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A web-based tool to predict acute kidney injury in patients with ST-elevation myocardial infarction: Development, internal validation and comparison

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 we...

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Published in:PloS one 2017-07, Vol.12 (7), p.e0181658-e0181658
Main Authors: Zambetti, Benjamin R, Thomas, Fridtjof, Hwang, Inyong, Brown, Allen C, Chumpia, Mason, Ellis, Robert T, Naik, Darshan, Khouzam, Rami N, Ibebuogu, Uzoma N, Reed, Guy L
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cited_by cdi_FETCH-LOGICAL-c692t-c9066e53347d2fac472dffc38fdda61b2bd22a04f2256b703e9c5d8440a2ab763
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creator Zambetti, Benjamin R
Thomas, Fridtjof
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Ibebuogu, Uzoma N
Reed, Guy L
description 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. In a racially diverse series of 1144 consecutive STEMI patients, Stage 1 or greater AKI occurred in 12.9% and was severe (Stage 2-3) in 2.9%. AKI was associated with increased mortality (5.7-fold, unadjusted) and hospital stay (2.5-fold). AKI was associated with systolic dysfunction, increased left ventricular end-diastolic pressures, hypotension and intra-aortic balloon counterpulsation. A computational algorithm (UT-AKI) was derived and internally validated. It showed higher sensitivity and improved overall prediction for AKI (area under the curve 0.76) vs. other published indices. Higher UT-AKI scores were associated with more severe AKI, longer hospital stay and greater hospital mortality. In a large, racially diverse cohort of STEMI patients, Stage 1 or greater AKI was relatively common and was associated with significant morbidity and mortality. A web-accessible, internally validated tool was developed with improved overall value for predicting AKI. By identifying patients at increased risk, this tool may help physicians tailor post-procedural diagnostic and therapeutic strategies after STEMI to reduce AKI and its associated morbidity and mortality.
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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. In a racially diverse series of 1144 consecutive STEMI patients, Stage 1 or greater AKI occurred in 12.9% and was severe (Stage 2-3) in 2.9%. AKI was associated with increased mortality (5.7-fold, unadjusted) and hospital stay (2.5-fold). AKI was associated with systolic dysfunction, increased left ventricular end-diastolic pressures, hypotension and intra-aortic balloon counterpulsation. A computational algorithm (UT-AKI) was derived and internally validated. It showed higher sensitivity and improved overall prediction for AKI (area under the curve 0.76) vs. other published indices. Higher UT-AKI scores were associated with more severe AKI, longer hospital stay and greater hospital mortality. 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source Publicly Available Content Database; PubMed Central
subjects Acute coronary syndromes
Acute kidney failure
Acute Kidney Injury - diagnosis
Aged
Algorithms
Aorta
Area Under Curve
Balloon treatment
Biology and Life Sciences
Biomarkers - blood
Cardiology
Cardiovascular disease
Classification
Computer applications
Coronary vessels
Critical care
Diagnosis
Diagnosis, Computer-Assisted - methods
Diagnostic software
Diagnostic systems
Emergency medical care
Family medical history
Female
Heart
Heart attacks
Hospitals
Humans
Hypotension
Internet
Kidney diseases
Kidneys
Laboratories
Male
Medical diagnosis
Medical imaging
Medical personnel
Medicine and Health Sciences
Middle Aged
Morbidity
Mortality
Myocardial infarction
Patient outcomes
Patients
People and Places
Percutaneous Coronary Intervention
Physicians
Predictions
Preventive medicine
Reproducibility of Results
Research and Analysis Methods
Retrospective Studies
Risk
Science
Sensitivity and Specificity
Severity of Illness Index
ST Elevation Myocardial Infarction - diagnosis
Studies
Systole
Treatment Outcome
Ventricle
Web applications
World Wide Web
title A web-based tool to predict acute kidney injury in patients with ST-elevation myocardial infarction: Development, internal validation and comparison
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