Predicting Hospitalisation In Older Patients Attended In The Emergency Department Using Classical And Artificial Intelligence Mathematical Strategies

Background: The ageing population poses a significant challenge for health and social care systems. Emergency Departments (EDs) frequently experience overcrowding due to the high volume of patients and the limited availability of hospital beds. From the perspective of bed management planners, knowin...

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Detalhes bibliográficos
Autores: Larrea Aguirre, Nere, García Gutiérrez, Susana, Miró, Óscar, Jacob, Javier, Llorens Soriano, Pere, Burillo Putze, Guillermo, Fernández Alonso, Cesáreo, Alquezar Arbé, Aitor, Aguiló, Sira, Montero Pérez, Francisco Javier, Noceda Bermejo, José, Maza Vera, María Teresa, García García, Ángel, Ezponda, Patxi, González del Castillo, Juan
Formato: artículo
Estado:Versión publicada
Fecha de publicación:2025
País:España
Recursos:Universidad de Barcelona
Repositorio:Dipòsit Digital de la UB
OAI Identifier:oai:diposit.ub.edu:2445/222386
Acesso em linha:https://hdl.handle.net/2445/222386
Access Level:acceso abierto
Palavra-chave:Persones grans
Intel·ligència artificial en medicina
Older people
Medical artificial intelligence
Descrição
Resumo:Background: The ageing population poses a significant challenge for health and social care systems. Emergency Departments (EDs) frequently experience overcrowding due to the high volume of patients and the limited availability of hospital beds. From the perspective of bed management planners, knowing the likelihood of a patient's admission at the earliest stage of care can be highly beneficial for effective resource planning. The goal of our study was to develop a prediction model to identify patients with a high probability of being admitted to the hospital. Methods: We included all patients aged 65 or older who were treated over the course of one week in 52 Spanish Emergency Departments. The data collected included socio-demographic characteristics, baseline functional status, comorbidities, vital signs, chronic treatments, and laboratory test results. The primary outcome variable was hospital admission. We applied several mathematical strategies to develop the most accurate model for identifying high-risk patients likely to require hospitalisation. Results: The most effective model was developed using a random forest algorithm, incorporating various variables available during patient care in the ED. The probability of admission was categorised into four risk groups: 2.19 %, 15.65 %, 25.09 %, and 57.08 %. The resulting model had a sensitivity of 0.88. Conclusion: We developed a high-sensitivity score for hospital admission in older patients treated in the ED to enhance the management of patient flow by bed planners. This score will help prevent ED overcrowding, which compromises patient safety and disrupts the healthcare system.