| Literature DB >> 35211826 |
Sabine Brandt1, Anja Fischer1, Carla Kreutze1, Dorothea Hempel1, Xenia Gorny1, Florian G Scurt1, Delia L Şalaru1,2, Peter Bartsch1, Anja Bernhardt1, Stefanie M Bode-Böger3, Matthias Girndt4, Roman Fiedler4, Berend Isermann5,6, Jonathan A Lindquist1, Peter R Mertens7.
Abstract
BACKGROUND: In end-stage renal disease, a high cardiovascular risk profile and endothelial damage prevails. The heparin-binding growth factor midkine stimulates neo-angiogenesis in ischemic diseases, coordinates neutrophil influx, and raises blood pressure through stimulated angiotensin synthesis.Entities:
Keywords: Cardiovascular disease: biomarker; Diabetes; Hemodialysis; Hypervolemia; Midkine
Mesh:
Substances:
Year: 2022 PMID: 35211826 PMCID: PMC9372127 DOI: 10.1007/s11255-022-03141-4
Source DB: PubMed Journal: Int Urol Nephrol ISSN: 0301-1623 Impact factor: 2.266
Bibliographic data of hemodialysis cohort 1 (A) and selected laboratory values of the hemodialysis cohort 1 (B)
| (A) | |
|---|---|
| Mean age (years) | 64 ± 16 |
| On dialysis since (years) | 4.1 ± 3.9 |
| Sex | |
| Male | 54/83 (65%) |
| Female | 29/83 (35%) |
| Co-morbidities | |
| Arterial hypertension | 82/83 (99%) |
| Coronary artery disease | 40/83 (48%) |
| Diabetes mellitus | 33/83 (40%) |
| Carcinoma | 4/83 (5%) |
| Cerebrovascular disease | 17/83 (21%) |
| Anticoagulation | |
| Non-fractionated heparin: 70/82 (84%) | |
| 2-day interval (IU) | 6.222 ± 2.210 |
| 3-day interval (IU) | 6.251 ± 2.180 |
| Fractionated heparin (IU): 12/82 (15%) | |
| 2/3 days interval (IU) | 2.958 ± 2.875 |
| Weight difference before/after dialysis | |
| 2-day interval (kg) | 2.1 ± 1.1 |
| 3-day interval (kg) | 2.4 ± 1.1 |
| Hypervolemia | 51/83 (61%) |
| Intima media thickness [mm] | 0.9 ± 0.2 |
Fig. 1Serum midkine levels before and after dialysis treatment. All dialysis patients provided serum samples before and after two dialysis sessions following a short (2 day) and long (3 day) dialysis-free interval. A Individual changes in midkine serum levels are provided. Midkine serum levels after dialysis treatment increased following the short 2-day (p < 0.001) and long 3-day dialysis-free interval (p < 0.001). B Correlation of midkine serum level changes during dialysis after the short and long dialysis-free interval (r2 = 0.33, p < 0.001)
Fig. 2Changes in serum midkine levels during dialysis in patients diagnosed with diabetes and/or hypervolemia. A For the diabetic (n = 33) versus non-diabetic (n = 50) patients in cohort 1 subgroup analyses were performed. Absolute midkine values were assessed after a short and long dialysis-free interval. Intergroup comparisons did not yield significant differences. A similar analysis was performed with cohort 2, collected independently, yielding no significant difference. B For the patients diagnosed with hypervolemia (n = 51) versus euvolemia (n = 32) subgroup analyses were performed. Absolute midkine values were assessed after a short and long dialysis-free interval. Intergroup comparisons yielded differences after the short (p = 0.05) and long interval (p = 0.007) in cohort 1, for cohort 2 the difference was also significant (p < 0.05). C For the patients diagnosed with diabetes and hypervolemia (n = 19) versus those without diabetes and euvolemia (n = 15) subgroup analyses were performed in both cohorts. Absolute midkine values were assessed after a short and long dialysis-free interval. Intergroup comparisons yielded significant differences after the short (p = 0.05) and long interval (p = 0.001) in cohort 1, whereas a clear trend was seen in cohort 2 (p = 0.07). (D) Receiver operating characteristic (ROC) analyses allowed us to discriminate between non-diabetic/euvolemic versus diabetic/hypervolemic patients by means of Δmidkine values
Fig. 3Predictive value of serum markers for overall and cardiovascular survival. Serum determinations of midkine (A-D), uPAR (E, F) and NTproANP (G, H) were performed and levels below average after the 3 days dialysis-free interval (group 1) were compared with those above average (group 2), similarly calculations with 25 and 75 percentile values were done. Censoring for overall as well as cardiovascular survival over a 36-month period is depicted by Kaplan–Meier curves
Receiver operating characteristics of serum markers to predict cardiovascular survival
Selected serum markers were tested for prognostic sensitivity and specificity to foresee survival at 36 and 48 months. (A, B) Area under the curve (AUC) values obtained by serum markers to predict 3- and 4-year survival. Cut-off values were selected to yield the indicated sensitivity and specificity values. (C, D) AUC values following binary logistic regression analysis of indicated serum markers are shown. (Red to green color indicates highest to lowest prognostic power or AUC value)
Fig. 4Heatmap analyses of serum marker determinations to identify subgroups of patients with highest risk scores and adverse outcome Genesis software was used for heatmap analysis and clustering of patients according to differentially expressed serum markers. X axis represents serum markers and Y axis patients. Visualization was done using Z-score transformation of the raw data followed by hierarchical clustering of patients with average linkage as agglomeration rule. Red and blue colours indicate higher or lower than average expression levels, as visualized by the scale bar. Patients surviving 3 years are indicated by green line to the right.
Fig. 5Effect of fluid removal on midkine release in patients with hypervolemia. In patients diagnosed with hypervolemia (n = 21) appropriate fluid management was planned by increasing net fluid removal during dialysis sessions. Serum midkine levels after long dialysis-free intervals were quantified. 8/21 patients successfully removed additional 0.5–1.0 kg (n = 3) or > 1.0 kg (n = 5). A ∆Midkine levels were calculated as maximal difference to baseline in the 3 week intervention period. B Change of midkine values calculated as [%] change to baseline values