Background: Although numerous studies have suggested that elevated N-terminal pro-brain natriuretic peptide (NT-proBNP) is positively correlated with cardiovascular events, especially the heart failure and heart failure-related death (HFRD), evidence of the association between NT-proBNP and the adverse outcomes of hypertrophic cardiomyopathy (HCM) is still relatively limited. The present study was performed to evaluate the relationship between NT-proBNP and outcomes in patients with HCM.

Methods: Observational cohort methodology was used in the present study, and a total of 227 patients were included. And the patients were followed for 44.97 ± 16.37 months. Patients were categorized into three groups according to these NT-proBNP tertiles: first tertile (≤910 pg/ml, n=68), second tertile (913–2141 pg/ml, n=68), and third tertile (≥2151 pg/ml, n=69). The adverse outcomes of the present study were all-cause death (ACD) and cardiac death (CD).

Results: According to the risk category of NT-proBNP, the incidence of ACD (P=0.005) and CD (P=0.032) among the three groups showed significant differences. Multivariate Cox regression analysis suggested that the ACD and CD in the third tertile have 7.022 folds (hazard risk [HR] = 7.022 [95% confidence interval [CI]: 1.397–35.282], P=0.018) and 7.129 folds (HR = 7.129 [95% CI: 1.329–38.237], P=0.022) increased risks as compared with those in the first tertile. Kaplan–Meier survival analyses showed that the cumulative risks of ACD and CD in patients with HCM tended to increase.

Conclusion: The present study indicated NT-proBNP was a novel biomarker suitable for predicting adverse prognosis in patients with HCM, which may be used for early recognition and risk stratification.

Hypertrophic cardiomyopathy (HCM) is the most common monogenic cardiovascular disease. It has a disease prevalence of 0.2–0.5% in the general population [1,2]. The major pathological characteristics in HCM are hypertrophy and disarray among cardiomyocytes, interstitial fibrosis, and small vessel disease of the myocardium [3,4]. The disease threatens people in various age groups, and it can vary in clinical presentation, ranging from asymptomatic status over the lifespan to severe cardiac events such as advanced heart failure, systemic embolic events, stroke, malignant arrhythmic events, and even cardiac death (CD) [5–7]. Therefore, there is an urgent need to establish predictors of prognosis in patients with HCM for risk stratification, prevention of complications, and improvement of outcomes. In recent years, even though risk stratification has already been performed for some factors, and prognosis has been predicted in patients with HCM, the long-term clinical outcomes of patients with HCM have remained largely unpredictable.

The neurohormone pro-brain natriuretic peptide is synthesized and released when cardiac myocytes are exposed to hemodynamic stress [8], and it is further cleaved into N-terminal pro-brain natriuretic peptide (NT-proBNP) by proteolytic enzymes. NT-proBNP has been shown to be an effective and sensitive biomarker in heart failure [9,10] and it is also used in risk stratification of HCM and several cardiovascular disorders [11,12].

However, the data about the prognostic impact of NT-proBNP on Chinese patients with HCM are very limited. Therefore, the present study aimed to explore whether the NT-proBNP was an effective and sensitive biomarker suitable for predicting adverse outcomes of these patients.

Study design and population

Patients with HCM hospitalized at the First Affiliated Hospital of Zhengzhou University from 2014 to 2018 were included in the present study. Twenty-two patients with HCM were excluded from the study due to loss to follow-up, and the final population was 205 (Figure 1). HCM was diagnosed by a maximum left ventricular wall thickness ≥ 15 mm (or ≥13 mm for patients with electrocardiogram abnormalities or a family history) in one or more left ventricular segments as indicated by echocardiography relying on the 2014 guidelines released by the European Society of Cardiology [13]. The present study excluded patients who had uncontrolled hypertension, cardiac amyloidosis, athlete’s heart, significant coronary artery disease, infection, malignant tumors, liver dysfunction, or renal insufficiency.

The flowchart of patients’ enrollment

Figure 1
The flowchart of patients’ enrollment
Figure 1
The flowchart of patients’ enrollment
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Definitions

Hypertension was defined as any history of hypertension or blood pressure measuring ≥140/90 mmHg on at least three resting measurements at least two different times [14]. Diabetes mellitus was defined as fasting plasma glucose levels up to 7.1 mmol/l or a 2-h post-load glucose concentration of 11.1 mmol/l on multiple measurements, or any receipt of treatment with glucose-lowering drugs [15]. Smoking was defined as any regular cigarette consumption in the previous 6 months, and alcohol consumption was considered as any consumption of alcohol in the past 6 months [16].

Demographic, laboratory, imaging, and clinical characteristics

Fasting blood samples were obtained for all of the enrolled patients, and the laboratory measurements were performed within 24 h. Data about demographic and clinical characteristics, including age, sex, medical history, body mass index (BMI), heart function classification of New York Heart Association (NYHA), history of hypertension, family history of HCM, and implantable cardiac defibrillator (ICD) implantation, were obtained from medical records. Imaging and laboratory data were also carefully noted. These included white blood cell (WBC), fasting blood glucose, data on renal function, lipid parameters, 12-lead electrocardiography, and echocardiography. During the duration of follow-up, the use of β-blockers, statins, aspirins, diuretics, trimetazidine, amiodarone, and calcium channel blockers was carefully recorded.

Endpoint

The endpoint was defined as long-term mortality which included all-cause death (ACD) and CD. The CD included sudden cardiac death (SCD) and heart failure-related death (HFRD) in the present study. The definition of SCD was any sudden and unexpected death with or without documented ventricular fibrillation following the new symptoms within 1 h or any death at night without any history of aggravation of symptoms [17]. HFRD was defined as any symptoms of heart failure > 1 h before death.

Follow-up

All of the enrolled patients underwent regular clinic visits or telephone interviews. The mean follow-up time was 44.97 ± 16.37 months. During this period, all relevant events were carefully assessed and confirmed by trained clinical physicians.

Statistical analysis

All of the data were analyzed with SPSS 24.0 (SPSS Inc, Chicago, Illinois, United States). Continuous variables are shown as the mean ± standard deviation (mean ± SD) and compared by one-way ANOVA (for data complying with the normal distribution) or Mann–Whitney U test or Kruskal–Wallis variance analysis (non-normally distributed variables). Categorical data are here described as frequencies and percentages and compared using the chi-square (χ2) test. NT-proBNP was categorized into three groups by tertile ≤ 910, 913-2141, and ≥ 2151 pg/ml). The cumulative incidence rates of adverse outcomes are shown using Kaplan–Meier curves and were compared using the log-rank test. Variables that showed a significant difference (P<0.05) in univariate Cox regression analysis were further entered into multivariate Cox regression analyses which were used to evaluate independent parameters for prognosis. HRs and 95% CIs were calculated. Receiver operating characteristic curves (ROC) were performed to evaluate the accuracy of NT-proBNP in the prediction of outcomes. The P<0.05 was considered to be significant.

Baseline characteristics

The 205 patients with HCM were categorized into three groups based on the tertile of NT-proBNP: first tertile (NT-proBNP ≤ 910 pg/ml; n=68), second tertile (NT-proBNP ≥ 913–2141 pg/ml; n=68), and third tertile (NT-proBNP ≥ 2151 pg/ml; n=69). As shown in Table 1, the mean age was 55.33 ± 15.00 years at enrollment, and 63.9% were men. In the total population, significant differences among these three groups were found for several variables, including gender, atrial fibrillation, BMI, heart rate, maximal wall thickness (MWT), NYHA III or IV, left ventricular ejection fraction (LVEF), blood urea nitrogen (BUN), left atrial (LA) diameter, hemoglobin, and uric acid (UA) (all P-values <0.05). Meanwhile, the other variables, such as age, hypertension, diabetes, triglyceride (TG), creatinine (Cr), smoking, stroke, high-density lipoprotein (HDL), family history, total cholesterol (TC), ICD implantation, estimated glomerular filtration rate (eGFR), low-density lipoprotein (LDL), and left ventricular end-diastolic volume (LVEDV), were not significantly different among these groups (P≥0.05).

Table 1
Baseline characteristics
VariableAll patients (n=205)First tertile (≤910 pg/ml) (n=68)Second tertile (913–2141 pg/ml) (n=68)Third tertile (≥2151 pg/ml) (n=69)P-value
Gender (male) 131 (63.9) 52 (76.5) 41 (60.3) 38 (55.1) 0.025 
Age at enrollment (years) 55.33 ± 15.00 53.06 ± 13.16 56.95 ± 14.14 55.96 ± 17.29 0.292 
Hypertension 79 (38.9) 30 (44.8) 29 (43.3) 20 (29.0) 0.113 
Diabetes 18 (8.8) 7 (10.3) 6 (8.8) 5 (7.2) 0.820 
Smoking 50 (24.4) 21 (30.9) 14 (20.6) 15 (21.7) 0.309 
Alcohol drinking 24 (11.7) 13 (19.1) 4 (5.9) 7 (10.1) 0.050 
BMI (kg/m224.45 ± 3.61 25.12 ± 3.01 24.62 ± 2.89 23.63 ± 4.56 0.048 
Atrial fibrillation 20 (9.8) 3 (4.4) 4 (5.9) 13 (18.8) 0.007 
Stroke 15 (7.3) 4 (5.9) 7 (10.3) 4 (5.8) 0.569 
Family history 36 (17.6) 8 (11.8) 16 (23.5) 12 (17.4) 0.197 
NYHA III or IV 34 (16.6) 6 (8.8) 10 (14.7) 18 (26.1) 0.022 
Chest pain 89 (43.4) 28 (41.2) 31 (45.6) 30 (43.5) 0.874 
Palpitation 103 (50.2) 34 (50.0) 38 (55.9) 31 (44.9) 0.439 
Heart rate (beats/min) 75.35 ± 16.28 74.02 ± 12.74 72.51 ± 14.84 79.42 ± 19.72 0.032 
Family history of SCD 19 (9.3) 7 (10.3) 4 (5.9) 8 (11.6) 0.483 
Unexplained syncope 22 (10.7) 6 (8.8) 12 (17.6) 4 (5.8) 0.067 
Resting LVOT obstruction 97 (47.3) 31 (45.6) 38 (55.9) 28 (40.6) 0.188 
LVEDV (ml) 91.88 ± 33.48 98.91 ± 31.99 90.37 ± 26.00 86.62 ± 39.94 0.111 
MWT (mm) 19.72 ± 4.61 18.39 ± 3.77 19.62 ± 4.48 21.06 ± 5.11 0.004 
LVEF (%) 63.03 ± 8.72 65.08 ± 5.76 64.11 ± 5.92 60.09 ± 11.96 0.002 
LA diameter (mm) 40.20 ± 7.17 38.90 ± 5.51 39.57 ± 6.34 41.94 ± 8.77 0.046 
Hemoglobin (g/l) 135.83 ± 17.97 139.64± 16.20 136.22 ± 17.08 131.70 ± 19.77 0.034 
WBC (×1097.04 ± 2.58 6.88 ± 2.21 6.87 ± 2.56 7.36 ± 2.93 0.457 
Neutrophil (×1094.46 ± 2.18 4.14 ± 1.99 4.54 ± 2.31 4.71 ± 2.21 0.302 
Lymphocyte (×1091.92 ± 0.91 2.03 ± 0.69 1.78 ± 0.67 1.94 ± 1.23 0.282 
BUN (mmol/l) 6.21 ± 3.20 5.81 ± 1.44 5.76 ± 1.57 7.05 ± 5.04 0.028 
UA (μmol/l) 351.52 ± 109.05 357.74 ± 92.84 322.16 ± 91.65 374.68 ± 132.50 0.016 
Cr (μmol/l) 74.36± 27.19 71.71 ± 18.11 71.61 ± 17.06 79.74 ± 39.70 0.135 
eGFR (ml/min/1.73 m294.60 ± 22.95 98.23 ± 15.12 95.31 ± 24.01 90.27 ± 27.42 0.192 
Glucose (mmol/l) 4.87 ± 1.67 4.85 ± 1.03 4.69 ± 1.27 5.10 ± 2.45 0.408 
TG (mmol/l) 1.46 ± 1.35 1.72 ± 1.72 1.32 ± 0.63 1.32 ± 1.39 0.139 
TC (mmol/l) 3.90 ± 1.04 3.96 ± 1.17 4.04 ± 1.00 3.71 ± 0.93 0.180 
HDL (mmol/l) 1.11 ± 0.27 1.07 ± 0.22 1.15 ± 0.30 1.11 ± 0.28 0.274 
LDL (mmol/l) 2.55 ± 2.15 2.47 ± 0.79 2.44 ± 0.74 2.73 ± 3.60 0.695 
β-blockers 153 (74.6) 48 (70.6) 52 (76.5) 53 (76.8) 0.643 
Calcium channel blockers 49 (23.9) 19 (27.9) 14 (20.6) 16 (23.2) 0.595 
Aspirin 51 (24.9) 21 (30.9) 18 (26.5) 12 (17.4) 0.176 
Statins 74 (36.1) 31 (45.6) 21 (30.9) 22 (31.9) 0.079 
Trimetazidine 39 (19.0) 13 (19.1) 15 (22.1) 11 (15.9) 0.660 
Amiodarone 8 (3.9) 0 (0.0) 4 (5.9) 4 (5.8) 0.132 
Alcohol septal ablation 1 (0.5) 0 (0.0) 1 (1.5) 0 (0.0) 0.663 
Surgical septal myectomy 15 (7.3) 3 (4.4) 6 (8.8) 6 (8.7) 0.630 
ICD implantation 6 (2.9) 1 (1.5) 2 (2.9) 3 (4.3) 0.873 
VariableAll patients (n=205)First tertile (≤910 pg/ml) (n=68)Second tertile (913–2141 pg/ml) (n=68)Third tertile (≥2151 pg/ml) (n=69)P-value
Gender (male) 131 (63.9) 52 (76.5) 41 (60.3) 38 (55.1) 0.025 
Age at enrollment (years) 55.33 ± 15.00 53.06 ± 13.16 56.95 ± 14.14 55.96 ± 17.29 0.292 
Hypertension 79 (38.9) 30 (44.8) 29 (43.3) 20 (29.0) 0.113 
Diabetes 18 (8.8) 7 (10.3) 6 (8.8) 5 (7.2) 0.820 
Smoking 50 (24.4) 21 (30.9) 14 (20.6) 15 (21.7) 0.309 
Alcohol drinking 24 (11.7) 13 (19.1) 4 (5.9) 7 (10.1) 0.050 
BMI (kg/m224.45 ± 3.61 25.12 ± 3.01 24.62 ± 2.89 23.63 ± 4.56 0.048 
Atrial fibrillation 20 (9.8) 3 (4.4) 4 (5.9) 13 (18.8) 0.007 
Stroke 15 (7.3) 4 (5.9) 7 (10.3) 4 (5.8) 0.569 
Family history 36 (17.6) 8 (11.8) 16 (23.5) 12 (17.4) 0.197 
NYHA III or IV 34 (16.6) 6 (8.8) 10 (14.7) 18 (26.1) 0.022 
Chest pain 89 (43.4) 28 (41.2) 31 (45.6) 30 (43.5) 0.874 
Palpitation 103 (50.2) 34 (50.0) 38 (55.9) 31 (44.9) 0.439 
Heart rate (beats/min) 75.35 ± 16.28 74.02 ± 12.74 72.51 ± 14.84 79.42 ± 19.72 0.032 
Family history of SCD 19 (9.3) 7 (10.3) 4 (5.9) 8 (11.6) 0.483 
Unexplained syncope 22 (10.7) 6 (8.8) 12 (17.6) 4 (5.8) 0.067 
Resting LVOT obstruction 97 (47.3) 31 (45.6) 38 (55.9) 28 (40.6) 0.188 
LVEDV (ml) 91.88 ± 33.48 98.91 ± 31.99 90.37 ± 26.00 86.62 ± 39.94 0.111 
MWT (mm) 19.72 ± 4.61 18.39 ± 3.77 19.62 ± 4.48 21.06 ± 5.11 0.004 
LVEF (%) 63.03 ± 8.72 65.08 ± 5.76 64.11 ± 5.92 60.09 ± 11.96 0.002 
LA diameter (mm) 40.20 ± 7.17 38.90 ± 5.51 39.57 ± 6.34 41.94 ± 8.77 0.046 
Hemoglobin (g/l) 135.83 ± 17.97 139.64± 16.20 136.22 ± 17.08 131.70 ± 19.77 0.034 
WBC (×1097.04 ± 2.58 6.88 ± 2.21 6.87 ± 2.56 7.36 ± 2.93 0.457 
Neutrophil (×1094.46 ± 2.18 4.14 ± 1.99 4.54 ± 2.31 4.71 ± 2.21 0.302 
Lymphocyte (×1091.92 ± 0.91 2.03 ± 0.69 1.78 ± 0.67 1.94 ± 1.23 0.282 
BUN (mmol/l) 6.21 ± 3.20 5.81 ± 1.44 5.76 ± 1.57 7.05 ± 5.04 0.028 
UA (μmol/l) 351.52 ± 109.05 357.74 ± 92.84 322.16 ± 91.65 374.68 ± 132.50 0.016 
Cr (μmol/l) 74.36± 27.19 71.71 ± 18.11 71.61 ± 17.06 79.74 ± 39.70 0.135 
eGFR (ml/min/1.73 m294.60 ± 22.95 98.23 ± 15.12 95.31 ± 24.01 90.27 ± 27.42 0.192 
Glucose (mmol/l) 4.87 ± 1.67 4.85 ± 1.03 4.69 ± 1.27 5.10 ± 2.45 0.408 
TG (mmol/l) 1.46 ± 1.35 1.72 ± 1.72 1.32 ± 0.63 1.32 ± 1.39 0.139 
TC (mmol/l) 3.90 ± 1.04 3.96 ± 1.17 4.04 ± 1.00 3.71 ± 0.93 0.180 
HDL (mmol/l) 1.11 ± 0.27 1.07 ± 0.22 1.15 ± 0.30 1.11 ± 0.28 0.274 
LDL (mmol/l) 2.55 ± 2.15 2.47 ± 0.79 2.44 ± 0.74 2.73 ± 3.60 0.695 
β-blockers 153 (74.6) 48 (70.6) 52 (76.5) 53 (76.8) 0.643 
Calcium channel blockers 49 (23.9) 19 (27.9) 14 (20.6) 16 (23.2) 0.595 
Aspirin 51 (24.9) 21 (30.9) 18 (26.5) 12 (17.4) 0.176 
Statins 74 (36.1) 31 (45.6) 21 (30.9) 22 (31.9) 0.079 
Trimetazidine 39 (19.0) 13 (19.1) 15 (22.1) 11 (15.9) 0.660 
Amiodarone 8 (3.9) 0 (0.0) 4 (5.9) 4 (5.8) 0.132 
Alcohol septal ablation 1 (0.5) 0 (0.0) 1 (1.5) 0 (0.0) 0.663 
Surgical septal myectomy 15 (7.3) 3 (4.4) 6 (8.8) 6 (8.7) 0.630 
ICD implantation 6 (2.9) 1 (1.5) 2 (2.9) 3 (4.3) 0.873 

All the continuous variables are shown as the mean ± SD, and categorical data are described as frequencies and percentages. The bold P-values are statistically different.

Outcomes

As presented in Table 2, 20 cases of ACD were recorded during the follow-up. In total, the incidence of ACD in the first tertile was 2 (2.9%), in the second tertile was 5 (7.4%), and in the third tertile was 13 (18.8%), which was significantly different (P=0.005). CD occurred in 16 patients: 2 (2.9%) in the first tertile, 4 (5.9%) in the second tertile, and 10 (14.5%) in the third tertile. The incidence of CD differed significantly among these three groups (P=0.032), while the separate incidence of SCD and HFRD showed no significant differences (P>0.05).

Table 2
Clinical outcomes among three groups
VariableAll patients (n=205)First tertile (≤910 pg/ml) (n=68)Second tertile (913–2141 pg/ml) (n=68)Third tertile (≥2151 pg/ml) (n=69)P-value
ACD 20 (9.8) 2 (2.9) 5 (7.4) 13 (18.8) 0.005 
CD 16 (7.8) 2 (2.9) 4 (5.9) 10 (14.5) 0.032 
SCD 15 (7.3) 2 (2.9) 4 (5.9) 9 (13.0) 0.078 
HFRD 1 (0.5) 0 (0.0) 0 (0.0) 1 (1.4) 1.000 
VariableAll patients (n=205)First tertile (≤910 pg/ml) (n=68)Second tertile (913–2141 pg/ml) (n=68)Third tertile (≥2151 pg/ml) (n=69)P-value
ACD 20 (9.8) 2 (2.9) 5 (7.4) 13 (18.8) 0.005 
CD 16 (7.8) 2 (2.9) 4 (5.9) 10 (14.5) 0.032 
SCD 15 (7.3) 2 (2.9) 4 (5.9) 9 (13.0) 0.078 
HFRD 1 (0.5) 0 (0.0) 0 (0.0) 1 (1.4) 1.000 

All the continuous variables are shown as the mean ± SD, and categorical data are described as frequencies and percentages. The bold P-values are statistically different.

Next, as presented in Figures 2 and 3, Kaplan–Meier curves for NT-proBNP divided by tertiles and ACD and CD were performed. Patients in the third tertile with an NT-proBNP ≥ 2151 pg/ml showed a significantly higher risk of ACD and CD (Log-Rank P=0.001 and P=0.006, respectively) compared with patients in the first tertile, which was used as the reference, with an NT-proBNP no more than 910 pg/ml.

Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of ACD

Figure 2
Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of ACD
Figure 2
Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of ACD
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Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of CD

Figure 3
Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of CD
Figure 3
Cumulative Kaplan–Meier estimates of the time to the first adjudicated occurrence of CD
Close modal

Univariate Cox regression analysis for predictor variables was conducted. Variables that showed a significant difference (P<0.05) were further entered into multivariate Cox regression analysis, which was conducted to evaluate the correlation between NT-proBNP and long-term mortality after adjusting for gender, atrial fibrillation, heart rate, MWT, NYHA III or IV, LVEF, BUN, and BMI. According to the results of multivariate Cox regression analyses, the ACD and CD in the third tertile have 7.022 folds (hazard risk [HR] = 7.022 [95% confidence interval [CI]: 1.397–35.282], P=0.018) and 7.129 folds ([HR] = 7.129 [95% [CI]: 1.329–38.237], P=0.022) increased risk as compared with those in the first tertile (Tables 3 and 4). Therefore, the higher NT-proBNP had an independently predictive value for adverse outcomes in patients with HCM.

Table 3
Cox regression analysis results for ACD
VariablesBSEWaldPHR95% CI
Gender (male) 0.896 0.507 3.121 0.077 2.450 0.907–6.621 
Atrial fibrillation −0.172 0.843 0.042 0.838 0.842 0.161–4.398 
Heart rate (beats/min) 0.005 0.011 0.196 0.658 1.005 0.983–1.027 
MWT (mm) −0.048 0.048 1.001 0.317 0.953 0.868–1.047 
NYHA III or IV −1.887 1.085 3.024 0.082 0.152 0.018–1.271 
LVEF (%) −0.028 0.021 1.787 0.181 0.973 0.934–1.013 
BUN (mmol/l) 0.010 0.065 0.023 0.879 1.010 0.889–1.148 
BMI (kg/m2−0.050 0.072 0.477 0.490 0.951 0.826–1.096 
NT-proBNP (≤910 pg/ml as reference)   6.629 0.036   
913–2141 pg/ml 0.946 0.849 1.240 0.266 2.575 0.487–13.605 
≥2151 pg/ml 1.949 0.824 5.599 0.018 7.022 1.397–35.282 
VariablesBSEWaldPHR95% CI
Gender (male) 0.896 0.507 3.121 0.077 2.450 0.907–6.621 
Atrial fibrillation −0.172 0.843 0.042 0.838 0.842 0.161–4.398 
Heart rate (beats/min) 0.005 0.011 0.196 0.658 1.005 0.983–1.027 
MWT (mm) −0.048 0.048 1.001 0.317 0.953 0.868–1.047 
NYHA III or IV −1.887 1.085 3.024 0.082 0.152 0.018–1.271 
LVEF (%) −0.028 0.021 1.787 0.181 0.973 0.934–1.013 
BUN (mmol/l) 0.010 0.065 0.023 0.879 1.010 0.889–1.148 
BMI (kg/m2−0.050 0.072 0.477 0.490 0.951 0.826–1.096 
NT-proBNP (≤910 pg/ml as reference)   6.629 0.036   
913–2141 pg/ml 0.946 0.849 1.240 0.266 2.575 0.487–13.605 
≥2151 pg/ml 1.949 0.824 5.599 0.018 7.022 1.397–35.282 
Table 4
Cox regression analysis results for CD
VariablesBSEWaldPHR95% CI
Gender (male) 0.546 0.563 0.940 0.332 1.726 0.572–5.207 
Atrial fibrillation −0.766 1.146 0.447 0.504 0.465 0.049–4.396 
Heart rate (beats/min) −0.001 0.012 0.005 0.946 0.999 0.976–1.023 
MWT (mm) −0.088 0.059 2.245 0.134 0.916 0.816–1.027 
NYHA III or IV −1.632 1.106 2.177 0.140 0.196 0.022–1.709 
LVEF (%) −0.024 0.023 1.060 0.303 0.976 0.933–1.022 
BUN (mmol/l) <0.001 0.092 <0.001 0.999 1.000 0.835–1.197 
BMI (kg/m2−0.094 0.084 1.234 0.267 0.911 0.772–1.074 
NT-proBNP (≤910 pg/ml as reference)   6.148 0.046   
913–2141 pg/ml 0.825 0.884 0.872 0.351 2.283 0.404–12.912 
≥2151 pg/ml 1.964 0.857 5.253 0.022 7.129 1.329–38.237 
VariablesBSEWaldPHR95% CI
Gender (male) 0.546 0.563 0.940 0.332 1.726 0.572–5.207 
Atrial fibrillation −0.766 1.146 0.447 0.504 0.465 0.049–4.396 
Heart rate (beats/min) −0.001 0.012 0.005 0.946 0.999 0.976–1.023 
MWT (mm) −0.088 0.059 2.245 0.134 0.916 0.816–1.027 
NYHA III or IV −1.632 1.106 2.177 0.140 0.196 0.022–1.709 
LVEF (%) −0.024 0.023 1.060 0.303 0.976 0.933–1.022 
BUN (mmol/l) <0.001 0.092 <0.001 0.999 1.000 0.835–1.197 
BMI (kg/m2−0.094 0.084 1.234 0.267 0.911 0.772–1.074 
NT-proBNP (≤910 pg/ml as reference)   6.148 0.046   
913–2141 pg/ml 0.825 0.884 0.872 0.351 2.283 0.404–12.912 
≥2151 pg/ml 1.964 0.857 5.253 0.022 7.129 1.329–38.237 

In ROC curves, a log NT-proBNP cut-off value of 3.30 (NT-proBNP 1993 pg/ml) predicted ACD events with 75.0% sensitivity and 67.0% specificity, and a log NT-proBNP cut-off value of 3.30 (NT-proBNP 1993 pg/ml) predicted ACD events with 75.0% sensitivity and 66.1% specificity (Figure 4A, B).

Receiver operating curves of log NT-proBNP levels for outcomes in patients with HCM

Figure 4
Receiver operating curves of log NT-proBNP levels for outcomes in patients with HCM

(A) The predictive value of log NT-proBNP with ACD. (B) The predictive value of log NT-proBNP with CD.

Figure 4
Receiver operating curves of log NT-proBNP levels for outcomes in patients with HCM

(A) The predictive value of log NT-proBNP with ACD. (B) The predictive value of log NT-proBNP with CD.

Close modal

The present study explored the value of NT-proBNP in predicting long-term outcomes in patients with HCM and suggested NT-proBNP was an independent predictor of long-term mortality. The ACD and CD in the third tertile have 7.022- and 7.129-folds increased risks as compared with those in the first tertile. To decrease the influence of confounding factors, a comprehensive list of characteristics that affected the risk of endpoint was adjusted to assess the correlation between NT-proBNP and clinical outcomes.

Although various novel biomarkers, such as those involving genetic variation [18] and miRNA [19], have emerged recently, their predictive values in the prognosis of patients with HCM are limited. Detection methods for these biomarkers are too complex and expensive to meet the needs of clinical work. Recently, the predictive value of hematologic biomarkers in patients with HCM has drawn increasing attention. These biomarkers include high-sensitivity C-reactive protein [20], monocyte to HDL-cholesterol ratio [21], red blood cell distribution width [22] and mid-regional proatrial natriuretic peptide [23], all of which are available and novel biomarkers in predicting clinical prognosis in patients with HCM.

However, extremely limited data on the prognostic impact of NT-proBNP on patients with HCM have been explored. NT-proBNP is released when cardiac myocytes are exposed to hemodynamic stress [8] and has a strong association with left ventricular hypertrophy and insufficiency [9,24]. Previous studies have revealed that elevated plasma concentration of NT-proBNP in patients with HCM and found that there was a correlation with more left ventricular outflow tract (LVOT) obstruction, worsening symptoms, and reduced exercise tolerance [23,25]. Although the correlation of elevated NT-proBNP value with more risk of adverse clinical events in patients with HCM has been demonstrated by previous studies [11,25,26], while the present study showed differences in the predictive values of NT-proBNP in patients with HCM, which are due to the highly heterogeneous clinical pattern and the differences in enrolled populations.

In the present study, 205 patients with HCM were finally included. These patients were categorized into three groups depending on the tertile of NT-proBNP. The results suggested that patients in the third tertile had higher incidence of ACD and CD compared with those in the first tertile. Although crossing and overlapping of survival curves massively weakens the worth in HRs, Kaplan–Meier survival analyses still showed that the cumulative risks of ACD and CD in patients with HCM tended to significantly increase. Among the three groups, there were significant differences in some baseline characteristic variables, including gender, alcohol drinking, BMI, atrial fibrillation, heart rate, MWT, NYHA III or IV, LVEF, LA diameter, hemoglobin, BUN, and UA. Considering the impact of these confounding factors and some traditional clinical prognostic factors, multivariable regression analyses were performed. The results showed NT-proBNP remained an independent predictor of ACD and CD after adjusting for these confounders. In addition, the results were consistent with a previous report [11]. Thus, the results are valuable and cannot be accidental. However, no significant differences were observed in the incidence of SCD and HFRD in the present study, which is different from previous results [11,26]. And compared with previous studies [11,27], higher mortality was observed in the present study. The differences may result from as followed: First, our study enrolled more patients with severe heart failure (NYHA III or IV) and more patients with resting LVOT obstruction; second, due to the relatively backward economy of our region, the compliance of patients is poor. Third, the rate of ICD therapy was lower in our study than that in previous study [21]. Though previous studies have demonstrated that NT-proBNP is an established biomarker in the patients with HCM, the data on Chinese patients are very limited and our results may be a perfect supplement to predict the outcomes in patients with HCM.

The limitations of the study can be summarized as follows: First, the number of enrolled patients was small, which might have influenced the reliability of the results. Second, this was a single-center retrospective study only including native Chinese patients. Third, the baseline NT-proBNP data were collected only through medical records, which made it difficult to evaluate the effect of dynamic changes in NT-proBNP. In addition, 9.7% of the patients were lost during follow-up, which might introduce biases.

The present study showed baseline NT-proBNP to be a novel, sensitive, reliable, and effective biomarker in predicting long-term outcomes in patients with HCM, which may be used for early recognition and risk stratification in patients with HCM to prevent complications and improve outcomes. In addition, the study may be a perfect supplement to research into the prognostic impact of NT-proBNP on patients with HCM and may offer insights that could guide further research in the future.

The data will not be shared, because the identified participant information is included in the data.

The authors declare that there are no competing interests associated with the manuscript.

This work was supported by the National Natural Science Foundation of China [grant numbers 81800267, 81870328, U2004203, 82170281]; the Henan Medical Science and Technology Joint Building Program [grant number 2018020002]; the Henan Thousand Talents Program [grant number ZYQR201912131]; the Henan Province Youth Talent Promoting Project [grant number 2020HYTP051]; and the Excellent Youth Science Foundation of Henan Province [grant number 202300410362].

Zeng-Lei Zhang: Resources, Data curation, Software, Formal analysis, Writing—original draft, Writing—review & editing. Yan-Yan Xu: Data curation, Formal analysis. Zhen Qin: Formal analysis. Yong-Zheng Lu: Formal analysis. Tian-Ding Liu: Resources, Formal analysis. Li Zhang: Formal analysis. Jia-Hong Shangguan: Formal analysis. Wei Wang: Formal analysis. Jun-Nan Tang: Supervision, Funding acquisition, Project administration, Writing—review & editing. Jin-Ying Zhang: Supervision, Funding acquisition, Project administration, Writing—review & editing.

The present study complies with the Declaration of Helsinki and was approved by the ethics committee of the First Affiliated Hospital of Zhengzhou University. Because of the retrospective design of the study, the need to obtain informed consent from eligible patients was waived by the ethics committee.

Written informed consent for publication was obtained from all the participants.

The authors are grateful to the Department of Cardiology at the First Affiliated Hospital of Zhengzhou University for their help and expertise in conducting the present study.

ACD

all-cause death

BMI

body mass index

BUN

blood urea nitrogen

CD

cardiac death

CI

confidence interval

HCM

hypertrophic cardiomyopathy

HDL

high-density lipoprotein

HFRD

heart failure-related death

HR

hazard risk

ICD

implantable cardiac defibrillator

LVEF

left ventricular ejection fraction

LVOT

left ventricular outflow tract

MWT

maximal wall thickness

NT-proBNP

N-terminal pro-brain natriuretic peptide

NYHA

New York Heart Association

ROC

receiver operating characteristic curve

SCD

sudden cardiac death

UA

uric acid

WBC

white blood cell

1.
Maron
B.J.
(
2018
)
Clinical course and management of hypertrophic cardiomyopathy
.
N. Engl. J. Med.
379
,
655
668
2.
Gersh
B.J.
,
Maron
B.J.
,
Bonow
R.O.
,
Dearani
J.A.
,
Fifer
M.A.
,
Link
M.S.
et al.
(
2011
)
ACCF/AHA Guideline for the Diagnosis and Treatment of Hypertrophic Cardiomyopathy: a report of the American College of Cardiology Foundation/American Heart Association Task Force on Practice Guidelines. Developed in collaboration with the American Association for Thoracic Surgery, American Society of Echocardiography, American Society of Nuclear Cardiology, Heart Failure Society of America, Heart Rhythm Society, Society for Cardiovascular Angiography and Interventions, and Society of Thoracic Surgeons
.
J. Am. Coll. Cardiol.
58
,
e212
260
3.
Elliott
P.
and
McKenna
W.J.
(
2004
)
Hypertrophic cardiomyopathy
.
Lancet.
363
,
1881
1891
4.
Maron
B.J.
(
2002
)
Hypertrophic cardiomyopathy: a systematic review
.
JAMA
287
,
1308
1320
5.
Maron
B.J.
and
Maron
M.S.
(
2013
)
Hypertrophic cardiomyopathy
.
Lancet.
381
,
242
255
6.
Maron
B.J.
,
Rowin
E.J.
,
Casey
S.A.
,
Garberich
R.F.
and
Maron
M.S.
(
2016
)
What do patients with hypertrophic cardiomyopathy die from?
Am. J. Cardiol.
117
,
434
435
7.
Maron
B.J.
,
Rowin
E.J.
,
Casey
S.A.
,
Haas
T.S.
,
Chan
R.H.
,
Udelson
J.E.
et al.
(
2013
)
Risk stratification and outcome of patients with hypertrophic cardiomyopathy >= 60 years of age
.
Circulation
127
,
585
593
8.
Hall
C.
(
2004
)
Essential biochemistry and physiology of (NT-pro)BNP
.
Eur. J. Heart Fail.
6
,
257
260
9.
Ponikowski
P.
,
Voors
A.A.
,
Anker
S.D.
,
Bueno
H.
,
Cleland
J.G.F.
,
Coats
A.J.S.
et al.
(
2016
)
2016 ESC Guidelines for the diagnosis and treatment of acute and chronic heart failure: The Task Force for the diagnosis and treatment of acute and chronic heart failure of the European Society of Cardiology (ESC)Developed with the special contribution of the Heart Failure Association (HFA) of the ESC
.
Eur. Heart J.
37
,
2129
2200
10.
Bozkurt
B.
,
Coats
A.J.S.
,
Tsutsui
H.
,
Abdelhamid
C.M.
,
Adamopoulos
S.
,
Albert
N.
et al.
(
2021
)
Universal definition and classification of heart failure: a report of the Heart Failure Society of America, Heart Failure Association of the European Society of Cardiology, Japanese Heart Failure Society and Writing Committee of the Universal Definition of Heart Failure: Endorsed by Canadian Heart Failure Society, Heart Failure Association of India, the Cardiac Society of Australia and New Zealand, and the Chinese Heart Failure Association
.
Eur. J. Heart Fail.
23
,
352
380
11.
Wu
G.
,
Liu
J.
,
Wang
S.
,
Yu
S.
,
Zhang
C.
,
Wang
D.
et al.
(
2021
)
N-terminal pro-brain natriuretic peptide and sudden cardiac death in hypertrophic cardiomyopathy
.
Heart
107
,
1576
1583
12.
Morrow
D.A.
,
de Lemos
J.A.
,
Sabatine
M.S.
,
Murphy
S.A.
,
Demopoulos
L.A.
,
DiBattiste
P.M.
et al.
(
2003
)
Evaluation of B-type natriuretic peptide for risk assessment in unstable angina/non-ST-elevation myocardial infarction: B-type natriuretic peptide and prognosis in TACTICS-TIMI 18
.
J. Am. Coll. Cardiol.
41
,
1264
1272
13.
,
Task Force Members
Elliott
P.M.
,
Anastasakis
A.
,
Borger
M.A.
,
Borggrefe
M.
,
Cecchi
F.
et al.
(
2014
)
ESC Guidelines on diagnosis and management of hypertrophic cardiomyopathy: the Task Force for the Diagnosis and Management of Hypertrophic Cardiomyopathy of the European Society of Cardiology (ESC)
.
Eur. Heart J.
35
,
2733
2779
14.
Aronow
W.S.
,
Fleg
J.L.
,
Pepine
C.J.
,
Artinian
N.T.
,
Bakris
G.
,
Brown
A.S.
et al.
(
2011
)
ACCF/AHA 2011 expert consensus document on hypertension in the elderly: a report of the American College of Cardiology Foundation Task Force on Clinical Expert Consensus Documents developed in collaboration with the American Academy of Neurology, American Geriatrics Society, American Society for Preventive Cardiology, American Society of Hypertension, American Society of Nephrology, Association of Black Cardiologists, and European Society of Hypertension
.
J. Am. Soc. Hypertens.
5
,
259
352
15.
American Diabetes Association
(
2013
)
Diagnosis and classification of diabetes mellitus
.
Diabetes Care
6
,
S67
74
16.
Xie
X.
,
Ma
Y.T.
,
Yang
Y.N.
,
Li
X.M.
,
Zheng
Y.Y.
,
Ma
X.
et al.
(
2013
)
Personalized antiplatelet therapy according to CYP2C19 genotype after percutaneous coronary intervention: a randomized control trial
.
Int. J. Cardiol.
168
,
3736
3740
17.
Elliott
P.M.
,
Poloniecki
J.
,
Dickie
S.
,
Sharma
S.
,
Monserrat
L.
,
Varnava
A.
et al.
(
2000
)
Sudden death in hypertrophic cardiomyopathy: identification of high risk patients
.
J. Am. Coll. Cardiol.
36
,
2212
2218
18.
Ingles
J.
,
Sarina
T.
,
Yeates
L.
,
Hunt
L.
,
Macciocca
I.
,
McCormack
L.
et al.
(
2013
)
Clinical predictors of genetic testing outcomes in hypertrophic cardiomyopathy
.
Genet. Med.
15
,
972
977
19.
Roma-Rodrigues
C.
,
Raposo
L.R.
and
Fernandes
A.R.
(
2015
)
MicroRNAs based therapy of hypertrophic cardiomyopathy: the road traveled so far
.
Biomed Res. Int.
983290
20.
Zhu
L.
,
Zou
Y.
,
Wang
Y.
,
Luo
X.
,
Sun
K.
,
Wang
H.
et al.
(
2017
)
Prognostic significance of plasma high-sensitivity C-reactive protein in patients with hypertrophic cardiomyopathy
.
J. Am. Heart Assoc.
6
,
e004529
21.
Ekizler
F.A.
,
Cay
S.
,
Açar
B.
,
Tak
B.T.
,
Kafes
H.
,
Ozeke
O.
et al.
(
2019
)
Monocyte to high-density lipoprotein cholesterol ratio predicts adverse cardiac events in patients with hypertrophic cardiomyopathy
.
Biomark. Med.
13
,
1175
1186
22.
Yang
H.J.
,
Liu
X.
,
Qu
C.
,
Shi
S.B.
,
Liang
J.J.
and
Yang
B.
(
2018
)
Usefulness of red blood cell distribution width to predict heart failure hospitalization in patients with hypertrophic cardiomyopathy
.
Int. Heart J.
59
,
779
785
23.
Bégué
C.
,
Mörner
S.
,
Brito
D.
,
Hengstenberg
C.
,
Cleland
J.G.F.
,
Arbustini
E.
et al.
(
2020
)
Mid-regional proatrial natriuretic peptide for predicting prognosis in hypertrophic cardiomyopathy
.
Heart
106
,
196
202
24.
Januzzi
J.L.
Jr
,
Ahmad
T.
,
Mulder
H.
,
Coles
A.
,
Anstrom
K.J.
,
Adams
K.F.
et al.
(
2019
)
Natriuretic peptide response and outcomes in chronic heart failure with reduced ejection fraction
.
J. Am. Coll. Cardiol.
74
,
1205
1217
25.
Mutlu
B.
,
Bayrak
F.
,
Kahveci
G.
,
Degertekin
M.
,
Eroglu
E.
and
Basaran
Y.
(
2006
)
Usefulness of N-terminal pro-B-type natriuretic peptide to predict clinical course in patients with hypertrophic cardiomyopathy
.
Am. J. Cardiol.
98
,
1504
1506
26.
Coats
C.J.
,
Gallagher
M.J.
,
Foley
M.
,
O’Mahony
C.
,
Critoph
C.
,
Gimeno
J.
et al.
(
2013
)
Relation between serum N- terminal pro- brain natriuretic peptide and prognosis in patients with hypertrophic cardiomyopathy
.
Eur. Heart J.
34
,
2529
2537
27.
Shirotani
S.
,
Minami
Y.
,
Saito
C.
,
Haruki
S.
and
Hagiwara
N.
(
2020
)
B-type natriuretic peptide and outcome in patients with apical hypertrophic cardiomyopathy
.
J. Cardiol.
76
,
357
363
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