2023
DOI: 10.1111/acps.13551
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Evaluating the performance of machine learning methods for risk estimation of delirium in patients hospitalized from the emergency department

Abstract: Introduction Delirium is a cerebral dysfunction seen commonly in the acute care setting. It is associated with increased mortality and morbidity and is frequently missed in the emergency department (ED) and inpatient care by clinical gestalt alone. Identifying those at risk of delirium may help prioritize screening and interventions in the hospital setting. Objective Our objective was to leverage electronic health records to identify a clinically valuable risk estimation model for prevalent delirium in patient… Show more

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Cited by 3 publications
(2 citation statements)
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“…Machine learning may be a promising tool to reduce the testing time needed or identify those at higher risk for testing. 43 , 44 , 45 Once identified, there are many ways to manage delirium. AFED should have delirium pathways or toolkits that may utilize additional bedside volunteers or patient care technicians, mobilization with therapists, an evaluation of potential reversible causes of delirium, and reducing agitation from pain or tethering devices such as IVs and cardiac monitors.…”
Section: Ms Frameworkmentioning
confidence: 99%
“…Machine learning may be a promising tool to reduce the testing time needed or identify those at higher risk for testing. 43 , 44 , 45 Once identified, there are many ways to manage delirium. AFED should have delirium pathways or toolkits that may utilize additional bedside volunteers or patient care technicians, mobilization with therapists, an evaluation of potential reversible causes of delirium, and reducing agitation from pain or tethering devices such as IVs and cardiac monitors.…”
Section: Ms Frameworkmentioning
confidence: 99%
“…Machine learning could provide a data-driven approach to early identification of patients at risk of delirium. Mueller et al 15 evaluated algorithms applied in emergency department records using variables such as demographic features, physiological measurements, medications administered, laboratory results and diagnoses. Setting the threshold for sensitivity at 90%, a gradient-boosted machine learning model achieved a specificity of 53.5%.…”
mentioning
confidence: 99%