| Literature DB >> 25875814 |
Claudia Schrimpf1, Hans-Joerg Gillmann2, Bianca Sahlmann2, Antje Meinders2, Jan Larmann2, Mathias Wilhelmi1, Thomas Aper1, Saad Rustum1, Ralf Lichtinghagen3, Gregor Theilmeier2, Omke E Teebken1.
Abstract
OBJECTIVE: Precise perioperative risk stratification is important in vascular surgery patients who are at high risk for major adverse cardiovascular events (MACE) peri- and postoperatively. In clinical practice, the patient's perioperative risk is predicted by various indicators, e.g. revised cardiac index (RCRI) or modifications thereof. Patients suffering from chronic kidney disease (CKD) are stratified into a higher risk category. We hypothesized that Copeptin as a novel biomarker for hemodynamic stress could help to improve the prediction of perioperative cardiovascular events in patients undergoing vascular surgery including patients with chronic kidney disease.Entities:
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Year: 2015 PMID: 25875814 PMCID: PMC4395325 DOI: 10.1371/journal.pone.0123093
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Demographical data of study population subdivided into surgical procedures.
| Variable | Total | Aorta | Peripheral | Carotid | P-value |
|---|---|---|---|---|---|
| Number of patients n (%) | 477 (100) | 189 (39.6) | 98 (20.5) | 190 (39.8) | |
| Age (years) median (25–75 percentile) | 70 (63–75) | 69 (60–74) | 70 (63–76) | 71 (65–76) | .043 |
| male sex n (%) | 382 (79.9) | 171 (44.8) | 79 (20.7) | 132 (34.6) | .002 |
| Weight (kg) median (25–75 percentile) | 80 (70–90) | 82 (73.0–92.5) | 80 (71–89) | 75.5 (69–75) | .01 |
| History of Stroke n (%) | 102 (21.4) | 17 (16.7) | 14 (13.7) | 71 (69.6) | <.001 |
| CAD n (%) | 181 (37.8) | 71 (39.2) | 35 (19.3) | 75(41.4) | .52 |
| RCRI median | 2 | 2 | 1 | <.001 | |
| RCRI 0 n (%) | 51 (10.7) | 1 (0.5) | 2 (2) | 48 (25.3) | |
| RCRI 1 n (%) | 193 (40.5) | 75 (39.7) | 38 (38.8) | 80 (42.1) | |
| RCRI 2 n (%) | 135 (28.3) | 66 (34.9) | 26 (26.5) | 43 (22.6) | |
| RCRI ≥3 n (%) | 98 (20.5) | 47 (24.9) | 32 (32.7) | 19 (10%) | |
| GFR median (25–75 percentile) (mL/min/1.73m2) | 60 (55–60) | 60 (55.5–60) | 60 (51.8–60) | 60 (56–60) | .05 |
| Copeptin preop (pmol/L) median (25–75 percentile) | 10.16 (5.67–18.07) | 10.99 (6.6–19.5) | 10.73 (6.03–19.1) | 8.64 (≤4.8–16.3) | .08 |
| Copeptin postop (pmol/L) median (25–75 percentile) | 23.55 (11.50–59.9) | 46.03 (20.0–97.5) | 20.62 (10.08–42.3) | 15.37 (8.8–28.7) | .03 |
| Copeptin delta absolute (pmol/L) median (25–75 percentile) | 12.88 (4.01–44.88) | 38.47 (11.1–85.1) | 8.96 (2.1–29.1) | 7.91 (2.2–17.5) | .16 |
| MACE n (%) | 41 (8.6) | 26 (5.5) | 4 (0.8) | 11 (2.3) | .004 |
P depicts P value of univariate linear regression calculated for each variable and type of surgery. The number of patients (n) for each group as well as percentage (%) is depicted. Other variables are shown as median with 25–75 percentile. Abbreviations are used as follows: coronary artery disease (CAD), revised cardiac risk index (RCRI), glomerular filtration rate (GFR), preoperative values for Copeptin (preop Copeptin), postoperative values for Copeptin (postop Copeptin), change of Copeptin levels between pre- and postoperative sample (Copeptin delta absolute), Major adverse cardiovascular events (MACE).
Linear regression analysis of MACE and existing comorbidities.
| Epidemiology and comorbidities | Significance univariate | Significance multivariate |
|---|---|---|
| Sex | .089 | .111 |
| Age | .680 | |
| Weight | .850 | |
| Height | .911 | |
| BMI | .892 | |
| Hypertension | .974 | |
| Diabetes | .216 | |
| History of stroke | .375 | |
| Preoperative GFR (mL/min/1.73m2) | <.001 | <.001 |
| Smoking | .282 | |
| Heart failure | <.001 | .002 |
| COPD | .034 | .247 |
| CAD | .030 | .445 |
| RCRI category | <.001 | <.001 |
| Surgical procedure | .844 | |
| Copeptin preop | <.001 | .003 |
| Copeptin postop | <.001 | .234 |
| Copeptin change | .001 | .027 |
*marks significant confounders.
Abbreviations are used as follows: BMI (Body mass index), TIA (transitory ischemic attack) COPD (chronic obstructive pulmonary disease), CAD (coronary artery disease), RCRI (Revised cardiac index), Surgical procedure (type of surgery performed subdivided into aortic, carotid and peripheral arterial procedures). Copeptin preoperative, postoperative and Copeptin change; significant results were additionally used in multivariate regression (significance multivariate) results are shown with p values. Comorbidities and putative risk predictors were analyzed in separate univariate and multivariate analysis.
Analysis of Copeptin levels.
| Preoperative Copeptin | Postoperative Copeptin | Copeptin change | ||||
|---|---|---|---|---|---|---|
| Epidemiology and comorbidities | univariate | multivariate | univariate | multivariate | univariate | multivariate |
| Sex | .009 | .025 | .096 | .108 | .451 | |
| Age | .249 | .358 | .585 | |||
| Weight | .179 | .788 | .773 | |||
| Height | .081 | .690 | .427 | .980 | ||
| BMI | .530 | .976 | .807 | |||
| Hypertension | .028 | .506 | .072 | .776 | .277 | |
| Diabetes | .484 | .470 | .603 | |||
| History of stroke | .678 | .014 | .001 | .008 | <.001 | |
| Preoperative GFR (mL/min/1.73m2) | <.001 | <.001 | <.001 | <.001 | <.001 | <.001 |
| Smoking | .722 | .980 | .851 | |||
| Heart failure | .910 | .582 | .494 | |||
| COPD | .168 | .349 | .643 | |||
| CAD | .002 | .317 | .003 | .407 | .048 | .318 |
| RCRI category | <.001 | .942 | <.001 | .020 | <.001 | .006 |
| Surgical procedure | .077 | .745 | .033 | .377 | .095 | .146 |
Linear regression analysis of pre-, postoperative Copeptin levels and Copeptin change (pmol/L) and existing comorbidities as well as RCRI category and surgical procedure,
*marks significant confounders, abbreviations are used as follows: BMI (Body mass index), TIA (transitory ischemic attack), COPD (chronic obstructive pulmonary disease), CAD (coronary artery disease), RCRI (Revised cardiac index), surgical procedure (type of surgery performed subdivided into aortic, carotid and peripheral surgeries). Significance reveals results of linear regression analysis; significant results were additionally used in multivariate regression (significance multivariate) results are shown with P values.
Fig 1Copeptin is elevated in patients sustaining Major Adverse Cardiovascular Events (MACE) throughout the perioperative phase.
Boxplots of pre- (A) and postoperative (B) Copeptin levels as well as perioperative Copeptin change (C) (pmol/L). Groups were analyzed by Mann-Whitney U test (A) P = .0001, (B) P = .0002, (C) P = .014.
Fig 2ROC analysis comparing the RCRI alone or combined with Copeptin-derived parameters.
Only preoperative Copeptin (blue dotted line) improved risk predictive accuracy of the RCRI (P = .0371, AUC .752). The RCRI-ROC Curve (black line) (AUC .714) indicates prediction of the occurrence of major adverse cardiovascular events (MACE). The combination of RCRI and postoperative Copeptin (red dashed line) (P = .0620, AUC .751) and RCRI and Copeptin changes (P = .1525, AUC .710) during the perioperative course (green dashed and dotted line) do not reach significantly larger AUCs. * marks significant values.
Preoperative Copeptin levels (pmol/L) in patients with or without MACE according to RCRI level.
| RCRI | MACE + | MACE - | MACE +/- |
|---|---|---|---|
|
| 0 | (51) | (51) |
| (min-max) median | (n.a.) n.a. | (≤4.8–78.01) 6.66 | (≤4.8–78.01) 6.66 |
|
| (7) | (186) | (193) |
| (min-max) median | (≤4.8–23.31) 4.8 | (≤4.8–163.8) 9.56 | (4.8–163.8) 9.35 |
|
| (17) | (118) | (135) |
| (min-max) median | (≤4.8–180.7) 19.18 | (≤4.8–274.5) 9.77 | (≤4.8–274.5) 10.22 |
|
| (17) | (81) | (98) |
| (min-max) median | (6.14–165.7) 31.79 | (≤4.8–321.6) 15.78 | (≤4.8–321.6) 17.29 |
|
| (41) | (436) | (477) |
| (min-max) median | (≤4.8–180.7) 18.89 | (≤4.8–321.6) 9.75 | (≤4.8–321.6) 10.16 |
Fig 3Copeptin interferes with kidney injury in prediction of MACE.
Preoperative Copeptin levels (pmol/L) are significantly (P<.0001) elevated in patients with chronic kidney disease increasing with severity of kidney injury (A). Preoperative Copeptin is not associated with MACE in patients with CKD 1&2 (B) (P = .3787) or CKD 4&5 (D) (P = .2264) but shows significant association with MACE in CKD 3 (C) (P = .0163). Data were analyzed using Mann Whitney U test for comparing two groups and Kruskal Wallis test followed by Dunns test for multiple comparisons. Blots are depicted as 5–95 percentile.