| Literature DB >> 28759604 |
Benjamin R Zambetti1, Fridtjof Thomas2, Inyong Hwang1, Allen C Brown1, Mason Chumpia1, Robert T Ellis1, Darshan Naik1, Rami N Khouzam1, Uzoma N Ibebuogu1, Guy L Reed1.
Abstract
BACKGROUND: In ST-elevation myocardial infarction (STEMI), acute kidney injury (AKI) may increase subsequent morbidity and mortality. Still, it remains difficult to predict AKI risk in these patients. We sought to 1) determine the frequency and clinical outcomes of AKI and, 2) develop, validate and compare a web-based tool for predicting AKI. METHODS &Entities:
Mesh:
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Year: 2017 PMID: 28759604 PMCID: PMC5536350 DOI: 10.1371/journal.pone.0181658
Source DB: PubMed Journal: PLoS One ISSN: 1932-6203 Impact factor: 3.240
Demographics of the study sample.
| Variable | Derivation Data Set | Validation Data Set |
|---|---|---|
| 58.2 | 58.9 | |
| 352 (67%) | 357, (68%) | |
| 289 (55%) | 294 (56%) | |
| 368 (70%) | 373 (71%) | |
| 68 (13%) | 68 (13%) |
*The Derivation and Validation Data Sets are 50% random samples of the entire dataset.
Fig 1Mortality, length of stay and severity of AKI.
A) Mean hospital stay according to the severity of AKI as indicated by stage. B) In-hospital mortality by Stage of AKI. C) Frequency of AKI stage in patients with diagnostic coronary angiography (diagnostic) alone or with PCI. AKI = contrast-induced acute kidney injury, PCI = percutaneous coronary intervention. ***p<0.001 vs. patients with no AKI (none).
Cardiac and renal indices in patients with AKI.
| AKI | |||
|---|---|---|---|
| None | Stage 1 | Stage 2/3 | |
| 48 ± 12% | 44 ± 13% | 37 ± 14% | |
| 23 ± 12 | 27 ± 16 | 29 ± 13 | |
| 9% (79) | 30% (31) | 36% (11) | |
| 5% (43) | 13% (14) | 28% (8) | |
| 14 ± 24 | 24 ± 32 | 23 ± 30 | |
| 77 ± 28 | 88 ± 43 | 58 ± 36 | |
| 2 ± 14 | 35 ± 7 | 63 ± 14 | |
*p<0.05
** p<0.01
***p<0.001 compared to no AKI (none) as control.
Fig 2Classification of patients at risk for AKI.
ROC curves for A) derivation and B) validation datasets. AUC = area under the curver, ROC = receiver operator characteristic.
Area under the ROC curve (AUC) for predictive indices in the derivation and valdation data sets.
| Predictive Index | AUC (95% CI | AUC (95% CI) | ||
|---|---|---|---|---|
| 0.77 | (0.70, 0.83) | 0.76 | (0.70, 0.82) | |
| 0.68 | (0.60, 0.75) | 0.65 | (0.58, 0.73) | |
| 0.63 | (0.55, 0.70) | 0.65 | (0.58, 0.72) | |
| 0.49 | (0.40, 0.57) | 0.47 | (0.37, 0.57) | |
| 0.68 | (0.58, 0.76) | 0.67 | (0.59, 0.75) | |
| 0.65 | (0.57, 0.73) | 0.68 | (0.61, 0.76) | |
*CI, confidence interval
Sensitivity and specificity of indices for predicing AKI*.
| Data Set | Sensitivity–Specificity | UT-AKI | Mehran | AGEF | ACEF | NCDR |
|---|---|---|---|---|---|---|
| Sensitivity, Specificity (%) | 80, 60 | 65, 63 | 67, 54 | 59, 76 | 28, 70 | |
| Sensitivity, Specificity % | 84, 61 | 61, 62 | 71, 50 | 49, 68 | 55, 73 |
* The sensitivity and specificity of each predictive index is compared at specific thresholds or cut-points: UT-AKI (>0.1), Mehran (>5), AGEF (>1.48) and ACEF (>1.54). The McCullough score was not calculated as threshold values were not published.
Frequency of adverse clinical outcomes according to UT-AKI score.
| Hospital Death (N) | Mean Length of Stay in days (SD) | |||
|---|---|---|---|---|
| 0.02–0.09 | 5.1% (11) | 2.2% (5) | 3 (3) | |
| 0.1–0.19 | 15.6% (19) | 3.3% (4) | 5 (5) | |
| ≥0.2 | 35.2% (31) | 10.2% (9) | 7 (7) | |
| 0.02–0.09 | 3.6% (8) | 1.3% (3) | 4 (5) | |
| 0.1–0.19 | 16.1% (19) | 0.8% (1) | 4 (4) | |
| ≥0.2 | 26.4% (24) | 13% (12) | 9 (11) |
**p<0.01
***p<0.001 compared to the low risk grroup scores ranging to 0.02–0.09