Early Prediction of Acute Kidney Injury in the Emergency Department With Machine-Learning Methods Applied to Electronic Health Record Data.


Journal

Annals of emergency medicine
ISSN: 1097-6760
Titre abrégé: Ann Emerg Med
Pays: United States
ID NLM: 8002646

Informations de publication

Date de publication:
10 2020
Historique:
received: 24 12 2019
revised: 13 05 2020
accepted: 18 05 2020
pubmed: 28 7 2020
medline: 11 11 2020
entrez: 28 7 2020
Statut: ppublish

Résumé

Acute kidney injury occurs commonly and is a leading cause of prolonged hospitalization, development and progression of chronic kidney disease, and death. Early acute kidney injury treatment can improve outcomes. However, current decision support is not able to detect patients at the highest risk of developing acute kidney injury. We analyzed routinely collected emergency department (ED) data and developed prediction models with capacity for early identification of ED patients at high risk for acute kidney injury. A multisite, retrospective, cross-sectional study was performed at 3 EDs between January 2014 and July 2017. All adult ED visits in which patients were hospitalized and serum creatinine level was measured both on arrival and again with 72 hours were included. We built machine-learning-based classifiers that rely on vital signs, chief complaints, medical history and active medical visits, and laboratory results to predict the development of acute kidney injury stage 1 and 2 in the next 24 to 72 hours, according to creatinine-based international consensus criteria. Predictive performance was evaluated out of sample by Monte Carlo cross validation. The final cohort included 91,258 visits by 59,792 unique patients. Seventy-two-hour incidence of acute kidney injury was 7.9% for stages greater than or equal to 1 and 1.0% for stages greater than or equal to 2. The area under the receiver operating characteristic curve for acute kidney injury prediction ranged from 0.81 (95% confidence interval 0.80 to 0.82) to 0.74 (95% confidence interval 0.74 to 0.75), with a median time from ED arrival to prediction of 1.7 hours (interquartile range 1.3 to 2.5 hours). Machine learning applied to routinely collected ED data identified ED patients at high risk for acute kidney injury up to 72 hours before they met diagnostic criteria. Further prospective evaluation is necessary.

Identifiants

pubmed: 32713624
pii: S0196-0644(20)30397-8
doi: 10.1016/j.annemergmed.2020.05.026
pii:
doi:

Substances chimiques

Creatinine AYI8EX34EU

Types de publication

Journal Article Multicenter Study Research Support, N.I.H., Extramural Research Support, U.S. Gov't, P.H.S.

Langues

eng

Sous-ensembles de citation

IM

Pagination

501-514

Subventions

Organisme : AHRQ HHS
ID : R01 HS027793
Pays : United States

Commentaires et corrections

Type : CommentIn
Type : CommentIn

Informations de copyright

Copyright © 2020 American College of Emergency Physicians. Published by Elsevier Inc. All rights reserved.

Auteurs

Diego A Martinez (DA)

Department of Emergency Medicine, Johns Hopkins University, Baltimore, MD; Division of Health Sciences Informatics, Johns Hopkins University, Baltimore, MD.

Scott R Levin (SR)

Department of Emergency Medicine, Johns Hopkins University, Baltimore, MD; Division of Health Sciences Informatics, Johns Hopkins University, Baltimore, MD.

Eili Y Klein (EY)

Department of Emergency Medicine, Johns Hopkins University, Baltimore, MD; Center for Disease Dynamics, Economics and Policy, Washington, DC.

Chirag R Parikh (CR)

Department of Medicine, Division of Nephrology, Johns Hopkins University, Baltimore, MD.

Steven Menez (S)

Department of Medicine, Division of Nephrology, Johns Hopkins University, Baltimore, MD.

Richard A Taylor (RA)

Department of Emergency Medicine, Yale University, New Haven, CT.

Jeremiah S Hinson (JS)

Department of Emergency Medicine, Johns Hopkins University, Baltimore, MD. Electronic address: hinson@jhmi.edu.

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Classifications MeSH