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Article

Circulating Renalase as Predictor of Renal and Cardiovascular Outcomes in Pre-Dialysis CKD Patients: A 5-Year Prospective Cohort Study

by
Ana Cerqueira
1,2,3,*,†,
Janete Quelhas-Santos
2,3,
Inês Ferreira
1,2,3,
Susana Sampaio
1,2,3,
Miguel Relvas
1,
Nídia Marques
1,
Cláudia Camila Dias
4,5 and
Manuel Pestana
1,2,3
1
Nephrology Department, Centro Hospitalar Universitário São João, 4200-319 Porto, Portugal
2
Department of Medicine, Faculty of Medicine, University of Porto, 4200-250 Porto, Portugal
3
Institute for Innovation and Health Research (I3S), Institute of Biomedical Engineering (INEB), Nephrology and Infectious Diseases Research Group, University of Porto, 4200-250 Porto, Portugal
4
Department of Community Medicine Health Information and Decision, Faculty of Medicine, University of Porto, 4200-250 Porto, Portugal
5
CINTESIS–Center for Health Technology and Services Research, 4200-250 Porto, Portugal
*
Author to whom correspondence should be addressed.
Current Address: Nephrology Department São João Hospital Center, EPE Alameda Prof. Hernâni Monteiro 4200-319, Porto, Portugal.
Life 2021, 11(3), 210; https://doi.org/10.3390/life11030210
Submission received: 7 December 2020 / Revised: 17 February 2021 / Accepted: 1 March 2021 / Published: 8 March 2021
(This article belongs to the Collection Research Updates in Chronic Kidney Disease)

Abstract

:
Chronic kidney disease (CKD) is an independent risk factor for adverse cardiovascular and cerebrovascular events (MACCEs), and mortality since the earlier stages. Therefore, it is critical to identify the link between CKD and cardiovascular risk (CVR) through early and reliable biomarkers. Acknowledging that CKD and CKD progression are associated with increased sympathetic tone, which is implicated in CVR, and that renalase metabolizes catecholamines, we aimed to evaluate the relationship between renalase serum levels (RNLS) and cardiovascular and renal outcomes. The study included 40 pre-dialysis CKD patients (19F:21M) with median age of 61 (IQ 45–66) years. At baseline, we measured RNLS as well as routine biomarkers of renal and cardiovascular risk. A prospective analysis was performed to determine whether RNLS are associated with CKD progression, MACCEs, hospitalizations and all-cause mortality. At baseline, the median level of RNLS and median estimated glomerular filtration rate (eGFR) were 63.5 (IQ 48.4–82.7) µg/mL and 47 (IQ 13–119) mL/min/1.73 m2, respectively. In univariate analysis, RNLS were strongly associated with eGFR, age and Charlson Index. Over the course of a mean follow-up of 65 (47 to 70) months, 3 (7.5%) deaths, 2 (5%) fatal MACCEs, 17 (42.5%) hospital admissions occurred, and 16 (40%) patients experienced CKD progression. In univariate analysis, RNLS were associated with CKD progression (p = 0.001), hospitalizations (p = 0.001) and all-cause mortality (p = 0.022) but not with MACCEs (p = 0.094). In adjusted analysis, RNLS predicted CKD progression and hospitalizations regardless of age, Charlson comorbidity index, cardiovascular disease, hypertension, diabetes and dyslipidemia. Our results suggest that RNLS, closely related with renal function, might have a potential role as predictor of renal outcomes, hospitalizations, and mortality in pre-dialysis CKD patients.

1. Introduction

Patients with chronic kidney disease (CKD) present markedly increased rates of mortality and cardiovascular disease (CVD) and most of these patients are more likely to die than progress to end-stage renal disease (ESRD) [1,2]. In addition, CKD progression is also associated with increased CVD risk and CV mortality [3], even after adjusting for the coexisting multiple traditional and nontraditional risk factors [4,5,6,7,8,9,10,11]. Enhanced sympathetic activity is observed in CKD and it has been clearly shown that it is an important predictor of both mortality and increased risk of CVD [12]. In 2005, during the search to identify proteins secreted by the kidney, that could help explain the high incidence of CVD in patients with CKD and represent new therapeutic targets; a team of researchers by Yale University discovered renalase (RNLS). Renalase is secreted by the kidneys into both the circulatory stream and urine, where it could metabolize catecholamines [12,13]. Levels of RNLS have been reported to be higher in patients with hypertension than healthy individuals [14] and positively associated with blood pressure in clinical studies [15]. In addition, recent studies including non-CKD patients point to a correlation between RNLS and atrial fibrillation, advanced left auricular remodeling [16], coronary artery disease, decreased ejection fraction [14] and to an increased risk of myocardial infarction and stroke [17]. One retrospective study including CKD patients demonstrated an association between RNLS and all-cause mortality and adverse renal outcomes [18].
In the present study, we aimed to analyze, in a cohort study, the association of circulating RNLS with renal function and other biomarkers of CV risk, in pre-dialysis CKD patients and prospectively analyze the role of RNLS as a predictor of cardiovascular and renal risk, assessing its relationship with hard outcomes such as progression of CKD, hospitalizations, major adverse cardiovascular/cerebrovascular events (MACCEs) and mortality.

2. Methods

The study population included a cohort of 40 pre-dialysis CKD patients followed-up in the outpatient clinic of the Nephrology Department of São João University Hospital Centre. Patients with acute kidney injury, recent hospital admission (<2 weeks), active or recent infections (<1 week) and known psychiatric disturbances were excluded from the study.
At baseline, the etiology of the renal disease, CKD stage classification and a validated comorbidity index (Charlson Index) were determined in all recruited patients. Anthropometric measurements, systolic and diastolic blood pressure (mean of 3 measurements) and serum levels of creatinine, urea, phosphate, parathormone, C reactive protein and proteinuria were evaluated. In addition, blood samples were collected for assessment of RNLS using Uscn Life Science Inc. (Wuhan, China) ELISA kit.
All selected patients were prospectively followed up for a median of 65 (47–70) months, to evaluate hard renal and CV outcomes including progression of CKD and ESRD, hospitalizations, MACCEs as well as CV and all-cause mortality. Data on the occurrence of death, MACCEs [acute coronary syndrome (ACS), heart failure and stroke], hospitalizations and CKD progression were obtained through regular follow-up, complemented by electronic medical records. Renal outcomes included CKD progression, defined as serum creatinine doubling or a >50% decrease in eGFR according to CKD-EPI formula, and renal replacement therapy initiation (ESRD) after enrolment.

Statistical Analysis

Continuous variables were described as minimum, percentile 25, median, percentile 75 and maximum deviations, and categorical variables were presented as absolute (n) and relative frequencies (%). Differences in continuous variables were assessed by Mann–Whitney U test, while Chi-square tests were used to analyze differences in categorical variables. A correlation analysis was performed using Spearman correlation coefficients. Logistic regression models were used to visualize the relationships between RNLS and CKD progression and hospitalizations. A p < 0.05 was considered statistically significant.

3. Ethics

The research was approved by the Ethics Committee for Health and the Local Institutional Review Board of São João University Hospital Centre (CES 251.14) and was carried out in accordance with the Declaration of Helsinki (2008) of the World Medical Association.

4. Results

A total of 40 pre-dialysis CKD patients (median age of 61 years; IQ 45–66), male/female (21/19), were enrolled in the study. The baseline demographic, clinical and analytical characteristics of the recruited patients are summarized in Table 1.
The median eGFR was 47 (13–119) mL/min/1.73 m2: seventeen patients were included in stages 1–2, nine patients in stages 3a–3b and fourteen patients in stages 4–5. The most frequent etiology of CKD was diabetic nephropathy (15%). Body mass index (BMI) was 27.5 (IQ 25–30) kg/m2 and median Charlson index was 4.5 (IQ 2.0–6.0).
Mean RNLS were 65.5 (IQ 48.2–82.69) µg/mL. Renalase levels were significantly higher in patients with more advanced CKD stages, and were closely related with eGFR decline (Figure 1). In addition, RNLS were negatively correlated with hemoglobin levels (r = −0.360, p = 0.023) and HDL cholesterol (r = −0.455, p = 0.004) and were positively correlated with age (r = 0.407, p = 0.009), Charlson Index (r = 0.704, p < 0.001), serum urea (r = 0.818, p < 0.001), serum creatinine (r = 0.877, p < 0.001), serum phosphate (r = 0.590, p < 0.001), iPTH (r = 0.694, p < 0.001), triglycerides (0.383, p = 0.016), uric acid (r = 0.565, p < 0.001) and BNP (r = 0.546. p = 0.003) (Table 2). Baseline cardiovascular risk factors, including hypertension, diabetes, dyslipidemia or cerebrovascular disease did not significantly associate with RNLS. However, patients with cardiovascular disease had significantly higher RNLS (59.44 vs. 76.64 µg/mL, p = 0.028) (Table 3).
Over the course of a median follow-up period of 65 (47 to 70) months, 3 patients died, 2 patients suffered a fatal MACCE, 17 patients had at least one hospital admission and 16 patients experienced CKD progression, of which 12 progressed to ESRD and started renal replacement therapy (RRT) (Table 4). Renalase levels were higher at baseline in patients with CKD progression during follow-up (median 80.40 vs. 51.79, p = 0.001), in patients with hospitalizations (median: 81.43 vs. 53.86, p = 0.001) and in patients who died (median: 95.20 vs. 60.22, p = 0.022) (Table 5). In adjusted analysis, RNLS predicted CKD progression and hospitalizations regardless of age, Charlson comorbidity index, cardiovascular disease, hypertension, diabetes and dyslipidemia (Table 6). The small number of events (n = 3) prevented us from performing an adjusted analysis to mortality.

5. Discussion

In the present study, we investigated the association between RNLS and traditional CV risk factors including eGFR in a cohort of non-dialysis CKD patients. In addition, we examined the role of RNLS as a biomarker of CV and renal outcomes in this pre-dialysis CKD patient population, prospectively followed-up for more than 5 years. Our main findings were the following: (i) RNLS are closely correlated with the decrease in eGFR in pre-dialysis CKD patients; (ii) RNLS are associated with cardiovascular disease in pre-dialysis CKD patients; (iii) Pre-dialysis CKD patients with higher RNLS at baseline presented higher rates of progression of CKD, hospitalizations and mortality, but not MACCEs.
In the present study, we found that RNLS assessed by a commercially available ELISA kit were strongly and inversely associated with eGFR. Our results agree well with the previous observations from our and other groups that reported that RNLS assessed by ELISA assay with specific monoclonal antibody are negatively associated with renal function. In the recent literature, seven studies were carried out in CKD patients stages 1 to 4, and five of them provided evidence for a negative relationship between RNLS and eGFR (Table 7). The other two studies reporting discrepant results used different commercial ELISA kits to access RNLS, which may justify the different observations (Table 7). Findings similar to ours showing inverse correlation between RNLS and eGFR were also reported in other CKD populations, including kidney transplant recipients [19,20], patients on peritoneal dialysis [21] and patients on hemodialysis [22] (Table 7).
Because our study included patients with stages 1 to 5 CKD, the strong and inverse association observed between circulating RNLS and renal function reinforces the view that RNLS may represent a useful biomarker for early identification of renal dysfunction in stable pre-dialysis CKD patients.
In our study baseline, CVR factors including hypertension, diabetes, dyslipidemia or cerebrovascular disease did not significantly associate with higher RNLS. There is controversy in the literature regarding the association of hypertension and RNLS. The lack of association between hypertension and RNLS in our study can be explained on the basis that most patients were considered hypertensive because they were on anti-hypertensive medication, although their average blood pressure levels were near normal.
In our pre-dialysis CKD population, patients with cardiovascular disease had significantly higher RNLS. This agrees well with the findings by Gluba-Brzózka et al., that reported higher RNLS in CKD patients with coronary artery disease and further suggested a possible role of RNLS in its pathogenesis.
Our patient population was prospectively followed-up for more than 5 years. During this period, we found that 42.5% of the patients had at least one hospital admission for medical cause, 40% suffered a significant decline in eGFR and 30% progressed to ESRD. Nevertheless, only 3 deaths where registered, of which 2 were from MACCEs. In univariate analysis, positive associations were observed between baseline RNLS and all-cause mortality, hospitalizations, and CKD progression but not with the occurrence of MACCEs. These results are in line with those observed in the retrospective analysis of the data from the K-STAR study including 383 pre-dialysis CKD patients. The authors reported that RNLS were not associated with the occurrence of MACCEsl; nevertheless, they found that each 10 μg/mL increase in RNLS was associated with a significantly greater hazard of all-cause mortality and adverse renal outcomes [18]. In adjusted analysis, RNLS predicted CKD progression and hospitalizations regardless of age, Charlson index, cardiovascular disease, diabetes, hypertension or dyslipidemia. It should be emphasized that our results were obtained in a cohort of pre-dialysis CKD patients that were already on renoprotective therapy (95% were on ACEI/ARBs). Taken together, our findings suggest that RNLS can be, not only a biomarker of renal function but, may also provide valuable information in prediction of relevant outcomes in CKD patient population.
We acknowledge some limitations of our study. First, this is a single-center study with a relatively small number of patients and the inherent selection bias; second, we did not enroll healthy subjects as controls for comparing RNLS to those with established CKD; third, the small number of outcomes observed, notwithstanding the 5 years of follow-up, may have jeopardized the analysis. Nonetheless, to our knowledge, this is the first study to prospectively assess the role of RNLS as predictor of CV and renal outcomes in a pre-dialysis CKD population.
In conclusion, our results show that RNLS are closely related with renal function in pre-dialysis CKD patients. It is also suggested that the role of circulating RNLS may be a useful biomarker to predict renal outcomes, hospitalizations and mortality in pre-dialysis CKD patients. Further studies are needed to explore the possible role of RNLS as a new therapeutic target in the prevention and treatment of CKD and cardiovascular diseases.

Author Contributions

Conceptualization, A.C., J.Q.-S. and M.P.; methodology, A.C., J.Q.-S., I.F. and S.S.; software, A.C., J.Q.-S., and C.C.D.; validation, A.C., J.Q.-S. and C.C.D.; formal analysis, A.C., J.Q.-S. and C.C.D.; investigation, A.C., J.Q.-S., I.F., S.S., M.R., N.M.; C.C.D. and M.P.; resources, A.C., J.Q.-S., I.F., S.S., M.R., N.M.; C.C.D. and M.P.; data curation, A.C., J.Q.-S., I.F., S.S., M.R., N.M. and C.C.D.; writing—original draft preparation, A.C., J.Q.-S., C.C.D. and M.P.; writing—review and editing, A.C., J.Q.-S. and M.P.; visualization, A.C., J.Q.-S., I.F., S.S., M.R., N.M.; C.C.D. and M.P.; supervision, M.P. and J.Q.-S.; project administration, J.Q.-S. and M.P.; funding acquisition, M.P., J.Q.-S. and A.C. All authors have read and agreed to the published version of the manuscript.

Funding

This work was financed by FEDER-Fundo Europeu de Desenvolvimento Regional funds through the COMPETE 2020-Operacional Programme for Competitiveness and Internationalisation (POCI), Portugal 2020, and by Portuguese funds through FCT-Fundação para a Ciência e a Tecnologia/Ministério da Ciência, Tecnologia e Ensino Superior in the framework of the project “Institute for Research and Innovation in Health Sciences” (POCI-01-0145-FEDER-007274), and a grant from Portuguese Society of Nephrology.

Institutional Review Board Statement

This study was approved by the Ethics Committee for Health and the Local Institutional Review Board of São João University Hospital Centre (approval number CES 251.14) and was carried out in accordance with the Declaration of Helsinki (2008) of the World Medical Association.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

The data presented in this study are available on request from the corresponding author.

Acknowledgments

This article is a result of the project NORTE-01-0145-FEDER-000012, supported by Norte Portugal Regional Operational Programme (NORTE 2020), under the Portugal 2020 Partnership Agreement, through the European Regional Development Fund (ERDF). We thank R Roncon-Albuquerque for the kind assistance in revising the manuscript.

Conflicts of Interest

All the authors declare that there is no conflict of interest.

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Figure 1. Circulating renalase levels according to increased CKD stages. Significant differences between CKD 4 + 5 and CKD 1 + 2 (p < 0.05).
Figure 1. Circulating renalase levels according to increased CKD stages. Significant differences between CKD 4 + 5 and CKD 1 + 2 (p < 0.05).
Life 11 00210 g001
Table 1. Baseline demographic, clinical and analytical characteristics of the study population (n = 40).
Table 1. Baseline demographic, clinical and analytical characteristics of the study population (n = 40).
Variable
Follow-Up (months), median (P25–P75)65.4(57.4–68.6)
Demographic data
  Gender (male), n (%)21(52.5)
  Age (years), median (P25–P75)61(45–66)
  Charlson Index, median (P25–P75)4.5(2–6)
Clinical data
  Systolic blood pressure (mmHg), (P25–P75)137(117–150)
  Diastolic blood pressure (mmHg), (P25–P75)76(66–83)
  Body mass index (kg/m2), median (P25–P75)27.5(25–30)
  ACEI/ARBs, n (%)38(95.0)
Renalase levels (ug/mL), median (P25–P75)63.53(48.42–82.69)
CKD related parameters
  Diabetic Nephropathy n (%)6(15.0)
  eGFR CKD–EPI (mL/min/1.3 m2), median (min–max)47(13–119)
  Creatinine (mg/dL), median (P25–P75)1.44(1.02–2.46)
  Urea (mg/dL), median (P25–P75)73.5(44.5–109.0)
  Calcium (mg/dL), median (P25–P75)4.75(4.60–4.90)
  Phosphate (mg/dL), median (P25–P75)3.25(2.90–4.00)
  Parathormone (pg/mL), median (P25–P75)97.0(45.0–120.0)
  25-OH-Vitamin D (ng/mL), median (P25–P75)20(11–31)
  Protein/creatinine ratio (mg/g), median (P25–P75)455.5(154.2–966.8)
Cardiovascular related parameters
  Hemoglobin (g/dL), median (P25–P75)12.7(11.60–13.75)
  Albumin (g/dL), median (P25–P75)41.05(39.20–43.55)
  Total Cholesterol (mg/dL), median (P25–P75)184(155–207)
  HDL Cholesterol (mg/dL), median (P25–P75)49(41–59)
  Triglycerides (mg/dL), median (P25–P75)121(95–180)
  Uric Acid (mg/dL), median (P25–P75)6.4(5.3–8.7)
  C reactive protein (mg/L), median (P25–P75)2.2(1.2–5.7)
  BNP (pg/mL), median (P25–P75)66.0(24.0–177.0)
eGFR: estimated glomerular filtration rate; BNP: B-type natriuretic peptide; ACEI—Angiotensin Converting Enzyme Inhibitors ARBs—Angiotensin II receptor blockers.
Table 2. Associations between RNLS and Routine Biomarkers of Renal and Cardiovascular Risk.
Table 2. Associations between RNLS and Routine Biomarkers of Renal and Cardiovascular Risk.
Renalase
Spearman Correlationp-Value
Demographic data
  Age (years)0.4070.009
  Charlson Index0.704<0.001
CKD related parameters
  eGFR CKD-EPI (mL/min/1.73 m2)−0.883<0.001
  Creatinine (mg/dL)0.877<0.001
  Urea (mg/dL)0.818<0.001
  Protein/creatinine ratio (mg/g)0.1330.426
  Phosphate (mg/dL)0.590<0.001
  Parathormone (pg/mL)0.694<0.001
  25-OH-Vitamin D (ng/mL)0.1630.357
Cardiovascular related parameters
  Hemoglobin (g/dL)−0.3600.023
  Albumin (g/dL)−0.0950.559
  Total Cholesterol (mg/dL)−0.2360.480
  HDL Cholesterol (mg/dL)−0.4550.004
  Triglycerides (mg/dL)0.3830.016
  Uric Acid (mg/dL)0.565<0.001
  C reactive protein (mg/L)0.1530.372
  BNP (pg/mL)0.5460.003
eGFR: estimated glomerular filtration rate; BNP: B-type natriuretic peptide.
Table 3. Associations between RNLS and patients’ comorbidities.
Table 3. Associations between RNLS and patients’ comorbidities.
Renalase
P25MedianP75np-Value
Hypertension
No33.9445.5183.8840.279
Yes49.1868.1782.6936
Diabetes
No42.0361.4278.60290.209
Yes54.0665.6399.5411
Dyslipidemia
No41.2051.6977.62160.104
Yes56.2371.3583.7423
Cardiovascular disease
No40.9559.4478.60290.028
Yes70.7176.6486.6111
Cerebrovascular disease
No47.9860.8283.31380.420
Yes75.6478.5481.432
Table 4. Cardiovascular and renal outcomes during follow-up in the studied population.
Table 4. Cardiovascular and renal outcomes during follow-up in the studied population.
Outcomen (%)
MACCEs2 (5.0)
  Acute myocardial infarction1 (2.5)
  Stroke1 (2.5)
Hospital admission for medical causes17 (42.5)
Death3 (7.5)
  Death by MACCEs2 (5)
CKD progression16 (40.0)
  RRT12 (30.0)
MACCEs: major adverse cardiovascular and cerebrovascular events; RRT: Renal Replacement Therapy.
Table 5. Association between RNLS and outcomes.
Table 5. Association between RNLS and outcomes.
Renalase
Median (P25–P75)p-Value 1
CKD progression 0.001
No51.79 (40.6–73.5)
Yes80.4 (62.93–88.07)
Mortality 0.022
No60.22 (48–78.6)
Yes95.20 (81.4–113.9)
Hospitalization 0.001
No53.86 (40.4–71.4)
Yes81.43(65.6–95.1)
MACCEs 0.094
No60.82 (48–82.1)
Yes95.12 (81.4–108.1)
1—Mann–Whitney test; MACCES: major adverse cardiovascular and cerebrovascular events.
Table 6. Linear regression: association between CKD progression and hospitalizations (dependent variables) and renalase, adjusted to renal function, age, Charlson comorbidity index, cardiovascular disease, hypertension, diabetes and dyslipidemia.
Table 6. Linear regression: association between CKD progression and hospitalizations (dependent variables) and renalase, adjusted to renal function, age, Charlson comorbidity index, cardiovascular disease, hypertension, diabetes and dyslipidemia.
CKD ProgressionHospitalizations
ORIC 95%pORIC 95%p
Model 1
Renalase1.0551.015–1.0960.0071.0711.025–1.1190.002
Hosmer Lemeshow p-value0.5650.797
Model 2
Renalase1.0641.019–1.1120.0051.0741.025–1.1260.003
Age0.9710.921–1.0230.2650.9880.937–1.0410.645
Hosmer Lemeshow p–value 0.095 0.673
Model 3
Renalase1.0501.001–1.1010.0441.0621.008–1.1190.023
Charlson comorbidity index1.0600.715–1.5700.7731.1170.740–1.6840.599
Hosmer Lemeshow p-value 0.840 0.521
Model 4
Renalase1.0681.021–1.1170.0041.0671.020–1.1160.005
Cardiovascular disease0.2690.045–1.6070.1501.5180.287–8.0280.623
Hosmer Lemeshow p-value0.6460.848
Model 5
Renalase1.0541.015–1.0950.0071.0701.024–1.1170.002
Hypertension2.2610.084–60.5500.6272.9540.057–153.3690.591
Hosmer Lemeshow p-value0.4770.789
Model 6
Renalase1.0551.012–1.1010.0121.0741.023–1.1270.004
Diabetes3.3330.635–17.5020.1553.0500.517–17.9840.218
Hosmer Lemeshow p-value0.7750.775
Model 7
Renalase1.0521.012–1.0950.0111.0721.026–1.1210.002
Dyslipidemia2.4130.510–11.4230.2670.7970.157–4.0580.785
Hosmer Lemeshow p-value0.5610.461
Table 7. Data from the most Relevant and Recent Studies Evaluating Renalase by ELISA in CKD Patients.
Table 7. Data from the most Relevant and Recent Studies Evaluating Renalase by ELISA in CKD Patients.
Levels of Circulating Renalase by Elisa KitCorrelation with Renal and CV Outcomes
CKD Patients Stages 1–4
A. Gluba-Brzózka et al. 2014 [23]
139 CKD patients
45 healthy volunteers
Increased concentrations of renalase
control vs. CKD group
251.0 ± 157 vs. 316.1 ± 155.3 ng/mL, p = 0.026
USCN Life Science, E92845Hu
Increased concentration of osteocalcin, renalase, MMP-2 and TIMP-2 suggest that these factors may be involved in the pathogenesis of CAD in patients with CKD.
J. Quelhas-Santos et al. 2014 [20]
26 ESRD patients
Plasma renalase levels (ug/mL)
4.7 ± 0.5 LKD
29.4 ± 4.0 LKR before TX (p < 0.05)
USCN Life Science, E92845Hu
Plasma renalase levels closely depend on renal function and sympathetic nervous system activity.
F. Wang et al. 2015 [15]
87 CKD patients stages I to IV
Renalase levels not different between groups CKD1–2 (162.1 ± 40.1 ng/L) vs. healthy control group (167.8 ± 69.4 ng/L)
group CKD3–5 (217.4 ± 103.8 ng/L) were significantly increased compared with group CKD1–2 (p < 0.05)
ELISA Yaji Biological Corp
Serum renalase levels were positively correlated with CKD stage (p < 0.05), while negatively correlated with eGFR (p < 0.05)
S. H. Baek et al. 2019 [18]
383 patients with CKD
Mean level of serum renalase was 75.8 ± 34.8 μg/mL
ELISA Cloud Clone Corp
Higher serum creatinine levels were significantly associated with a higher renalase levels.
Increase in serum renalase was associated with all-cause mortality and adverse renal outcomes, but not associated with the rate of MACCEs.
P. Skrzypczyk et al. 2019 [24]
38 children with CKD (stage G2-5)
38 healthy children
Renalase level was higher in the study group compared to control group values (p < 0.001)
ELISA CloudClone Corp
In multivariate analysis GFR (β = −0.63, p < 0.001), was determinant of renalase
In children with CKD there is a strong correlation between renalase level and CKD stage.
M. Wiśniewska et al. 2019 [25]
155 white patients with CKD
30 healthy controls
Serum renalase levels were higher in patients with CKD than in controls: median (Q1-Q3), 103 ng/mL (55.6–166 ng/mL) vs. 17.7 ng/mL (16.3–21.8 ng/mL); p < 0.001
ELISA kit EIAab
No association between serum renalase and eGFR.
No associations were found between renalase concentrations and other causes of CKD.
N. M. Serwin et al. 2020 [26]
62 CKD patients stages I to IV
28 healthy controls
The concentration of renalase in the serum of CKD patients was much higher in comparison to material from healthy individuals 36.1 (18.3–109.1) vs. 11.1 (2.5–26.5) ng/mL
ELISA kit EIAab
Renalase levels in serum are not related to the glomerular filtration rate.
HD and DP Patients
E. Zbroch et al. 2012 [22]
104 HD patients
Mean serum renalase in the study cohort was significantly higher than in the control group (27.53 ± 7.18 vs. 3.86 ± 0.73 µg/mL, p < 0.001)
USCN Life Science, E92845Hu
Significant inverse correlation between the serum renalase and residual renal function (r = −0.327, p = 0.001).
Renalase was not related to blood pressure, heart rate or hemodialysis vintage.
J. Malyszko et al. 2012 [27]
34 HD patients
Mean serum renalase concentration in the study cohort was 17.51 6.73 μg/mL and it was significantly higher when compared with the healthy volunteers—3.99 1.73 μg/mL (p < 0.001)
USCN Life Science, E92845Hu
Serum renalase correlated with creatinine (r = 0.43, p < 0.05), residual renal function (r = 0.39, p < 0.05). The only predictor of renalase in multiple regression analysis was the presence of hypertension explaining 90% of the renalase variations.
E.-Zorawska et al. 2012 [28]
60 HD patients
Mean level of renalase was significantly higher in HD patients when compared to the control group (27.53 ± 9.39 µg/mL vs. 4.00 ± 1.37 µg/mL, p < 0.001
USCN Life Science, E92845Hu
Renalase appeared to be unrelated to Vascular adhesion protein-1.
E. Zbroch et al. 2012 [21]
26 PD patients
Serum concentration of renalase was significantly higher in patients dialyzed for more than 6 months than in those dialyzed for fewer than 6 months (21.15 ± 4.58 μg/mL vs. 16.63 ± 2.86 μg/mL, p = 0.008)
USCN Life Science, E92845Hu
Renalase was not related to BP control, BP level, sex, dialysis adequacy, or residual renal function.
E. Zbroch et al. 2013 [29]
75 HD patients
26 PD patients
HD patients had higher renalase levels (27.49 ± 6.9 ug/mL) Renalase were higher in dialyzed groups (19.24 ± 4.5 ug/mL) comparing to healthy volunteers (3.86 ± 0.74 ug/mL)
USCN Life Science, E92845Hu
Renalase correlated with dialysis vintage and inversely with residual diuresis.
HD population with CAD had higher renalase level than their PD counterparts.
M. Dziedzic et al. 2014 [30]
49 HD patients
The mean concentration of renalase in the entire study population was 126.59 ± 32.63 ng/mL
USCN Life Science, E92845Hu
Inverse correlation between NT-proBNP and renalase plasma levels in HD patients were due to impaired kidney function, accompanied by increased sympathetic nerve activity, which have an impact on the development of hypertension and cardiovascular complications.
E. G. Oguz et al. 2016 [31]
50 HD patients
35 healthy controls
Serum renalase levels were significantly higher in HD patients (212 ± 127 ng/mL) compared to controls (116 ± 67 ng/mL) (p < 0.001).
USCN Life Science, E92845Hu
Renalase was positively correlated with serum creatinine and dialysis vintage (r = 0.677, p <0.001 and r = 0.625, p < 0.001, respectively).
There was no significant association of renalase with LVMI in the HD patients (r = 0.263, p = 0.065).
E. G. Oguz et al. 2017 [32]
40 PD patients
40 healthy controls
Serum renalase level was significantly higher in the PD patients than in the control group [176.5 (100–278.3) vs. 122 (53.3–170.0) ng/mL] (p = 0.001)
USCN Life Science, E92845Hu
Renalase was negatively correlated with RRF (r = −0.511, p = 0.021).
Renalase is associated with residual renal function but not with CVD risk factors in PD patients.
M. Wisniewska et al. 2021 [33]
77 HD patients
30 healthy controls
Renalase serum concentrations in CKD patients were significantly increased when compared with control subjects (185.5 ± 64.3 vs. 19.6 ± 5.0 ng/mL; p < 0.00001
ELISA kit EIAab
The decreased plasma concentrations of catecholamines may be due to their increased degradation by plasma renalase.
Renal Transplant
J. Malyszko et al. 2011 [19]
89 kidney allograft recipients
27 healthy volunteers
The mean serum renalase among recipients was significantly higher compared with the control group (6.72 ± 4.50 µg/mL vs. 3.86 ± 0.73 µg/mL; p < 0.001)
USCN Life Science, E92845Hu
In kidney transplant recipients, renalase correlated serum creatinine (r = 0.49; p < 0.001) and estimated glomerular filtration rate r = −0.44; p < 0.0001
E. Zbroch et al. 2012 [34]
62 kidney allograft recipients
27 healthy volunteers
The mean serum renalase level in kidney allograft recipients was significantly higher compared with the control group (6.72 ± 2.86 µg/mL vs. 3.86 ± 0.73 µg/mL, p < 0.001
USCN Life Science, E92845Hu
In hypertensive allograft recipients, renalase was significantly higher than in normotensives. A multiple regression analysis showed that renalase was predicted in 58% by serum creatinine.
D. Stojanovic et al. 2015 [35]
73 renal TX recipientes
Renalase ng/mL
Renal transplant recipients (141.82 ± 36.47)
Control group (16.36 ± 4.13)
USCN Life Science, E92845Hu
Significant risk of reduced glomerular filtration rate in transplant recipients with increased renalase concentration (p = 0.026).
Renalase was shown to be strong predictor of decreased glomerular filtration rate.
D. Stojanovic et al. 2017 [36]
73 renal TX recipients
Plasma renalase level was increased compared to controls, 141.82 ng/mL vs. 16.36 ng/mL, p < 0.0001
USCN Life Science, E92845Hu
Significant inverse correlation between renalase and estimated glomerular filtration rate (r = −0.552, p < 0.001)
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Cerqueira, A.; Quelhas-Santos, J.; Ferreira, I.; Sampaio, S.; Relvas, M.; Marques, N.; Dias, C.C.; Pestana, M. Circulating Renalase as Predictor of Renal and Cardiovascular Outcomes in Pre-Dialysis CKD Patients: A 5-Year Prospective Cohort Study. Life 2021, 11, 210. https://doi.org/10.3390/life11030210

AMA Style

Cerqueira A, Quelhas-Santos J, Ferreira I, Sampaio S, Relvas M, Marques N, Dias CC, Pestana M. Circulating Renalase as Predictor of Renal and Cardiovascular Outcomes in Pre-Dialysis CKD Patients: A 5-Year Prospective Cohort Study. Life. 2021; 11(3):210. https://doi.org/10.3390/life11030210

Chicago/Turabian Style

Cerqueira, Ana, Janete Quelhas-Santos, Inês Ferreira, Susana Sampaio, Miguel Relvas, Nídia Marques, Cláudia Camila Dias, and Manuel Pestana. 2021. "Circulating Renalase as Predictor of Renal and Cardiovascular Outcomes in Pre-Dialysis CKD Patients: A 5-Year Prospective Cohort Study" Life 11, no. 3: 210. https://doi.org/10.3390/life11030210

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