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Machine learning methods applied to triage in emergency services: A systematic review.
Sánchez-Salmerón, Rocío; Gómez-Urquiza, José L; Albendín-García, Luis; Correa-Rodríguez, María; Martos-Cabrera, María Begoña; Velando-Soriano, Almudena; Suleiman-Martos, Nora.
Afiliação
  • Sánchez-Salmerón R; Andalusian Health Services, Spain. Electronic address: rociosanchezs@correo.ugr.es.
  • Gómez-Urquiza JL; Faculty of Health Sciences, University of Granada, Avenida de la Ilustración N. 60, 18016 Granada, Spain. Electronic address: jlgurquiza@ugr.es.
  • Albendín-García L; Faculty of Health Sciences, University of Granada, Avenida de la Ilustración N. 60, 18016 Granada, Spain. Electronic address: lualbgar1979@ugr.es.
  • Correa-Rodríguez M; Faculty of Health Sciences, University of Granada, Avenida de la Ilustración N. 60, 18016 Granada, Spain. Electronic address: macoro@ugr.es.
  • Martos-Cabrera MB; San Cecilio Clinical University Hospital, Andalusian Health Service, Avenida del Conocimiento s/n, 18016 Granada, Spain. Electronic address: mbmartos@ujaen.es.
  • Velando-Soriano A; San Cecilio Clinical University Hospital, Andalusian Health Service, Avenida del Conocimiento s/n, 18016 Granada, Spain. Electronic address: srtavelando@correo.ugr.es.
  • Suleiman-Martos N; Faculty of Health Sciences, Ceuta University Campus, University of Granada, C/Cortadura del Valle SN, 51001 Ceuta, Spain. Electronic address: norasm@ugr.es.
Int Emerg Nurs ; 60: 101109, 2022 Jan.
Article em En | MEDLINE | ID: mdl-34952482
ABSTRACT

BACKGROUND:

In emergency services is important to accurately assess and classify symptoms, which may be improved with the help of technology. One mechanism that could help and improve predictions from health records or patient flow is machine learning (ML).

AIM:

To analyse the effectiveness of ML systems in triage for making predictions at the emergency department in comparison with other triage scales/scores.

METHODS:

Following the PRISMA recommendations, a systematic review was conducted using CINAHL, Cochrane, Cuiden, Medline and Scopus databases with the search equation "Machine learning AND triage AND emergency".

RESULTS:

Eleven studies were identified. The studies show that the use of ML methods consistently predict important outcomes like mortality, critical care outcomes and admission, and the need for hospitalization in comparison with scales like Emergency Severity Index or others. Among the ML models considered, XGBoost and Deep Neural Networks obtained the highest levels of prediction accuracy, while Logistic Regression performed obtained the worst values.

CONCLUSIONS:

Machine learning methods can be a good instrument for helping triage process with the prediction of important emergency variables like mortality or the need for critical care or hospitalization.
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Texto completo: 1 Base de dados: MEDLINE Assunto principal: Triagem / Serviços Médicos de Emergência Idioma: En Ano de publicação: 2022 Tipo de documento: Article

Texto completo: 1 Base de dados: MEDLINE Assunto principal: Triagem / Serviços Médicos de Emergência Idioma: En Ano de publicação: 2022 Tipo de documento: Article