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Selección de hospital en los sistemas de servicios médicos de emergencia: una revisión de literatura;
Seleção de hospitais em sistemas de serviços médicos de emergência: uma revisão da literatura

dc.contributor.authorCaicedo-Rolón, Alvaro Jr
dc.contributor.authorRivera, Leonardo
dc.date.accessioned2021-11-06T23:32:22Z
dc.date.available2021-11-06T23:32:22Z
dc.date.issued2021-06-30
dc.identifier.urihttp://repositorio.ufps.edu.co/handle/ufps/718
dc.description.abstractEmergency medical service (EMS) systems play a fundamental role in society by providing a vital service in initial emergency care. The purpose of this research is to present the first literature review of hospital selection operational decision within the context of the EMS system. The main findings were the following: The hospital selection problem is integrated with the location, dispatch, routing, and size of the ambulance fleet. The main selection criteria were closeness, hospital care capacities and the shortest queue or greatest number of free beds. The most used performance measures were the shortest transport and waiting time. Solution techniques include discrete event simulation, queuing models, mixed linear integer programming, and CPLEX and Arena software. The application of metaheuristics is scarce; mobile applications and Internet information systems have been implemented for real-time decision making. It is recommended that the design of hospital selection methods be implemented as well as the technological developments, considering the participation of the actors of the EMS system.eng
dc.description.abstractLos sistemas de servicios médicos de emergencia (SME) desempeñan una función fundamental en la sociedad al prestar un servicio vital en la atención inicial de urgencias. La investigación presenta la primera revisión de la literatura que estudia el problema de selección de hospital en los sistemas de SME. Los principales hallazgos fueron: la integración de la decisión de selección del hospital con la localización y el número de ambulancias, el despacho o el enrutamiento de las ambulancias. Los principales criterios de selección fueron la cercanía, las capacidades de atención del hospital y la fila más corta o mayor número de camas libres. Las medidas de desempeño más usadas fueron el menor tiempo de traslado y de espera. Las metodologías cuantitativas más aplicadas fueron la simulación de eventos discretos, los modelos de colas y la programación lineal entera mixta y los software CPLEX y Arena. La aplicación de metaheurísticas es escasa, se han implementado aplicaciones móviles y sistemas de información por internet para la selección del hospital en tiempo real. Se recomienda implementar el diseño de los métodos de selección de hospitales y los desarrollos tecnológicos, considerando la participación de los actores del sistema SME.spa
dc.description.abstractOs sistemas de atendimento médico de emergência (AME) desempenham um papel fundamental na sociedade por fornecer um serviço vital no atendimento inicial de emergência. O objetivo desta pesquisa é apresentar a primeira revisão da literatura sobre a decisão operacional de seleção de hospitais no contexto dos sistemas de AME. As principais conclusões foram as seguintes: o problema de seleção do hospital está integrado à localização, envio, rota e tamanho da frota de ambulâncias. Os principais critérios de seleção foram proximidade, capacidade de atendimento hospitalar e menor fila ou maior número de leitos livres. As medidas de desempenho mais utilizadas foram o menor tempo de transporte e de espera. As técnicas de solução incluem simulação de eventos discretos, modelos de enfileiramento, programação inteira linear mista e software CPLEX e Arena. A aplicação de metaheurísticas é escassa; aplicativos móveis e sistemas de informação da Internet foram implementados para a tomada de decisões em tempo real. Recomenda-se que seja implementado o desenho de métodos de seleção de hospitais e também os desenvolvimentos tecnológicos, considerando a participação dos atores do sistema AME.por
dc.format.extent25 páginasspa
dc.format.mimetypeapplication/pdfspa
dc.language.isoengspa
dc.publisherRevista Gerencia y Políticas de Saludspa
dc.relation.ispartofRevista Gerencia y Políticas de Salud
dc.rightsEsta obra está bajo una licencia internacional Creative Commons Atribución 4.0.spa
dc.sourcehttps://revistas.javeriana.edu.co/index.php/gerepolsal/article/view/27608spa
dc.titleHospital selection in emergency medical service systems: A literature revieweng
dc.titleSelección de hospital en los sistemas de servicios médicos de emergencia: una revisión de literaturaspa
dc.titleSeleção de hospitais em sistemas de serviços médicos de emergência: uma revisão da literaturapor
dc.typeArtículo de revistaspa
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dc.identifier.doihttps://doi.org/10.11144/Javeriana.rgps20.hsem
dc.publisher.placeColombiaspa
dc.relation.citationeditionVol.20 (2021)spa
dc.relation.citationendpage25spa
dc.relation.citationissue(2021)spa
dc.relation.citationstartpage1spa
dc.relation.citationvolume20spa
dc.relation.citesRolón, A. J. C., & Cadavid, L. R. (2021). Hospital selection in emergency medical service systems: A literature review. Gerencia y Políticas de Salud, 20.
dc.relation.ispartofjournalRevista Gerencia y Políticas de Saludspa
dc.rights.accessrightsinfo:eu-repo/semantics/openAccessspa
dc.rights.creativecommonsAtribución 4.0 Internacional (CC BY 4.0)spa
dc.subject.proposalAmbulanceseng
dc.subject.proposalAmbulanciasspa
dc.subject.proposalAmbulânciaspor
dc.subject.proposalemergencieseng
dc.subject.proposalurgencias médicasspa
dc.subject.proposalemergênciaspor
dc.subject.proposalhealth services administrationeng
dc.subject.proposaladministración de los servicios de saludspa
dc.subject.proposaladministração de serviços de saúdepor
dc.subject.proposalinformation technologyeng
dc.subject.proposaltecnología de la informaciónspa
dc.subject.proposaltecnologia da informaçãopor
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