Data-driven forecasting for operational planning of emergency medical services

被引:13
作者
Abreu, Paulo [1 ]
Santos, Daniel [1 ]
Barbosa-Povoa, Ana [1 ]
机构
[1] Univ Lisbon, CEG IST, Inst Super Tecn, Ave Rovisco Pais, P-1049001 Lisbon, Portugal
关键词
Emergency medical services; Forecasting; Data-driven; Neural networks; EMS calls; Ambulance service demand; AMBULANCE LOCATION; NEURAL-NETWORKS; DEMAND; OPTIMIZATION; CHALLENGES; PREDICTION; MANAGEMENT; MODEL;
D O I
10.1016/j.seps.2022.101492
中图分类号
F [经济];
学科分类号
02 ;
摘要
Emergency medical services (EMS) play a vital role in delivering pre-hospital care. The operational efficiency of such services is critical and adequate demand forecasts can contribute to such a goal. But for that, the available data need to be well characterized before being used. Previous studies have failed to address some important aspects of this need, such as exploring a comprehensive list of contextual data to decide which are relevant to explain the EMS demand behavior. Moreover, modern forecasting techniques have been explored in the EMS context, including neural networks, but the computational complexity inherent to the methods and their use was not discussed. Finally, it is also unclear how different demand patterns can be when predicting the volume of emergency calls considering the priority level and the number of dispatches according to vehicle type. This study proposes a generic data-driven forecasting method to address these shortcomings and to support operational decisions. The results obtained with the proposed method indicate that each priority call and vehicle type shows different patterns, which suggests that such differentiation should contribute to better resource allocation. At the same time, the operational impact of the demand shared by neighboring zones proved to be significant at bases near the border. The models developed resulted in important decision tools that can be used to predict the dynamic demand of EMS on an hourly or shift basis. Additionally, the method adds value for decision-makers that want to plan not only when and how many but also where resources are demanded, avoiding assumptions that impact the operational performance.
引用
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页数:20
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共 60 条
[31]  
Lei Ba J., 2015, 3 INT C LEARNING REP, P1
[32]   Strategic ambulance location for heterogeneous regions [J].
Leknes, Hakon ;
Aartun, Eirik Skorge ;
Andersson, Henrik ;
Christiansen, Marielle ;
Granberg, Tobias Andersson .
EUROPEAN JOURNAL OF OPERATIONAL RESEARCH, 2017, 260 (01) :122-133
[33]   A method of SVM with Normalization in Intrusion Detection [J].
Li, Weijun ;
Liu, Zhenyu .
2011 2ND INTERNATIONAL CONFERENCE ON CHALLENGES IN ENVIRONMENTAL SCIENCE AND COMPUTER ENGINEERING (CESCE 2011), VOL 11, PT A, 2011, 11 :256-262
[34]   Distributionally robust optimization of an emergency medical service station location and sizing problem with joint chance constraints [J].
Liu, Kanglin ;
Li, Qiaofeng ;
Zhang, Zhi-Hai .
TRANSPORTATION RESEARCH PART B-METHODOLOGICAL, 2019, 119 :79-101
[35]   The challenges of population ageing: accelerating demand for emergency ambulance services by older patients, 1995-2015 [J].
Lowthian, Judy A. ;
Jolley, Damien J. ;
Curtis, Andrea J. ;
Currell, Alexander ;
Cameron, Peter A. ;
Stoelwinder, Johannes U. ;
McNeil, John J. .
MEDICAL JOURNAL OF AUSTRALIA, 2011, 194 (11) :574-578
[36]   FORECASTING EMERGENCY MEDICAL SERVICE CALL ARRIVAL RATES [J].
Matteson, David S. ;
McLean, Mathew W. ;
Woodard, Dawn B. ;
Henderson, Shane G. .
ANNALS OF APPLIED STATISTICS, 2011, 5 (2B) :1379-1406
[37]   Multi-disease prediction using LSTM recurrent neural networks [J].
Men, Lu ;
Ilk, Noyan ;
Tang, Xinlin ;
Liu, Yuan .
EXPERT SYSTEMS WITH APPLICATIONS, 2021, 177
[38]   Data Analytics in Operations Management: A Review [J].
Misic, Velibor V. ;
Perakis, Georgia .
M&SOM-MANUFACTURING & SERVICE OPERATIONS MANAGEMENT, 2020, 22 (01) :158-169
[39]   Right place. Right time. Right tool: guidance for using target analysis to increase the likelihood of invasive species detection [J].
Morisette, Jeffrey T. ;
Reaser, Jamie K. ;
Cook, Gericke L. ;
Irvine, Kathryn M. ;
Roy, Helen E. .
BIOLOGICAL INVASIONS, 2020, 22 (01) :67-74
[40]   A Bayesian Model for Describing and Predicting the Stochastic Demand of Emergency Calls [J].
Nicoletta, Vittorio ;
Lanzarone, Ettore ;
Guglielmi, Alessandra ;
Belanger, Valerie ;
Ruiz, Angel .
BAYESIAN STATISTICS IN ACTION, BAYSM 2016, 2017, 194 :203-212