Published August 11, 2020 | Version v1
Journal article Open

Internal and External Validation of a Machine Learning Risk Score for Acute Kidney Injury

  • 1. University of Wisconsin-Madison
  • 2. University of Chicago
  • 3. Loyola University Medical Center
  • 4. NorthShore University HealthSystem

Description

Importance: Acute kidney injury (AKI) is associated with increased morbidity and mortality in hospitalized patients. Current methods to identify patients at high risk of AKI are limited, and few prediction models have been externally validated.

Objective: To internally and externally validate a machine learning risk score to detect AKI in hospitalized patients.

Design, Setting, and Participants: This diagnostic study included 495971 adult hospital admissions at the University of Chicago (UC) from 2008 to 2016 (n = 48463), at Loyola University Medical Center (LUMC) from 2007 to 2017 (n = 200613), and at NorthShore University Health System (NUS) from 2006 to 2016 (n = 246895) with serum creatinine (SCr) measurements. Patients with an SCr concentration at admission greater than 3.0 mg/dL, with a prior diagnostic code for chronic kidney disease stage 4 or higher, or who received kidney replacement therapy within 48 hours of admission were excluded. A simplified version of a previously published gradient boosted machine AKI prediction algorithm was used; it was validated internally among patients at UC and externally among patients at NUS and LUMC.

Main Outcomes and Measures: Prediction of Kidney Disease Improving Global Outcomes SCr-defined stage 2 AKI within a 48-hour interval was the primary outcome. Discrimination was assessed by the area under the receiver operating characteristic curve (AUC).

Results: The study included 495971 adult admissions (mean [SD] age, 63 [18] years; 87689 [17.7%] African American; and 266866 [53.8%] women) across 3 health systems. The development of stage 2 or higher AKI occurred in 15664 of 48463 patients (3.4%) in the UC cohort, 5711 of 200613 (2.8%) in the LUMC cohort, and 3499 of 246895 (1.4%) in the NUS cohort. In the UC cohort, 332 patients (0.7%) required kidney replacement therapy compared with 672 patients (0.3%) in the LUMC cohort and 440 patients (0.2%) in the NUS cohort. The AUCs for predicting at least stage 2 AKI in the next 48 hours were 0.86 (95% CI, 0.86-0.86) in the UC cohort, 0.85 (95% CI, 0.84-0.85) in the LUMC cohort, and 0.86 (95% CI, 0.86-0.86) in the NUS cohort. The AUCs for receipt of kidney replacement therapy within 48 hours were 0.96 (95% CI, 0.96-0.96) in the UC cohort, 0.95 (95% CI, 0.94-0.95) in the LUMC cohort, and 0.95 (95% CI, 0.94-0.95) in the NUS cohort. In time-to-event analysis, a probability cutoff of at least 0.057 predicted the onset of stage 2 AKI a median (IQR) of 27 (6.5-93) hours before the eventual doubling in SCr concentrations in the UC cohort, 34.5 (19-85) hours in the NUS cohort, and 39 (19-108) hours in the LUMC cohort.

Conclusions and Relevance: In this study, the machine learning algorithm demonstrated excellent discrimination in both internal and external validation, supporting its generalizability and potential as a clinical decision support tool to improve AKI detection and outcomes.

Files

churpek_2020_oi_200490.pdf

Files (1.8 MB)

Name Size Download all
Article
md5:4688c8fd81df6e532819184d5487953f
866.2 kB Preview Download
Supplemental files
md5:c4e0c7b6a4be83a146fd4eb91533c757
886.4 kB Preview Download

Additional details

Identifiers

DOI
10.1001/jamanetworkopen.2020.12892
Other
oai:uchicago.tind.io:11164

Funding

National Institute of Diabetes and Digestive and Kidney Diseases
R21DK113420
National Institute of General Medicine Sciences
R01 GM123193

UChicago Information

Division(s)
Biological Sciences Division
Department(s)
Medicine