Developing machine learning models to personalize care levels among emergency room patients for hospital admission

Author:

Nguyen Minh1ORCID,Corbin Conor K1,Eulalio Tiffany1,Ostberg Nicolai P12,Machiraju Gautam1,Marafino Ben J1,Baiocchi Michael3,Rose Christian4ORCID,Chen Jonathan H5

Affiliation:

1. Department of Biomedical Data Science, Stanford University, School of Medicine, Stanford, California, USA

2. New York University Grossman School of Medicine, New York, New York, USA

3. Department of Epidemiology and Population Health, Stanford University, School of Medicine, Stanford, California, USA

4. Department of Emergency Medicine, Stanford University, School of Medicine, Stanford, California, USA

5. Stanford Center for Biomedical Informatics Research; Division of Hospital Medicine, Department of Medicine, Stanford University, School of Medicine, Stanford, California, USA

Abstract

Abstract Objective To develop prediction models for intensive care unit (ICU) vs non-ICU level-of-care need within 24 hours of inpatient admission for emergency department (ED) patients using electronic health record data. Materials and Methods Using records of 41 654 ED visits to a tertiary academic center from 2015 to 2019, we tested 4 algorithms—feed-forward neural networks, regularized regression, random forests, and gradient-boosted trees—to predict ICU vs non-ICU level-of-care within 24 hours and at the 24th hour following admission. Simple-feature models included patient demographics, Emergency Severity Index (ESI), and vital sign summary. Complex-feature models added all vital signs, lab results, and counts of diagnosis, imaging, procedures, medications, and lab orders. Results The best-performing model, a gradient-boosted tree using a full feature set, achieved an AUROC of 0.88 (95%CI: 0.87–0.89) and AUPRC of 0.65 (95%CI: 0.63–0.68) for predicting ICU care need within 24 hours of admission. The logistic regression model using ESI achieved an AUROC of 0.67 (95%CI: 0.65–0.70) and AUPRC of 0.37 (95%CI: 0.35–0.40). Using a discrimination threshold, such as 0.6, the positive predictive value, negative predictive value, sensitivity, and specificity were 85%, 89%, 30%, and 99%, respectively. Vital signs were the most important predictors. Discussion and Conclusions Undertriaging admitted ED patients who subsequently require ICU care is common and associated with poorer outcomes. Machine learning models using readily available electronic health record data predict subsequent need for ICU admission with good discrimination, substantially better than the benchmarking ESI system. The results could be used in a multitiered clinical decision-support system to improve ED triage.

Funder

NIH

National Library of Medicine

Gordon and Betty Moore Foundation

Stanford Clinical Excellence Research Center

NLM

National Science Foundation Graduate Research Fellowship

Publisher

Oxford University Press (OUP)

Subject

Health Informatics

Reference48 articles.

1. Adverse outcomes associated with delayed intensive care unit transfers in an integrated healthcare system;Liu;J Hosp Med,2012

2. National early warning score is modestly predictive of care escalation after emergency department-to-floor admission;Sutherland;J Emerg Med,2020

3. Triage of patients consulted for ICU admission during times of ICU-bed shortage;Orsini;J Clin Med Res,2014

4. National hospital ambulatory medical care survey: 2007 emergency department summary;Niska;Natl Health Stat Rep,2010

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