Literature DB >> 23723693

The ability of NT-proBNP to detect chronic heart failure and predict all-cause mortality is higher in elderly Chinese coronary artery disease patients with chronic kidney disease.

Shihui Fu1, Leiming Luo, Ping Ye, Shuangyan Yi, Yuan Liu, Bing Zhu, Liang Wang, Tiehui Xiao, Yongyi Bai.   

Abstract

OBJECTIVE: To analyze the relationship between N-terminal pro-brain natriuretic peptide (NT-proBNP) and renal function, and compare the ability and cut-off thresholds of NT-proBNP to detect chronic heart failure (CHF) and predict mortality in elderly Chinese coronary artery disease (CAD) patients with and without chronic kidney disease (CKD).
METHODS: The study included 999 CAD patients older than 60 years. The endpoint was all-cause mortality over a mean follow-up period of 417 days.
RESULTS: The median age was 86 years (range: 60-104 years), and the median NT-proBNP level was 409.8 pg/mL. CKD was present in 358 patients. Three hundred and six patients were positive for CHF. One hundred and ten CKD patients and 105 non-CKD patients died. Not only CKD, but also estimated glomerular filtration rate independently affected NT-proBNP. NT-proBNP detected CHF with a cut-off value of 298.4 pg/mL in non-CKD patients and a cut-off value of 435.7 pg/mL in CKD patients. NT-proBNP predicted death with a cut-off value of 369.5 pg/mL in non-CKD patients and a cut-off value of 2584.1 pg/mL in CKD patients. The NT-proBNP level was significantly related to the prevalence of CHF and all-cause mortality in CAD patients with and without CKD; this effect persisted after adjustment. The crude and multiple adjusted hazard ratios of NT-proBNP to detect CHF and predict mortality were significantly higher in patients with CKD compared with the remainder of the population. The addition of NT-proBNP to the three-variable and six-variable models generated a significant increase in the C-statistic.
CONCLUSION: Amongst elderly Chinese CAD patients, there was an independently inverse association between NT-proBNP and renal function. With the higher cutoff points, NT-proBNP better detected CHF and better predicted mortality in CKD patients than in non-CKD patients.

Entities:  

Keywords:  N-terminal pro-brain natriuretic peptide; aged; chronic kidney disease; coronary artery disease; prognosis

Mesh:

Substances:

Year:  2013        PMID: 23723693      PMCID: PMC3665499          DOI: 10.2147/CIA.S42700

Source DB:  PubMed          Journal:  Clin Interv Aging        ISSN: 1176-9092            Impact factor:   4.458


Introduction

N-terminal pro-brain natriuretic peptide (NT-proBNP) is a well-known biomarker for cardiovascular diseases, including heart failure (HF) and coronary artery disease (CAD), and may facilitate the early diagnosis of acute HF (AHF) and stratification of cardiac risk.1 Chronic kidney disease (CKD) is a common comorbidity that affects a significant portion of patients with cardiovascular diseases.2,3 Similarly, CKD patients are at increased risk of suffering from cardiovascular complications.4–6 Therefore, patients with known or suspected CAD and HF, as well as CKD patients, are potential candidates for NT-proBNP testing. Understanding the influence of renal function on the NT-proBNP level is thus highly relevant for clinical application. As the NT-proBNP level is more frequently utilized, there has been much debate over the interpretation and significance of the NT-proBNP level in CKD patients.1 Indeed, although several studies have provided clear and convincing evidence of the diagnostic value of NT-proBNP for AHF,1 the ability of NT-proBNP to detect patients with chronic HF (CHF) and the appropriate cutoff values have not been tested in a sufficient number of CAD patients with and without CKD.7 In addition, previous studies have examined the prognostic usefulness of NT-proBNP in HF patients with and without CKD,8,9 but studies focusing on the prognostic impact in CAD patients with concomitant CKD are limited. Moreover, in elderly patients, data illustrating the relationship between renal function and NT-proBNP level and relating the detecting and prognostic role of NT-proBNP level to renal function is scarce, especially in the People’s Republic of China. To be of clinical value, NT-proBNP measurements need to be evaluated within the context of renal function in elderly patients. Thus, the current study attempted to investigate the serum NT-proBNP levels of patients with varying levels of renal function, and compare the roles and cutoff values of NT-proBNP to detect CHF and predict mortality in elderly Chinese CAD patients with and without CKD.

Methods

Study population

Initially, this prospective study included 1050 CAD inpatients older than 60 years from October 11, 2007 to July 2, 2011. The Chinese PLA General Hospital was their designated hospital and had the integrated long-term medical and final death records of the patients, which made it easier for us to follow-up effectively and judge endpoints accurately. The diagnosis of CAD was supported by history, symptoms of typical angina, cardiac markers, and specific cardiac examinations, such as electrocardiogram (resting/exercise), echocardiography, radionuclide imaging, computed tomography, and coronary angiography, as established by chief physicians on the basis of the American College of Cardiology (ACC)/American Heart Association (AHA) or European Society of Cardiology (ESC) guidelines.10–12 Serum NT-proBNP was not obtained in a total of 51 patients. Thus, 999 patients were eligible for analysis.

Measurements and definitions

Serum NT-proBNP was measured by the NT-proBNP Flex Reagent Cartridge (PBNP/LPBN) produced by Siemens Healthcare Diagnostics Inc (Deerfield, IL, USA) on the Dimension RxL Max (analytical measurement range: 10–30,000 pg/mL; Siemens Healthcare Global, Erlangen, Germany). Body mass index (BMI) was defined as weight in kilograms divided by the square of height in meters. Mean systolic blood pressure (MSBP) and mean diastolic blood pressure (MDBP) were taken as the average of five separate measurements. Conventional echocardiogram was performed and the ejection fraction (EF) was obtained. Estimated glomerular filtration rate (eGFR) was calculated by a modified Modification of Diet in Renal Disease (MDRD) equation based on data from Chinese CKD patients:13 CKD was defined as eGFR < 60 mL/minute/1.73 m2 on the basis of the Kidney Disease Outcomes Quality Initiative (KDOQI) Working Group definition.14 Atrial fibrillation (AF) and CHF were diagnosed by chief physicians according to the ACC/AHA/ESC guidelines for AF15 and the ESC guidelines for CHF.16 Patients with a MSBP ≥ 140 mmHg, MDBP ≥ 90 mmHg or patients receiving medication for treatment of hypertension (HTN) were defined as having HTN. Patients with a fasting glucose concentration ≥ 7 mmol/L or receiving treatment with an oral hypoglycemic agent/insulin were defined as having diabetes mellitus (DM). If the hemoglobin level was lower than 120 g/L in males or 110 g/L in females, the diagnosis of anemia was established. Hypoalbuminemia was considered to be present if patients had a serum albumin < 30 g/L. The diagnosis of hyperuricemia was made if the patients met the following criterion: uric acid > 420 umol/L for males or >350 umol/L for females.

Traditional prognostic models

In spite of many models predicting renal replacement therapy, there are few models to forecast mortality for patients with CKD. The most basic and simple risk assessment model of CKD consists of age, gender, and eGFR (three-variable model). Meanwhile, the six-variable model includes age, gender, eGFR, DM, HTN, and anemia, and has been reported to have a greater ability to estimate CKD mortality.17

End point

Given the high incidence of multiple organ failure in the elderly as well as the priority of all-cause mortality in outcome studies, the primary endpoint assessed in the current study was all-cause death. The study population had a mean follow-up period of 417 days (median: 317 days; 75% range: 185–557 days). No patient was dropped during the study period. Follow-up data was obtained from medical records and telephone contact. Death was ascertained from death record; a legal document including time, site, and other information.

Statistical methods

Continuous variables were described using mean and standard deviation for data with a normal distribution, and median and 75% range for non-normally distributed variables. Categorical data were expressed as a percentage of the total. The correlation between the NT-proBNP level and other variables was determined by Spearman rank correlation coefficients. The NT-proBNP level was logarithmically transformed to meet the multinormality assumption. The multiple linear regression model with NT-proBNP as the dependent variable was used to determine independent determinants of NT-proBNP. Receiver-operating characteristic curves and area under the curve (C statistics) were used to assess the usefulness of NT-proBNP to identify CHF or predict death. The added predictive abilities of NT-proBNP to CKD risk assessment models regarding mortality were investigated by comparison of C-statistics between models and models + NT-proBNP. The Z-statistic was used to compare the C-statistics. To examine the ability of NT-proBNP in detecting CHF, the multivariate logistic regression model with CHF as a dependent variable was developed. To test prognostic values of NT-proBNP for mortality, the multivariate Cox regression model with death as the dependent variable was used. Differences in hazard ratios (HRs) between patients with CKD and without CKD were checked with interaction analysis. Survival curves were generated by means of Kaplan–Meier estimates. A two-tailed P-value of less than 0.05 was considered to be statistically significant. There was little missing data; in the cases where date was missing, the missing values were calculated by multiple imputations and the results were pooled to minimize bias.18 All information on the characteristics of patients was entered into the database by trained abstractors and checked by other independent abstractors. SPSS 17 (SPSS Inc., Chicago, IL, USA) and MedCalc 9.6 for Windows (MedCalc Software bvba, Ostend, Belgium) were used as the statistical systems.

Results

Independent impact of cardiac factors and renal function on the NT-proBNP level

At baseline, the median age of the study patients was 86 years (range: 60–104 years) and the median NT-proBNP level was 409.8 pg/mL (158.4–1783.8 pg/mL). Table 1 displays descriptive statistics of the study population. CKD was present in 358 patients (35.8%), who had a significantly higher NT-proBNP concentration (median NT-proBNP level: 1027.5 pg/mL [267.3–3660.5 pg/mL]) than patients without CKD (median NT-proBNP level: 298.6 pg/mL [129.1–950.2 pg/mL]) (P < 0.001). There were even significant distinctions in NT-proBNP level between patients in different stages of CKD (eGFR 45–60 mL/minute/1.73 m2: 526.3 pg/mL [174.9–1915.4 pg/mL]; eGFR 30–45 mL/minute/1.73 m2: 1531.0 pg/mL [518.6–3755.6 pg/mL]; eGFR < 30 mL/minute/1.73 m2: 4734.7 pg/mL [1357.0– 19163.0 pg/mL]; all P < 0.001). The NT-proBNP levels in all of the patients had a strong inverse association with eGFR (correlation coefficient, −0.319, P < 0.001). After adjusting for age; gender; BMI; acute myocardial infarction (AMI); CHF; HTN; DM; AF; anemia; hypoalbuminemia; hyperuricemia; MSBP; heart rate; EF < 40%; serum Na+, Ka+, and Ca2+ levels; and diuretic use, not only CKD and eGFR < 45 mL/minute/1.73 m2, but also the eGFR level as a continuous variable (all P < 0.001) had an independent influence on the NT-proBNP level. Other independently associated factors were age, BMI, AMI, CHF, AF, anemia, hypoalbuminemia, heart rate, EF < 40%, and serum Ka+ and Ca2+ levels (all P < 0.05). BMI and serum Ca2+ had a negative correlation with NT-proBNP level; all other factors had a positive correlation with NT-proBNP level. The impact of CKD on the NT-proBNP level (β value: 0.135) was less than the impact of cardiac factors (CHF, AMI, AF, and EF < 40%) and anemia, whereas the impact of eGFR < 45 mL/minute/1.73 m2 on the NT-proBNP level (β value: 0.228) was higher than these factors. No significant correlation was noted between the NT-proBNP level and gender, HTN, DM, hyperuricemia, MSBP, serum Na+ level, and diuretic use (all P > 0.05).
Table 1

Baseline characteristics of study population

VariablesNo CKD (n = 641)CKD (n = 358)Total (n = 999)

eGFR 45–60 mL/minute/1.73 m2 (n = 194)eGFR < 45 mL/minute/1.73 m2 (n = 164)
Demographics
Age (years) median (75% range)85 (81–89)86 (83–90)87 (82–91)86 (82–90)
Males (%)592 (92.4)172 (88.7)140 (85.4)904 (90.5)
BMI (kg/m2) mean (SD)23.8 (3.4)24.4 (3.4)23.4 (3.6)23.9 (3.5)
Diseases
AMI (%)35 (5.5)16 (8.2)20 (12.2)71 (7.1)
CHF (%)147 (22.9)72 (37.1)87 (53.0)306 (30.6)
HTN (%)489 (76.3)165 (85.1)141 (86.0)795 (79.6)
DM (%)242 (37.8)81 (41.8)73 (44.5)396 (39.6)
AF (%)125 (19.5)54 (27.8)34 (20.7)213 (21.3)
Anemia (%)203 (31.7)87 (44.8)115 (70.1)405 (40.5)
Hypoalbuminemia (%)23 (3.6)3 (1.5)19 (11.6)45 (4.5)
Hyperuricemia (%)100 (15.6)76 (39.2)91 (55.5)267 (26.7)
Clinical presentation
MSBP (mmHg) mean (SD)132.6 (13.5)133.7 (12.8)134.9 (13.6)132.3 (123.6–142.0)
HR (bpm) median (75% range)72 (64–80)70 (64–80)74 (65–83)72 (64–80)
Investigative variables
EF < 40% (%)14 (2.2)9 (4.6)13 (7.9)36 (3.6)
Laboratory results
NT-proBNP (pg/mL) median (75% range)298.6 (129.1–950.2)526.3 (174.9–1915.4)2390.8 (749.2–7397.8)409.8 (158.4–1783.8)
eGFR (mL/minute/1.73 m2) median (75% range)78.7 (70.0–89.2)53.9 (50.8–57.2)33.9 (19.8–39.7)68.7 (53.1–82.3)
Na+ (mmol/L) median (75% range)139 (136–142)139 (136–142)139 (135–142)139 (136–142)
Ka+ (mmol/L) median (75% range)3.9 (3.7–4.2)4.0 (3.8–4.3)4.2 (3.9–4.6)4.0 (3.7–4.3)
Ca2+ (mmol/L) median (75% range)2.2 (2.1–2.3)2.2 (2.1–2.3)2.3 (2.1–2.4)2.2 (2.1–2.3)
Drug
Diuretic use (%)529 (82.5)194 (100.0)164 (100.0)887 (88.8)

Abbreviations: AF, atrial fibrillation; AMI, acute myocardial infarction; BMI, body mass index; CHF, chronic heart failure; CKD, chronic kidney disease; DM, diabetes mellitus; EF, ejection fraction; eGFR, estimated glomerular filtration rate; HR, heart rate; HTN, hypertension; MSBP, mean systolic blood pressure; NT-proBNP, N-terminal pro-brain natriuretic peptide; SD, standard deviation.

Superior ability of NT-proBNP to detect CHF in CKD patients

Of 999 eligible patients, 306 (30.6%) were positive for CHF. The NT-proBNP level was significantly related to the prevalence of CHF in CAD patients with CKD (crude HR: 1.728, 95% confidence interval [CI]: 1.487–2.007, P < 0.001) and without CKD (crude HR: 1.727, 95% CI: 1.510–1.977, P < 0.001), and the significance persisted after adjusting for age; gender; BMI; AMI; HTN; DM; AF; anemia; hypoalbuminemia; hyperuricemia; MSBP; heart rate; EF < 40%; serum Na+, Ka+, and Ca2+ levels; and diuretic use (with CKD: adjusted HR: 1.707, 95% CI: 1.415–2.061, P < 0.001; without CKD: adjusted HR: 1.474, 95% CI: 1.202–1.806, P < 0.001). By interaction analysis, the crude HR values (1.728 versus 1.727, P < 0.001) and multiple adjusted HR values (1.707 versus 1.474, P = 0.002) of NT-proBNP were significantly higher in patients with CKD compared with the remainder of the population. In patients without CKD, NT-proBNP detected CHF with a C-statistic of 0.720 (95% CI: 0.671–0.769, P < 0.001) and a cutoff value of 298.4 pg/mL (Figure 1A). In patients with CKD, NT-proBNP detected CHF with a C-statistic of 0.749 (95% CI: 0.689–0.799, P < 0.001) and a cutoff value of 435.7 pg/mL (Figure 1B). The C-statistic for NT-proBNP in detecting CHF in patients with CKD was higher (but not significant) than in patients without CKD (0.749 versus 0.720, P = 0.421). In patients without CKD, CHF was more common in patients with a NT-proBNP level > 298.4 pg/mL in comparison to patients with a NT-proBNP level < 298.4 pg/mL (HR: 4.790, 95% CI: 3.126–7.338, P < 0.001). In CKD patients, the likelihood of CHF was significantly higher in patients with a NT-proBNP level > 435.7 pg/mL in comparison to patients with a NT-proBNP level < 435.7 pg/mL (HR: 8.750, 95% CI: 4.978–15.380, P < 0.001).
Figure 1

(A) Non-CKD patients (n = 641): ROC curve analysis for NT-proBNP identifying CHF. (B) CKD patients (n = 358): ROC curve analysis for NT-proBNP identifying CHF. (C) non-CKD patients (n = 641): ROC curve analysis for NT-proBNP predicting death. (D) CKD patients (n = 358): ROC curve analysis for NT-proBNP predicting death. (E) CKD patients (n = 358): comparison of ROC curve predicting death between NT-proBNP and the three-variable model. (F) CKD patients (n = 358): comparison of ROC curve predicting death between NT-proBNP and the six-variable model.

Abbreviations: CHF, chronic heart failure; CKD, chronic kidney disease; DM, diabetes mellitus; eGFR, estimated glomerular filtration rate; HTN, hypertension; NT-proBNP, N-terminal pro-brain natriuretic peptide; ROC, receiver-operating characteristic.

Superior independent and compensated prognostic ability of NT-proBNP in CKD patients

One hundred and ten patients (30.7%) with CKD and 105 patients (16.4%) without CKD died during the follow-up period. The NT-proBNP level was significantly related to all-cause death in CAD patients with CKD (crude HR: 1.766, 95% CI: 1.574–1.983, P < 0.001) and without CKD (crude HR: 1.691, 95% CI: 1.504–1.901, P < 0.001), and the significance persisted after adjusting for age; gender; BMI; AMI; CHF; HTN; DM; AF; anemia; hypoalbuminemia; hyperuricemia; MSBP; heart rate; EF < 40%; serum Na+, Ka+, and Ca2+ levels; and diuretic use (with CKD: adjusted HR: 1.542, 95% CI: 1.324–1.795, P < 0.001; without CKD: adjusted HR: 1.384, 95% CI: 1.190–1.609, P < 0.001). By interaction analysis, the crude HR values (1.766 versus 1.691, P < 0.001) and multiple adjusted HR values (1.542 versus 1.384, P = 0.008) of NT-proBNP were significantly higher in patients with CKD compared with the remainder of the population. Meanwhile, patients with different stages of CKD were analyzed separately. With the deterioration of CKD, the crude HRs (eGFR > 45 mL/minute/1.73 m2: HR: 2.051, 95% CI: 1.609–2.615; eGFR 30–45 mL/minute/1.73 m2: HR: 1.716; 95% CI: 1.340–2.198; eGFR < 30 mL/minute/1.73 m2: HR: 1.574; 95% CI: 1.253–1.978; all P < 0.001) and multiple adjusted HRs (eGFR > 45 mL/minute/1.73 m2: HR: 2.075, 95% CI: 1.462–2.945; eGFR 30–45 mL/minute/1.73 m2: HR: 1.922; 95% CI: 1.288–2.870; eGFR < 30 mL/minute/1.73 m2: HR: 1.729; 95% CI: 1.189–2.515; all P < 0.05) of NT-proBNP decreased. Of note, regardless of the stage of CKD, NT-proBNP was an independent predictor of all-cause mortality in these patients. The crude and multiple adjusted influences of NT-proBNP on mortality are listed in Table 2.
Table 2

Hazard ratios of NT-proBNP in elderly Chinese coronary artery disease patients with and without CKD

AllaCrude HR (95% CI)P-valueMultiple adjusted HR (95% CI)bP-value
No CKD1.691 (1.504–1.901)<0.0011.384 (1.190–1.609)<0.001
CKDc1.766 (1.574–1.983)<0.0011.542 (1.324–1.795)<0.001
 eGFR > 45 mL/minute/1.73 m22.051 (1.609–2.615)<0.0012.075 (1.462–2.945)<0.001
 eGFR 30–45 mL/minute/1.73 m21.716 (1.340–2.198)<0.0011.922 (1.288–2.870)0.001
 eGFR < 30 mL/minute/1.73 m21.574 (1.253–1.978)<0.0011.729 (1.189–2.515)0.004

Notes:

Cox regression all-cause mortality analyses;

adjusted for age, gender, body mass index, acute myocardial infarction, chronic heart failure, hypertension, diabetes mellitus, atrial fibrillation, anemia, hypoalbuminemia, hyperuricemia, mean systolic blood pressure, heart rate, ejection fraction < 40%, Na+, Ka+, and Ca2+ levels, and diuretic use;

separate analyses for patients with CKD and different stages of CKD.

Abbreviations: CKD, chronic kidney disease; CI, confidence interval; eGFR, estimated glomerular filtration rate; HR, hazard ratio; NT-proBNP, N-terminal pro-brain natriuretic peptide.

NT-proBNP predicted death with a C-statistic of 0.751 (95% CI: 0.698–0.805, P < 0.001) in patients without CKD (Figure 1C) and a C statistic of 0.818 (95% CI: 0.772–0.864, P < 0.001) in patients with CKD (Figure 1D). The C-statistic for NT-proBNP in predicting death in patients with CKD was higher (but not significant) than in patients without CKD (0.818 versus 0.751, P = 0.064). The cutoff value of NT-proBNP that best distinguished the deaths versus the survivors amongst patients with CKD (2584.1 pg/mL) was approximately six times higher than the NT-proBNP cutoff value amongst patients without CKD (369.5 pg/mL). In addition, there was a significantly worse prognosis in patients with a NT-proBNP level greater than the cutoff value compared with patients with a NT-proBNP level less than cutoff value (with CKD: HR: 5.304, 95% CI: 3.582–7.853; without CKD: HR: 5.152, 95% CI: 3.264–8.130; all P < 0.001). Kaplan– Meier analyses based on the two cutoff values provided better descriptions (Figure 2A and B).
Figure 2

(A) Non-CKD patients (n = 641): Kaplan–Meier estimate of survival according to the cutoff point of NT-proBNP (369.5 pg/mL). (B) CKD patients (n = 358): Kaplan–Meier estimate of survival according to the cutoff point of NT-proBNP (2584.1 pg/mL).

Abbreviations: CKD, chronic kidney disease; NT-proBNP, N-terminal pro-brain natriuretic peptide.

The analyses of the compensated predictive roles of NT-proBNP to the risk assessment models of CKD were confined to patients with CKD. The C-statistic of the NT-proBNP level in predicting death in patients with CKD was statistically greater than the three-variable (0.818 versus 0.694, P < 0.001) and six-variable models (0.818 versus 0.744, P = 0.035) (Table 3, Figure 1E and F). The addition of the NT-proBNP level to the three-variable (0.836 versus 0.694, P < 0.001) and six-variable models (0.853 versus 0.744, P < 0.001) generated a significant increase in the C-statistic (Table 3).
Table 3

Prognostic value of NT-proBNP and other models in elderly Chinese patients with both coronary artery disease and chronic kidney disease

C statistic (95% CI)Z valueP-value
NT-proBNP0.818 (0.774–0.857)
Age, gender, and eGFR0.694 (0.644–0.741)3.483<0.001a
Age, gender, and eGFR plus NT-proBNP0.836 (0.793–0.873)4.735<0.001b
Age, gender, eGFR, DM, HTN, and anemia0.744 (0.696–0.788)2.1120.035a
Age, gender, eGFR, DM, HTN, and anemia plus NT-proBNP0.853 (0.811–0.888)4.162<0.001b

Notes:

P-value was drawn from comparisons between other models and NT-proBNP;

P-value was drawn from comparisons between other models with the addition of NT-proBNP and other models.

Abbreviations: CI, confidence interval; DM, diabetes mellitus; eGFR, estimated glomerular filtration rate; HTN, hypertension; NT-proBNP, N-terminal-pro-brain natriuretic peptide.

Discussion

The current study showed an inverse, significant, and independent correlation between the NT-proBNP level and eGFR in elderly CAD patients with and without CKD. This finding corroborated recent observational studies that indicated a relationship between NT-proBNP and eGFR in patients with stable ischemic heart disease,19 peripheral artery disease,20 HF,21 and acute dyspnea,1 and in patients with various stages of renal function;4,22 this finding was in contrast to pooled data which suggested that there was no interdependence between renal impairment and increased NT-proBNP concentration.23 The correlation coefficients between NT-proBNP and eGFR typically ranged from −0.3 to −0.5, which were in agreement with our result (−0.319). The current study illustrated that the cause of an elevated NT-proBNP level was multifactorial and reflected the changes in cardiac and renal function. To what extent the increase in the NT-proBNP level was due to decreased renal clearance versus increased cardiac production is controversial. Previous assessments have tempered the enthusiasm to conclude that cardiac pathology is the primary etiology of an increase in NT-proBNP level. For example, van Kimmenade et al proposed that an increased NT-proBNP level was predominantly related to, and a result of, the presence and extent of cardiac pathology rather than impaired renal clearance.24 The current study showed that when eGFR was between 45–60 mL/minute/1.73 m2, the NT-proBNP level was most strongly dependent on cardiovascular diseases, such as CHF, AMI, and AF, as well as cardiac function (EF) rather than renal function, which was in agreement with previous reports. But when eGFR was < 45 mL/minute/1.73 m2, renal function was crucial for the change in the NT-proBNP level, rather than cardiac function and cardiovascular diseases. Several studies have provided clear and convincing evidence of the diagnostic value of NT-proBNP for AHF,1 but there was a lack of clear recommendations regarding its relationship with CHF and CKD. The issue of how to differentially interpret the CHF detecting utilities of the NT-proBNP level within the context of renal function has received considerable attention and has been tested in a small population but remains incompletely resolved from a clinical perspective.7 When comparing the detecting ability of the NT-proBNP level in individuals with and without deteriorating renal function, previous studies reported that only mildly diminished accuracy was observed in renal disease as long as a modestly increased optimal cutoff value was used for NT-proBNP.25 The current study, which focused on elderly patients with CAD, showed that the usefulness of NT-proBNP in detecting CHF in the presence of CKD might be improved to some extent rather than compromised after adopting a higher cutoff value. NT-proBNP has been reported to be a significant predictor of mortality for cardiovascular diseases such as HF and CAD.26,27 The prognoses of CKD patients based on the NT-proBNP level have not been thoroughly studied; indeed, only small series have shown the ability of NT-proBNP to independently predict adverse outcomes.8 Previous studies have shown that NT-proBNP provides independent and similar prognostic information in the entire CHF cohort, as well as in subgroups with and without CKD.8,9 Given the increasing number of patients affected by both CAD and CKD, the effect of CKD on the application of NT-proBNP in risk stratification of CAD patients is of particular importance. However, there has been no study definitively answering the question of whether or not the NT-proBNP level has an important prognostic role in the CAD population with and without CKD, especially in elderly patients. The current study confirmed the superior independent predictive performance of NT-proBNP in elderly CAD patients with CKD in comparison to patients without CKD. Moreover, when suitable cutoff points of NT-proBNP were used, low- and high-risk subpopulations could easily be identified in both patients with CKD and patients without CKD. Nevertheless, there was an obviously higher cutoff value in the CKD patients than in the non-CKD patients. Currently most institutions continue to use the NT-proBNP diagnostic and prognostic cutoff levels without taking renal function into account. Our data emphasizes that the cutoff values of NT-proBNP must be evaluated in conjunction with the overall status of patients, particularly the level of renal function. Additionally, the current study described the additive effects of NT-proBNP on CKD risk assessment models, ie, the compensated predictive ability of NT-proBNP. The current study had several limitations. Firstly, due to the shortage of noninvasive methods and unified standards in evaluating blood volume, there was no other invasive data about blood volume except for blood pressure in our study. In addition, the sample size of our study is relatively small, and there is need of large studies to confirm our study results. The following conclusions about elderly Chinese patients could been drawn from the current study: (1) a significantly and independently inverse association between NT-proBNP level and renal function was evident, with higher NT-proBNP level observed as eGFR declined; (2) NT-proBNP was shown to have a better ability to detect CHF and predict mortality in CKD patients than in non-CKD patients; (3) CKD patients had higher cutoff points for NT-proBNP in detecting CHF or predicting death than non-CKD patients; and (4) NT-proBNP added important information to CKD risk assessment models in patients with CAD.
  26 in total

1.  ACC/AHA guidelines for the management of patients with unstable angina and non-ST-segment elevation myocardial infarction. A report of the American College of Cardiology/American Heart Association Task Force on Practice Guidelines (Committee on the Management of Patients With Unstable Angina).

Authors:  E Braunwald; E M Antman; J W Beasley; R M Califf; M D Cheitlin; J S Hochman; R H Jones; D Kereiakes; J Kupersmith; T N Levin; C J Pepine; J W Schaeffer; E E Smith; D E Steward; P Theroux; J S Alpert; K A Eagle; D P Faxon; V Fuster; T J Gardner; G Gregoratos; R O Russell; S C Smith
Journal:  J Am Coll Cardiol       Date:  2000-09       Impact factor: 24.094

Review 2.  Premature cardiovascular disease in chronic renal failure.

Authors:  C Baigent; K Burbury; D Wheeler
Journal:  Lancet       Date:  2000-07-08       Impact factor: 79.321

3.  Influence of renal function on the usefulness of N-terminal pro-B-type natriuretic peptide as a prognostic cardiac risk marker in patients undergoing noncardiac vascular surgery.

Authors:  Dustin Goei; Olaf Schouten; Eric Boersma; Gijs M J M Welten; Martin Dunkelgrun; Jan Lindemans; Yvette R B M van Gestel; Sanne E Hoeks; Jeroen J Bax; Don Poldermans
Journal:  Am J Cardiol       Date:  2008-01-01       Impact factor: 2.778

4.  Comparison of the prognostic usefulness of N-terminal pro-brain natriuretic Peptide in patients with heart failure with versus without chronic kidney disease.

Authors:  Christian Bruch; Claudia Fischer; Jürgen Sindermann; Jörg Stypmann; Günter Breithardt; Rainer Gradaus
Journal:  Am J Cardiol       Date:  2008-05-24       Impact factor: 2.778

Review 5.  ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure 2008: the Task Force for the Diagnosis and Treatment of Acute and Chronic Heart Failure 2008 of the European Society of Cardiology. Developed in collaboration with the Heart Failure Association of the ESC (HFA) and endorsed by the European Society of Intensive Care Medicine (ESICM).

Authors:  Kenneth Dickstein; Alain Cohen-Solal; Gerasimos Filippatos; John J V McMurray; Piotr Ponikowski; Philip Alexander Poole-Wilson; Anna Strömberg; Dirk J van Veldhuisen; Dan Atar; Arno W Hoes; Andre Keren; Alexandre Mebazaa; Markku Nieminen; Silvia Giuliana Priori; Karl Swedberg
Journal:  Eur Heart J       Date:  2008-09-17       Impact factor: 29.983

6.  Renal dysfunction, as measured by the modification of diet in renal disease equations, and outcome in patients with advanced heart failure.

Authors:  Roy S Gardner; Kwok S Chong; Eileen O'Meara; Alan Jardine; Ian Ford; Theresa A McDonagh
Journal:  Eur Heart J       Date:  2007-10-29       Impact factor: 29.983

7.  Predicting renal replacement therapy and mortality in CKD.

Authors:  Eric S Johnson; Micah L Thorp; Xiuhai Yang; Olivier L Charansonney; David H Smith
Journal:  Am J Kidney Dis       Date:  2007-10       Impact factor: 8.860

8.  Prognostic impact of NT-proBNP and renal function in comparison to contemporary multi-marker risk scores in heart failure patients.

Authors:  Roman Pfister; Holger Diedrichs; Anne Schiedermair; Stephan Rosenkranz; Martin Hellmich; Erland Erdmann; Christian Alfons Schneider
Journal:  Eur J Heart Fail       Date:  2008-03-04       Impact factor: 15.534

Review 9.  Amino-terminal pro-B-type natriuretic peptide testing in renal disease.

Authors:  Christopher DeFilippi; Roland R J van Kimmenade; Yigal M Pinto
Journal:  Am J Cardiol       Date:  2008-02-04       Impact factor: 2.778

10.  N-terminal pro-brain natriuretic peptide levels predict left ventricular systolic function in patients with chronic kidney disease.

Authors:  Jung Eun Lee; So Yeon Choi; Wooseong Huh; Seong Woo Park; Dae Joong Kim; Ha Young Oh; Yoon-Goo Kim
Journal:  J Korean Med Sci       Date:  2009-01-28       Impact factor: 2.153

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  7 in total

Review 1.  Utility of traditional circulating and imaging-based cardiac biomarkers in patients with predialysis CKD.

Authors:  Gates Colbert; Nishank Jain; James A de Lemos; S Susan Hedayati
Journal:  Clin J Am Soc Nephrol       Date:  2014-11-17       Impact factor: 8.237

Review 2.  Amino-Terminal Pro-B-Type Natriuretic Peptide for Diagnosis and Prognosis in Patients With Renal Dysfunction: A Systematic Review and Meta-Analysis.

Authors:  Jennifer A Schaub; Steven G Coca; Dennis G Moledina; Mark Gentry; Jeffrey M Testani; Chirag R Parikh
Journal:  JACC Heart Fail       Date:  2015-12       Impact factor: 12.035

Review 3.  Natriuretic Peptides as Biomarkers for Congestive States: The Cardiorenal Divergence.

Authors:  Abhilash Koratala; Amir Kazory
Journal:  Dis Markers       Date:  2017-06-18       Impact factor: 3.434

4.  The interaction between N-terminal pro-brain natriuretic peptide and fluid status in adverse clinical outcomes of late stages of chronic kidney disease.

Authors:  Yi-Chun Tsai; Hui-Ju Tsai; Chee-Siong Lee; Yi-Wen Chiu; Hung-Tien Kuo; Su-Chu Lee; Tzu-Hui Chen; Mei-Chuan Kuo
Journal:  PLoS One       Date:  2018-08-22       Impact factor: 3.240

5.  Prognostic Value of Plasma NT-proBNP levels in Hospitalized Patients Older than 80 Years of Age in a Hospital in Beijing, China.

Authors:  Qiwei Zhu; Peng Gao; Shihui Fu; Hao Wang; Yongyi Bai; Leiming Luo; Ping Ye
Journal:  Arq Bras Cardiol       Date:  2021-06       Impact factor: 2.000

6.  Effect Modification of Chronic Kidney Disease on the Association of Circulating and Imaging Cardiac Biomarkers With Outcomes.

Authors:  L Parker Gregg; Beverley Adams-Huet; Xilong Li; Gates Colbert; Nishank Jain; James A de Lemos; S Susan Hedayati
Journal:  J Am Heart Assoc       Date:  2017-07-05       Impact factor: 5.501

Review 7.  Biomarkers in Cardiorenal Syndromes.

Authors:  Shihui Fu; Shaopan Zhao; Ping Ye; Leiming Luo
Journal:  Biomed Res Int       Date:  2018-03-05       Impact factor: 3.411

  7 in total

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