
MCD-R 71 3204 ± 1176
  
Li et al., 2014 [13] Adult Control 125 ± 21 96 73 : 23 28 ± 8 1866 ± 481
pFSGS 100 ± 31 109 83 : 26 28 ± 14 3325 ± 1481
MCD No correlation with eGFR 20 17 : 3 19 ± 6 1779 ± 523
MN 22 19 : 3 40 ± 19 1707 ± 593
  
Meijers et al., 2014 [21] Adult pFSGS-A 62.5 (36.8–98.7) 44 31 : 13 47 (33 − 60) 3605 ± 1333
pFSGS-R 57.7 (47.2–92.4) 10 5 : 5 43 (39 − 70) 2824 ± 672
  
Segarra et al., 2014 [22] Adult pFSGS Inverse correlation with eGFR (r: –0.467, P < 0.001) 20 11 : 9 52.6 ± 16.2 3939 ± 849
MCD 16 6 : 10 34.5 ± 18.6 2669 ± 629
MN 24 16 : 8 53.7 ± 12.2 3373 ± 1073
  
Spinale et al., 2015 [23] Adult + children pFSGS 95 64 : 31 36 (17 − 52) 3207 ± 801
MCD 62 36 : 26 14 (6 − 25) 2513 ± 646
MN 52 32 : 20 54 (41 − 61) 3227 ± 951
IgAN 32 19 : 13 42 (32 − 54) 2997 ± 1065
  
Fujimoto et al., 2015 [24] Adult Control 20 15 : 5 29.5 (25.5 − 34.0) 165 ± 361
pFSGS 8 4 : 4 48 (29 − 68) 3393 ± 1057
MCD 12 7 : 5 47 (33.5 − 61.0) 3363 ± 1284
MN 15 11 : 4 66 (60.8 − 71.3) 3460 ± 1514
  
Jin et al., 2015 [25] Adult Control 69 39 : 30 35 (20 − 46) 2187 ± 1545
pFSGS 86 48 : 38 32 (16 − 78) 5082 ± 6233
MCD 65 34;31 39 (18 − 69) 3168 ± 3214
MN 85 50 : 35 51 (34 − 75) 4315 ± 5520
  
Chen et al., 2016 [26] Adult pFSGS 18 14 : 4 56.83 ± 8.29 3670 ± 170
MCD 22 19 : 3 36.00 ± 4.25 2030 ± 180
  
Sołtysiak et al., 2016 [27] Children Control Inverse correlation with eGFR 16 N/A 13.4 ± 2.5c 3230 ± 760
pFSGS (r: –0.643, P not given) 9 N/A 4470 ± 1390
MCD 22 N/A 3510 ± 1330
  • aData for all patients with FSGS; bdata for all patients with MCD; cdata for all participants in this study.  Abbreviation used: SUPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis; pFSGS-A: active primary FSGS in remission; pFSGS-R: pFSGS in remission; MCD: minimal change disease; MN: membranous nephropathy; IgAN: immunoglobulin A nephropathy; N: number; N/A: not available; SD: standard deviation.

The PRISMA checklist for meta-analysis is shown in Supplementary Table S1. The study quality assessed by using the Newcastle-Ottawa scale (NOS) scored 6 in nine studies and 7 in four studies (range, 1 (very poor) to 9 (very high); Supplementary Table S2).

3.2. Meta-Analysis of suPAR Levels in pFSGS Patients Compared to Healthy Controls

A meta-analysis on pFSGS patients and healthy controls was performed. Among the 13 studies, there were 9 studies which examined suPAR levels in 418 pFSGS patients and 396 healthy controls. The results revealed that suPAR levels were significantly higher in the pFSGS group compared with those in the control group (SMD 1.07, 95% CI 0.65 to 1.48; participants = 814; studies = 9; I2 = 85%) (Table 2; Figure 2). The overall mean concentration of serum suPAR was 4470 ± 1390 (pg/mL) in pFSGS groups and 2399 ± 487 (pg/mL) in the control group (Table 2). A funnel plot of standard error for this meta-analysis did not reveal significant publication bias (Figure 3).

Table 2. Summary of all meta-analysis data comparing primary FSGS with healthy and disease controls.
Group comparison No. of studies No. of subjects suPAR levels (pg/ml) Meta-analysis Heterogeneity
Std diff in means 95% CI I2 (%) Tau2 P
pFSGS vs. Controls 9 pFSGS 418 Controls 396 pFSGS 4470 ± 1390 Controls 2399 ± 487 1.07 0.65 1.48 85 0.31 <0.001
pFSGS vs. MCD 13 pFSGS 603 MCD 389 pFSGS 3550 ± 1456 MCD 2790 ± 1048 0.53 0.22 0.84 76 0.21 0.0009
pFSGS vs. MN 7 pFSGS 430 MGN 236 pFSGS 3604 ± 1865 MN 3069 ± 1600 0.36 -0.01 0.73 75 0.17 0.0005
pFSGS vs. IgAN 3 pFSGS 153 IgAN 46 pFSGS 3001 ± 899 IgAN 2833 ± 722 0.29 -0.30 0.88 52 0.14 0.33
pFSGS-A vs. FSGS-R 2 pFSGS-A 90 pFSGS-R 62 pFSGS-A 3355 ± 1164 pFSGS-R 3067 ± 877 0.16 -0.63 0.95 75 0.25 0.05
  • Abbreviations used: SUPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis; pFSGS-A: active primary FSGS in remission; pFSGS-R: pFSGS in remission; MCD: minimal change disease; MN: membranous nephropathy; IgAN: immunoglobulin A nephropathy.  P values were all two-tailed. Hedges’ g, random effect.
Details are in the caption following the image
Forest plot of random effects meta-analysis of serum suPAR levels in FSGS patients. Squares are proportional to study weight.  Abbreviations: SUPAR: soluble urokinase-type plasminogen activator receptor; FSGS: focal segmental glomerulosclerosis.
Details are in the caption following the image
Funnel plot of standard error in meta-analysis of serum suPAR levels in pFSGS patients compared with controls.  Abbreviations: SUPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis.

3.3. Meta-Analysis of suPAR Levels in pFSGS Patients Compared to Disease Controls

Ten studies compared suPAR levels in 503 patients with pFSGS and 296 with MCD, indicating significantly higher levels in patients with pFSGS compared to those with MCD, 3550 ± 1456 pg/mL and 2790 ± 1048 pg/mL (SMD 0.53, 95% CI 0.22 to 0.84; participants = 952; studies = 13; I2 = 85%) (Table 2; Figure 2). In this meta-analysis, the study by Sinha et al. [14] was counted separately for three times because they compared serum suPAR levels in three different groups: patients at active (nephrotic) state, patients in remission, and nonresponders.

Patients with pFSGS were compared with MN and IgAN patients for their serum suPAR levels. The results were statistically insignificant for FSGS (3604 ± 1865 pg/mL) versus MN (3069 ± 1600 pg/mL) (SMD 0.36, 95% CI -0.01 to 0.73; participants = 666; studies = 7) and FSGS (3001 ± 899 pg/mL) versus IgAN (2833 ± 722 pg/mL) (SMD 0.29, 95% CI -0.30 to 0.88; participants = 199; studies = 3).

3.4. Meta-Analysis of suPAR Levels in pFSGS Patients with and without Active Proteinuria

We compared serum suPAR levels in pFSGS patients with active proteinuria (n = 90) and those in remission of proteinuria (n = 62). The meta-analysisshowed that there was a trend towards higher suPAR levels during active disease which, however, did not yield significance (SMD 0.29, 95% CI -0.30 to 0.88; participants = 199; studies = 3) (Table 2; Figure 2).

3.5. Serum suPAR Levels in Pediatric and Adult Groups

We compared serum suPAR levels in pediatric and adult groups. The results revealed that children with pFSGS had no significant difference in their suPAR levels compared to any controls (Figure 4; Table 3). For adult patients, however, serum suPAR levels were significantly more elevated in pFSGS patients compared to both healthy controls and MCD controls. It showed statistically powerful results even after eliminating the outliers. In the comparison meta-analysis on adults with FSGS vs. MCD (1.5.4 of Figure 4), the study by Chen et al. [26] was counted as an outlier and not included for the final calculation. Basal serum levels of suPAR in both healthy and MCD controls were higher in children than adults (Table 3).

Details are in the caption following the image
Forest plot of meta-analysis of serum suPAR levels compared in children and adult groups.  Abbreviations: SUPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis; MCD minimal change disease.
Table 3. Comparison of pediatric and adult data.
Serum suPAR levels (No. of studies/No. of patients)
pFSGS Controls pFSGS MCD
Pediatric 3417 ± 1082 (3 studies, n = 75) 2894 ± 863 (3 studies, n = 128) 3451 ± 1140 (5 studies, n = 155) 3267 ± 1248 (5 studies, n = 169)
Adult 3979 ± 2266 (6 studies, n = 343) 1940 ± 605 (6 studies, n = 268) 3612 ± 1653 (8 studies, n = 448) 2492 ± 923 (8 studies, n = 220)
  • suPAR: soluble urokinase-type plasminogen activator receptor; pFSGS: primary focal segmental glomerulosclerosis; MCD: minimal change disease.

3.6. Assessment of Heterogeneity and Publication Bias

We assessed statistical heterogeneity between the included studies (Table 2). Since the I2 test showed a value > 50%, indicating substantial heterogeneity, we used random effect models for meta-analyses. The funnel plot showed near symmetry (Figure 2).

4. Discussion

The usefulness of suPAR as a biomarker of FSGS has been a controversial issue. In an in vitro model, Alfano et al. showed that suPAR induces downmodulation of nephrin in human podocytes and that it may result in renal dysfunction in different human pathologies characterized by increased concentration of suPAR [28]. Elevation of suPAR levels was demonstrated in patients with pFSGS as well. Wei and colleagues, in their comprehensive study, reported a marked elevation of suPAR levels in two large cohorts, 84.3% (North American) and 55.3% (the European PodoNet) of pFSGS patients compared with 6% of controls [11]. Such an observation was consistently noted when compared to patients with other glomerulonephritis [10, 11, 13, 15, 29]. Serum suPAR levels correlated with proteinuria and declined estimated glomerular filtration rate (eGFR) [11, 13]. Furthermore, suPAR has been demonstrated to correlate with development of recurrent FSGS after kidney transplantation (KT) [30].

However, other investigators found that serum suPAR levels in FSGS were similar to controls and questioned its significance as a biomarker and that suPAR failed to discriminate pFSGS from other glomerulonephritis forms such as MCD, MN, IgAN, lupus nephritis, or nonglomerular CKD [3, 14, 1823, 3134]. Moreover, elevated serum suPAR levels have been demonstrated in patients with nonrenal conditions, such as cancer, sepsis, systemic inflammatory response syndrome (SIRS), and cardiovascular disease, and have been shown to be associated with a poor clinical outcome [3537]. In addition, it has been suggested that the inverse correlation between suPAR and eGFR may be due to impaired renal excretion itself, rather than its function as a biomarker [14]. The results from these studies implied that while suPAR may indeed be increased in pFSGS, it might be nonspecifically involved in the pathogenesis of various diseases.

We propose the following explanations for pleiotropic effects of suPAR:

First, different isoforms and glycosylation statuses of suPAR may have different impacts. suPAR is present in variable forms from suPAR I to III. Trachtman et al. considered that it is likely that while all forms of suPAR can bind to αvβ3 integrin which is a key modulator in the pathogenic process in podocytes, its subsequent activation might vary depending on the specific form of suPAR [38]. Moreover, Maas et al. speculated that the vitronectin-binding capacity of suPAR fragments might determine the activity as a FSGS factor [16]. In addition, the glycosylation status of suPAR may influence inducing proteinuria in pFSGS [39]. Since the currently available ELISA kit can only detect glycosylated suPAR of full length [39], characterization of the different isoforms and their biologic activity should later be addressed [3].

Second, modifying factors may have mediated suPAR-induced activation of αvβ3 integrin. Loss of podocyte-protective factors or an underlying permissive genetic background has been proposed [3, 40]. Recently, SMPDL-3b was reported as an important regulator of suPAR-induced activation of αvβ3 integrin signaling in podocytes by Yoo et al. [41].

Third, major confounders of suPAR need to be controlled. In normal populations, higher suPAR levels were found in women, smokers, older subjects, and African race [3, 42, 43]. These factors are required to be matched or adjusted when selecting healthy or disease controls. Furthermore, serum levels of inflammation markers (i.e., C-reactive protein (CRP) or erythrocyte sedimentation rate (ESR)) and renal function (GFR) need to be adjusted for, as inflammation itself can affect suPAR and low GFR may amplify suPAR levels due to impaired clearance [3].

Fourth, with regard to statistics, most of the studies performed simple comparison analysis presenting the differences in suPAR levels among groups. A more powerful study would require performing multiple logistic regression analysis to find independent predictors and receiver operating characteristic (ROC) curve analysis to calculate sensitivity and specificity [3].

In the present meta-analysis, serum suPAR levels were elevated in pFSGS patients compared to controls and this finding was consistent when compared to MCD, but not for MN or IgAN. We postulate that the results may still imply a potential role of suPAR in differential diagnosis of pFSGS from other forms of nephrotic glomerulonephritis, since distinguishing FSGS from MCD has long been a diagnostic challenge. However, we also noticed that serum suPAR levels had no significant difference in children and that we also found that serum FSGS levels were generally elevated overall in children than in adults. This finding may be biased due to the absolute paucity of pediatric data or have been affected by elevated basal suPAR levels in pediatric controls. In either case, we propose that future studies on serum suPAR should better be age-stratified.

Moreover, the results must be interpreted with caution for the following reasons. First, pFSGS is a heterogeneous disorder with diverse etiopathogenesis and different histopathology. Sometimes, even misclassification may occur since the distinction between primary and secondary FSGS may not always be feasible [3]. Since the etiology has a wide spectrum, it is important to specify the subgroup of patients in whom suPAR is the contributing circulating factor [44]. It has also been suggested that the role of suPAR should be interpreted in the context with recurrent FSGS after KT, which is considered to be circulating factor-mediated [3]. In short, the effect of circulating factors, such as suPAR on pFSGS, may have a different impact depending on the etiopathology. Second, there is still paucity of data. The present meta-analysis contained 13 studies and even fewer for subgroup analysis. Further subgroup comparisons including histopathology, gender, age, and ethnicity groups were not available. In addition, although there were studies that reported the correlation of serum suPAR with eGFR [13, 14, 19, 20, 22, 27], subgroup analyses by eGFR were not feasible because the data were not differentially present according to eGFR. Further meta-analyses containing studies with more patients would help in verifying the results of the present study.

Our study has some limitations. There were a few (three) studies excluded from the full-text research due to lack of raw data. In addition, some studies did not present the mean ± standard deviation (SD), hampering the meta-analysis. Also, there remains the possibility of existing case reports or series that were not accessible. In future studies, an individual patient data meta-analysis and propensity score matching would be powerful in investigating whether suPAR could be a reliable surrogate biomarker of pFSGS.

Although the results require cautious interpretation, the study provides evidence based on current publications. The present meta-analysis showed that serum suPAR was increased in patients with pFSGS compared to controls and also differentially among other glomerulonephritis forms. suPAR levels did not differ between pFSGS patients with active disease and those in remission. Further studies are needed to investigate its clinical usefulness as a biomarker.

Conflicts of Interest

All of the authors declare no competing interest.

Authors’ Contributions

Jiwon M. Lee and Jae Won Yang contributed equally to this work.

Acknowledgments

This study was supported by Chungnam National University Hospital Research Fund, 2017.

    Data Availability

    The raw data supporting this meta-analysis are from previously reported studies and datasets, which have been cited. The processed data are included within the article. The full processed data in detail are also available from the corresponding author upon request.

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