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Early prediction of hospital admission of emergency department patients

Kartik Kishore, George Braitberg, Natasha E. Holmes, Rinaldo Bellomo

2023Emergency Medicine Australasia17 citationsDOIOpen Access PDF

Abstract

OBJECTIVE: The early prediction of hospital admission is important to ED patient management. Using available electronic data, we aimed to develop a predictive model for hospital admission. METHODS: We analysed all presentations to the ED of a tertiary referral centre over 7 years. To our knowledge, our data set of nearly 600 000 presentations is the largest reported. Using demographic, clinical, socioeconomic, triage, vital signs, pathology data and keywords in electronic notes, we trained a machine learning (ML) model with presentations from 2015 to 2020 and evaluated it on a held-out data set from 2021 to mid-2022. We assessed electronic medical records (EMRs) data at patient arrival (baseline), 30, 60, 120 and 240 min after ED presentation. RESULTS: The training data set included 424 354 data points and the validation data set 53 403. We developed and trained a binary classifier to predict inpatient admission. On a held-out test data set of 121 258 data points, we predicted admission with 86% accuracy within 30 min of ED presentation with 94% discrimination. All models for different time points from ED presentation produced an area under the receiver operating characteristic curve (AUC) ≥0.93 for admission overall, with sensitivity/specificity/F1-scores of 0.83/0.90/0.84 for any inpatient admission at 30 min after presentation and 0.81/0.92/0.84 at baseline. The models retained lower but still high AUC levels when separated for short stay units or inpatient admissions. CONCLUSION: We combined available electronic data and ML technology to achieve excellent predictive performance for subsequent hospital admission. Such prediction may assist with patient flow.

Topics & Concepts

MedicineEmergency departmentTriageReceiver operating characteristicEmergency medicineHospital admissionMedical recordReferralMedical emergencyMachine learningArtificial intelligenceInternal medicineFamily medicinePsychiatryComputer scienceEmergency and Acute Care StudiesSepsis Diagnosis and TreatmentMachine Learning in Healthcare
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