Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments
Aim:Flow of patients to emergency departments (EDs) and their stays in EDs (ED-LOS) depend significantly on their arrival modes. In this study, developing effective models for forecasting patient flow and length of stay (LOS) in EDs by considering arrival modes led better planning of ED operations.M...
| الحاوية / القاعدة: | Eurasian Journal of Emergency Medicine |
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| المؤلفون الرئيسيون: | , |
| التنسيق: | مقال |
| اللغة: | الإنجليزية |
| منشور في: |
Emergency Medicine Physicians’ Association of Turkey
2022-03-01
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| الموضوعات: | |
| الوصول للمادة أونلاين: |
http://akademikaciltip.com/archives/archive-detail/article-preview/mode-of-arrival-aware-models-for-forecasting-flow-/51378
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| _version_ | 1848651132369371136 |
|---|---|
| author | Mustafa Gökalp Ataman Görkem Sarıyer |
| author_facet | Mustafa Gökalp Ataman Görkem Sarıyer |
| author_sort | Mustafa Gökalp Ataman |
| collection | DOAJ |
| container_title | Eurasian Journal of Emergency Medicine |
| description | Aim:Flow of patients to emergency departments (EDs) and their stays in EDs (ED-LOS) depend significantly on their arrival modes. In this study, developing effective models for forecasting patient flow and length of stay (LOS) in EDs by considering arrival modes led better planning of ED operations.Materials and Methods:In this study, by categorizing the mode of arrival into two, self-arrived in and by ambulance, autoregressive integrative moving average (ARIMA) models are applied for forecasting four time series: daily number of patients self arrived/arrived by an ambulance and average LOS of patients self-arrived/arrived by an ambulance. The models are validated with real-life data received from a large-scaled urban ED in İzmir, Turkey.Results:While seasonal ARIMA is proper for forecasting the daily number of patients on both modes, non-seasonal models are proper for forecasting the average LOS. The mean absolute percentage errors (MAPE) for the models of four time series are 5,432%, 13,085%, 9,955% and 10.984%, respectively. Thus, daily arrivals to the EDs show seasonality patterns.Conclusion:By emphasizing the impact of mode of arrival in ED context, this study can be used to aid the strategic decision making in the EDs for capacity planning to enable efficient use of the ED resources. |
| format | Article |
| id | doaj-ec6147eaf1ed4f258e15cea787d058b8 |
| institution | Directory of Open Access Journals |
| issn | 2149-5807 2149-6048 |
| language | English |
| publishDate | 2022-03-01 |
| publisher | Emergency Medicine Physicians’ Association of Turkey |
| record_format | Article |
| spelling | doaj-ec6147eaf1ed4f258e15cea787d058b82025-11-03T01:25:42ZengEmergency Medicine Physicians’ Association of TurkeyEurasian Journal of Emergency Medicine2149-58072149-60482022-03-01211344410.4274/eajem.galenos.2021.2767613049054Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency DepartmentsMustafa Gökalp Ataman0Görkem Sarıyer1 Department of Emergency Medicine, İzmir Bakırçay University, Çiğli Training and Research Hospital, İzmir, Turkey Department of Business Administration, Yaşar University Faculty of Medicine, İzmir Turkey Aim:Flow of patients to emergency departments (EDs) and their stays in EDs (ED-LOS) depend significantly on their arrival modes. In this study, developing effective models for forecasting patient flow and length of stay (LOS) in EDs by considering arrival modes led better planning of ED operations.Materials and Methods:In this study, by categorizing the mode of arrival into two, self-arrived in and by ambulance, autoregressive integrative moving average (ARIMA) models are applied for forecasting four time series: daily number of patients self arrived/arrived by an ambulance and average LOS of patients self-arrived/arrived by an ambulance. The models are validated with real-life data received from a large-scaled urban ED in İzmir, Turkey.Results:While seasonal ARIMA is proper for forecasting the daily number of patients on both modes, non-seasonal models are proper for forecasting the average LOS. The mean absolute percentage errors (MAPE) for the models of four time series are 5,432%, 13,085%, 9,955% and 10.984%, respectively. Thus, daily arrivals to the EDs show seasonality patterns.Conclusion:By emphasizing the impact of mode of arrival in ED context, this study can be used to aid the strategic decision making in the EDs for capacity planning to enable efficient use of the ED resources. http://akademikaciltip.com/archives/archive-detail/article-preview/mode-of-arrival-aware-models-for-forecasting-flow-/51378 emergency departmentforecastingpatient flowlength of stayarima |
| spellingShingle | Mustafa Gökalp Ataman Görkem Sarıyer Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments emergency department forecasting patient flow length of stay arima |
| title | Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments |
| title_full | Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments |
| title_fullStr | Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments |
| title_full_unstemmed | Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments |
| title_short | Mode of Arrival Aware Models for Forecasting Flow of Patient and Length of Stay in Emergency Departments |
| title_sort | mode of arrival aware models for forecasting flow of patient and length of stay in emergency departments |
| topic | emergency department forecasting patient flow length of stay arima |
| url |
http://akademikaciltip.com/archives/archive-detail/article-preview/mode-of-arrival-aware-models-for-forecasting-flow-/51378
|
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