Assessment of Hypertensive Patients’ Complex Metabolic Status Using Data Mining Methods
Abstract
:1. Introduction
2. Materials and Methods
2.1. Screening Patients for Hypertension
2.2. Determining Cardiovascular Risk factors in Laboratory Environment
2.3. Laboratory Analysis
2.4. Statistical Analysis
3. Results
3.1. Identification of Patients with Hypertension
3.2. Body Mass Index
3.3. Lipid Parameters
3.4. Identification of Statin Users
3.5. Serum Glucose, Haemoglobin A1c and Uric Acid Levels, Renal and Liver Function
3.6. Concomitant Diseases
3.7. Laboratory Parameters of the Study Population Based on the Grade of Hypertension
4. Discussion
5. Conclusions
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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18–34 Years | 35–49 Years | 50–64 Years | 65–79 Years | >80 Years | ||||||
---|---|---|---|---|---|---|---|---|---|---|
HT | nonHT | HT | nonHT | HT | nonHT | HT | nonHT | HT | nonHT | |
n | 22,438 | 260,548 | 54,197 | 165,904 | 109,883 | 125,873 | 90,891 | 76,700 | 18,210 | 18,484 |
TC (mmol/L) | 4.80 ± 1.01 | 4.79 ± 1.05 | 5.26 ± 1.14 | 5.28 ± 1.18 | 5.22 ± 1.19 | 5.35 ± 1.31 | 4.98 ± 1.20 | 4.99 ± 1.33 | 4.74 ± 1.20 | 4.64 ± 2.31 |
LDL-C (mmol/L) | 2.94 ± 0.85 | 2.94 ± 0.97 | 3.22 ± 0.94 | 3.31 ± 0.97 | 3.11 ± 0.9 | 3.31 ± 1.07 | 2.89 ± 1.01 | 3.02 ± 1. 9 | 2.72 ± 0.97 | 2.72 ± 1.07 |
TG (mmol/L) | 1.25 (0.87–1.87) | 1.01 (0.72–1.5) | 1.56 (1.09–2.30) | 1.28 (0.9–1.90) | 1.56 (1.13–2.20) | 1.40 (1.00–1.98) | 1.40 (1.04–1.90) | 1.30 (0.97–1.80) | 1.20 (0.91–1.60) | 1.11 (0.87–1.50) |
HDL-C (mmol/l) | 1.38 ± 0.41 | 1.50 ± 0.58 | 1.34 ± 0.41 | 1.45 ± 0.45 | 1.36 ± 0.41 | 1.43 ± 0.47 | 1.37 ± 0.41 | 1.38 ± 0.45 | 1.38 ± 0.42 | 1.46 ± 0.75 |
ApoB100 (g/L) | 0.88 ± 0.27 | 0.86 ± 0.86 | 1.00 ± 0.28 | 0.98 ± 0.28 | 1.02 ± 0.28 | 1.01 ± 0.29 | 0.97 ± 0.28 | 0.96 ± 0.28 | 0.93 ± 0.26 | 0.92 ± 0.27 |
ApoA1 (g/L) | 1.52 ± 0.33 | 1.57 ± 0.87 | 1.52 ± 0.29 | 1.56 ± 0.38 | 1.54 ± 0.29 | 1.57 ± 0.33 | 1.54 ± 0.30 | 1.53 ± 0.32 | 1.52 ± 0.33 | 1.54 ± 0.31 |
glucose (mmol/L) | 5.10 (4.7–5.6) | 4.98 (4.6–5.4) | 5.50 (5.0–6.3) | 5.29 (5.3–7.0) | 5.89 (5.3–7.0) | 5.60 (5.0–6.4) | 6.10 (5.4–7.3) | 5.78 (5.1–6.9) | 6.20 (5.5–7.3) | 5.93 (5.2–7.1) |
HbA1c (%) | 5.4 (5.1–6.0) | 5.3 (5.0–5.6) | 6.0 (5.5–7.2) | 5.8 (5.4–6.8) | 6.4 (5.8–7.5) | 6.1 (5,6–7.1) | 6.4 (5.8–7.5) | 6.4 (5.7–7.5) | 6.3 (5.8–7.3) | 6.0 (5.5–7.0) |
uric acid (µmol/L) | 297 ± 84.2 | 265 ± 75.5 | 308 ± 89.0 | 278 ± 87.1 | 322 ± 92.9 | 297 ± 96.7 | 333 ± 103.1 | 314 ± 112.2 | 344 ± 120.7 | 335 ± 142.5 |
urea (mmol/L) | 4.30 (3.55–5.19) | 4.13 (3.40–5.0) | 4.89 (4.06–5.83) | 4.65 (3.80–5.60) | 5.70 (4.70–7.0) | 5.33 (4.38–6.60) | 6.90 (5.53–9.02) | 6.50 (5.20–8.50) | 8.20 (6.30–11.1) | 7.90 (6.0–10.9) |
creatinine (µmol/L) | 68.3 (57.8–81.2) | 66.0 (56.3–78.0) | 71.0 (61.0–83.7) | 69.0 (59.5–80.5) | 75.0 (64.0–89.7) | 72.0 (61.0–84.7) | 83.0 (68.9–103.9) | 79.3 (66.0–98.0) | 89.3 (72.0–116.0) | 88.0 (70.6–114.5) |
AST (U/L) | 20.7 (17.1–26.3) | 19.0 (16.0–24.0) | 21.9 (18.0–29.0) | 20.7 (17.0–26.5) | 22.2 (18.2–30.0) | 21.9 (18.0–29.0) | 22.0 (18.0–30.3) | 21.9 (17.0–30.7) | 23.0 (18.0–33.0) | 22.3 (17.0–34.0) |
ALT (U/L) | 21.0 (15.0–34.0 | 18.0 (13.0–26.9) | 24.5 (17.5–36.2) | 21.0 (15.0–32.0) | 23.0 (17.3–33.0) | 21.0 (15.5–31.0) | 19.7 (15–27.8) | 19 (13.7–27) | 17.0 (12.8–25.8) | 16.0 (12.0–25.0) |
GGT (U/L) | 21.8 (14.3–37.6) | 18.0 (13.0–28.0) | 33.2 (20.3–61.0) | 26.3 (17–49.7) | 35.8 (22.8–66.0) | 33.0 (20.4–63.0) | 31.4 (20.3–57.3) | 30.0 (19.0–59.0) | 28.0 (17.7–53.3) | 25.0 (16.0–47.5) |
Grade 1 | Grade 2 | Grade 3 | |
---|---|---|---|
n | 99 601 | 43 283 | 41 990 |
TC (mmol/L) | 5.08 ± 1.19 | 5.15 ± 1.15 | 5.15 ± 1.1 |
LDL-C (mmol/L) | 3.06 ± 0.99 | 3.07 ± 0.99 | 3.04 ± 0.96 |
TG (mmol/L) | 1.41 (1.01–2.01) | 1.48 (1.08–2.07) | 1.54 (1.12–2.17) |
HDL-C (mmol/l) | 1.36 ± 0.41 | 1.37 ± 0.41 | 1.36 ± 0.39 |
ApoB100 (g/L) | 0.98 ± 0.28 | 0.99 ± 0.28 | 1.0 ± 0.28 |
ApoA1 (g/L) | 1.52 ± 0.31 | 1.54 ± 0.34 | 1.53 ± 0.29 |
glucose (mmol/L) | 5.7 (5.1–6.6) | 5.9 (5.3–7.0) | 6.0 (5.4–7.2) |
HbA1c (%) | 6.1 (5.6–7.3) | 6.3 (5.7–7.4) | 6.3 (5.7–7.5) |
uric acid (µmol/L) | 313 ± 95.1 | 323 ± 94.4 | 333 ± 91.4 |
urea (mmol/L) | 5.43 (4.36–6.95) | 5.8 (4.68–7.5) | 6.03 (4.9–7.9) |
creatinine (µmol/L) | 74.4 (62.5–89.0) | 77.0 (65.0–92.9) | 79.0 (66.4–97.3) |
AST (U/L) | 22.0 (18.0–29.7) | 22.5 (18.5–30.0) | 22.5 (18.5–29.5) |
ALT (U/L) | 22.0 (16.0–32.0) | 22.1 (16.4–32.5) | 22.5 (16.7–32.3) |
GGT (U/L) | 31.0 (19.3–57.5) | 33.3 (21.0–60.3) | 34.0 (21.5–61.3) |
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Kovács, B.; Németh, Á.; Daróczy, B.; Karányi, Z.; Maroda, L.; Diószegi, Á.; Harangi, M.; Páll, D. Assessment of Hypertensive Patients’ Complex Metabolic Status Using Data Mining Methods. J. Cardiovasc. Dev. Dis. 2023, 10, 345. https://doi.org/10.3390/jcdd10080345
Kovács B, Németh Á, Daróczy B, Karányi Z, Maroda L, Diószegi Á, Harangi M, Páll D. Assessment of Hypertensive Patients’ Complex Metabolic Status Using Data Mining Methods. Journal of Cardiovascular Development and Disease. 2023; 10(8):345. https://doi.org/10.3390/jcdd10080345
Chicago/Turabian StyleKovács, Beáta, Ákos Németh, Bálint Daróczy, Zsolt Karányi, László Maroda, Ágnes Diószegi, Mariann Harangi, and Dénes Páll. 2023. "Assessment of Hypertensive Patients’ Complex Metabolic Status Using Data Mining Methods" Journal of Cardiovascular Development and Disease 10, no. 8: 345. https://doi.org/10.3390/jcdd10080345
APA StyleKovács, B., Németh, Á., Daróczy, B., Karányi, Z., Maroda, L., Diószegi, Á., Harangi, M., & Páll, D. (2023). Assessment of Hypertensive Patients’ Complex Metabolic Status Using Data Mining Methods. Journal of Cardiovascular Development and Disease, 10(8), 345. https://doi.org/10.3390/jcdd10080345