| Literature DB >> 33161898 |
Dietrich Rothenbacher1,2, Martin Rehm3, Licia Iacoviello4,5, Simona Costanzo4, Hugh Tunstall-Pedoe6, Jill J F Belch7, Stefan Söderberg8, Johan Hultdin9, Veikko Salomaa10, Pekka Jousilahti10, Allan Linneberg11, Susana Sans12, Teresa Padró13, Barbara Thorand14, Christa Meisinger15,16, Frank Kee17, Amy Jayne McKnight18, Tarja Palosaari10, Kari Kuulasmaa10, Christoph Waldeyer19, Tanja Zeller19,20, Stefan Blankenberg19,20, Wolfgang Koenig3,21,22.
Abstract
BACKGROUND: Chronic kidney disease has emerged as a strong cardiovascular risk factor, and in many current guidelines, it is already considered as a coronary heart disease (CHD) equivalent. Routinely, creatinine has been used as the main marker of renal function, but recently, cystatin C emerged as a more promising marker. The aim of this study was to assess the comparative cardiovascular and mortality risk of chronic kidney disease (CKD) using cystatin C-based and creatinine-based equations of the estimated glomerular filtration rate (eGFR) in participants of population-based and disease cohorts.Entities:
Keywords: Adverse outcome; Chronic kidney disease; Cohort study; Creatinine; Cystatin C; Estimated glomerular filtration rate
Mesh:
Substances:
Year: 2020 PMID: 33161898 PMCID: PMC7650190 DOI: 10.1186/s12916-020-01776-7
Source DB: PubMed Journal: BMC Med ISSN: 1741-7015 Impact factor: 8.775
Baseline characteristics of the study populations
| Population-based cohorts | Disease cohorts | |
|---|---|---|
| Number of cohorts, | 20 | 3 |
| Number of subjects, | 75,367 | 4982 |
| Men, | 38,350 (50.9%) | 3766 (75.6%) |
| Age at baseline, years | ||
| Median (Q1, Q3) | 50.0 (41.0, 59.0) | 63.0 (54.0, 69.0) |
| Proportion ≥ 65 years | 13.1% | 42.6% |
| Daily smokers, | 24,077 (31.9%) | 892 (17.9%) |
| Diabetes, | 3286 (4.4%) | 930 (18.7%) |
| Hypertension, | 30,811 (40.9%) | 3514 (70.5%) |
| Body mass index (kg/m2), mean (SD) | 26.9 (4.6) | 27.6 (4.1) |
| Total cholesterol (mmol/L)* | 5.7 (5.0, 6.5) | 4.9 (4.1, 5.7) |
| CRP (mg/L)* | 1.3 (0.6, 2.9) | 1.5 (0.4, 5.1) |
| Nt-proBNP (pg/mL)* | 45.9 (24.2, 86.3) | 308.0 (116.0, 803.0) |
| Troponin I (ng/L)* | 2.3 (1.4, 3.7) | 10.4 (4.6, 29.7) |
| eGFR (mL/min/1.73m2)* | ||
| CKD-EPIcrea | 97.6 (85.9, 107.6) | 82.7 (68.7, 94.6) |
| CKD-EPIcysC | 92.5 (76.4, 111.5) | 91.1 (69.1, 116.2) |
| CKD stage 3+, | ||
| CKD-EPIcrea | 2450 (3.3%) | 691 (13.9%) |
| CKD-EPIcysC | 5562 (7.4%) | 719 (14.4%) |
| Endpoints ( | ||
| Cardiovascular disease | 6850, 8.2 (95% CI 8.0–8.4) | 371, 21.2 (95% CI 19.2–23.5) |
| Cardiovascular mortality | 3796, 4.2 (95% CI 4.1–4.3) | 132, 6.9 (95% CI 5.8–8.2) |
| Total mortality | 9840, 10.9 (95% CI 10.6–11.1) | 343, 17.9 (95% CI 16.1–19.9) |
*Median (interquartile range, Q1, Q3)
Fig. 1Prevalence of CKD based on different eGFR estimating equations in the population-based cohorts (histograms represent prevalence in % and bars 95% CIs)
Fig. 2Prevalence of CKD based on different eGFR estimating equations in the disease cohorts (histograms represent prevalence in % and bars 95% CIs)
Fig. 3Association of CKD with various endpoints in population-based cohorts (squares represent HR and 95% CIs)
Fig. 4Association of CKD with various endpoints in disease cohorts (squares represent HR and 95% CIs)
Fig. 5Spline regression representing creatinine (left side)- and cystatin C (right side)-based eGFR associated with hazard ratio (HR) for mortality after adjustment for SCORE variables and study cohort for all and after stratification for age in the population-based cohorts (for details, see the “Methods” section)