Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion

Abstract Background The city of Munich uses web-based information system IVENA to promote exchange of information regarding hospital offerings and closures between the integrated dispatch center and hospitals to support coordination of the emergency medical services. Hospital crowding resulting in c...

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Main Authors: D. Pförringer, M. Breu, M. Crönlein, R. Kolisch, K.-G. Kanz
Format: Article
Language:English
Published: BMC 2018-06-01
Series:European Journal of Medical Research
Subjects:
Online Access:http://link.springer.com/article/10.1186/s40001-018-0330-0
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spelling doaj-df43900050484cdcb3eed9597baf517b2020-11-25T01:20:31ZengBMCEuropean Journal of Medical Research2047-783X2018-06-012311810.1186/s40001-018-0330-0Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversionD. Pförringer0M. Breu1M. Crönlein2R. Kolisch3K.-G. Kanz4Klinik und Poliklinik für Unfallchirurgie, Klinikum rechts der Isar, Technische Universität MünchenKlinik und Poliklinik für Unfallchirurgie, Klinikum rechts der Isar, Technische Universität MünchenKlinik und Poliklinik für Unfallchirurgie, Klinikum rechts der Isar, Technische Universität MünchenTUM School of Management, Technische Universität MünchenKlinik und Poliklinik für Unfallchirurgie, Klinikum rechts der Isar, Technische Universität MünchenAbstract Background The city of Munich uses web-based information system IVENA to promote exchange of information regarding hospital offerings and closures between the integrated dispatch center and hospitals to support coordination of the emergency medical services. Hospital crowding resulting in closures and thus prolonged transportation time poses a major problem. An innovative discrete agent model simulates the effects of novel policies to reduce closure times and avoid crowding. Methods For this analysis, between 2013 and 2017, IVENA data consisting of injury/disease, condition, age, estimated arrival time and assigned hospital or hospital-closure statistics as well as underlying reasons were examined. Two simulation experiments with three policy variations are performed to gain insights on the influence of diversion policies onto the outcome variables. Results A total of 530,000+ patients were assigned via the IVENA system and 200,000+ closures were requested during this time period. Some hospital units request a closure on more than 50% of days. The majority of hospital closures are not triggered by the absolute number of patient arrivals, but by a sudden increase within a short time period. Four of the simulations yielded a specific potential for shortening of overall closure time in comparison to the current status quo. Conclusion Effective solutions against crowding require common policies to limit closure status periods based on quantitative thresholds. A new policy in combination with a quantitative arrival sensor system may reduce closing hours and optimize patient flow.http://link.springer.com/article/10.1186/s40001-018-0330-0Emergency medical servicesAmbulanceDiversionDispatchCrowdingClosure policy
collection DOAJ
language English
format Article
sources DOAJ
author D. Pförringer
M. Breu
M. Crönlein
R. Kolisch
K.-G. Kanz
spellingShingle D. Pförringer
M. Breu
M. Crönlein
R. Kolisch
K.-G. Kanz
Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
European Journal of Medical Research
Emergency medical services
Ambulance
Diversion
Dispatch
Crowding
Closure policy
author_facet D. Pförringer
M. Breu
M. Crönlein
R. Kolisch
K.-G. Kanz
author_sort D. Pförringer
title Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
title_short Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
title_full Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
title_fullStr Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
title_full_unstemmed Closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
title_sort closure simulation for reduction of emergency patient diversion: a discrete agent-based simulation approach to minimizing ambulance diversion
publisher BMC
series European Journal of Medical Research
issn 2047-783X
publishDate 2018-06-01
description Abstract Background The city of Munich uses web-based information system IVENA to promote exchange of information regarding hospital offerings and closures between the integrated dispatch center and hospitals to support coordination of the emergency medical services. Hospital crowding resulting in closures and thus prolonged transportation time poses a major problem. An innovative discrete agent model simulates the effects of novel policies to reduce closure times and avoid crowding. Methods For this analysis, between 2013 and 2017, IVENA data consisting of injury/disease, condition, age, estimated arrival time and assigned hospital or hospital-closure statistics as well as underlying reasons were examined. Two simulation experiments with three policy variations are performed to gain insights on the influence of diversion policies onto the outcome variables. Results A total of 530,000+ patients were assigned via the IVENA system and 200,000+ closures were requested during this time period. Some hospital units request a closure on more than 50% of days. The majority of hospital closures are not triggered by the absolute number of patient arrivals, but by a sudden increase within a short time period. Four of the simulations yielded a specific potential for shortening of overall closure time in comparison to the current status quo. Conclusion Effective solutions against crowding require common policies to limit closure status periods based on quantitative thresholds. A new policy in combination with a quantitative arrival sensor system may reduce closing hours and optimize patient flow.
topic Emergency medical services
Ambulance
Diversion
Dispatch
Crowding
Closure policy
url http://link.springer.com/article/10.1186/s40001-018-0330-0
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