Ambulance dispatch prioritisation for traffic crashes using machine learning: A natural language approach

被引:8
作者
Ceklic, Ellen [1 ]
Ball, Stephen [1 ,3 ]
Finn, Judith [1 ,2 ,3 ,4 ]
Brown, Elizabeth [3 ]
Brink, Deon [1 ,3 ]
Bailey, Paul [1 ]
Whiteside, Austin [1 ,3 ]
Brits, Rudolph [3 ]
Tohira, Hideo [1 ,2 ]
机构
[1] Curtin Univ, Sch Nursing, Prehosp Resuscitat & Emergency Care Res Unit PRECR, GPOB U1987, Belmont, WA 6845, Australia
[2] Univ Western Australia, Med Sch, Div Emergency Med, Perth, Australia
[3] St John Western Australia, Belmont, WA, Australia
[4] Monash Univ, Sch Publ Hlth & Prevent Med, Melbourne, Vic, Australia
基金
澳大利亚国家健康与医学研究理事会;
关键词
Ambulance; Dispatch; Lights & sirens; Traffic crash; Machine learning; SERVICES; DEMAND;
D O I
10.1016/j.ijmedinf.2022.104886
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Introduction: Demand for emergency ambulances is increasing, therefore it is important that ambulance dispatch is prioritised appropriately. This means accurately identifying which incidents require a lights and sirens (L&S) response and those that do not. For traffic crashes, it can be difficult to identify the needs of patients based on bystander reports during the emergency phone call; as traffic crashes are complex events, often with multiple patients at the same crash with varying medical needs. This study aims to determine how well the text sent to paramedics en-route to the traffic crash scene by the emergency medical dispatcher (EMD), in combination with dispatch codes, can predict the need for a L&S ambulance response to traffic crashes. Methods: A retrospective cohort study was conducted using data from 2014 to 2016 traffic crashes attended by emergency ambulances in Perth, Western Australia. Machine learning algorithms were used to predict the need for a L&S response or not. The features were the Medical Priority Dispatch System (MPDS) determinant codes and EMD text. EMD text was converted for computation using natural language processing (Bag of Words approach). Machine learning al-gorithms were used to predict the need for a L&S response, defined as where one or more patients (a) died before hospital admission, (b) received L&S transport to hospital, or (c) had one or more high-acuity indicators (based on an a priori list of medications, interventions or observations. Results: There were 11,971 traffic crashes attended by ambulances during the study period, of which 22.3 % were retrospectively determined to have required a L&S response. The model with the highest accuracy was using an Ensemble machine learning algo-rithm with a score of 0.980 (95 % CI 0.976-0.984). This model predicted the need for an L&S response using both MPDS determinant codes and EMD text. Discussion: We found that a combination of EMD text and MPDS determinate codes can predict which traffic crashes do and do not require a lights and sirens ambulance response to the scene with a high degree of accuracy. Emergency medical services could deploy machine learning algo-rithms to improve the accuracy of dispatch to traffic crashes, which has the potential to result in improved system efficiency.
引用
收藏
页数:6
相关论文
共 21 条
[1]   Drivers of Increasing Emergency Ambulance Demand [J].
Andrew, Emily ;
Nehme, Ziad ;
Cameron, Peter ;
Smith, Karen .
PREHOSPITAL EMERGENCY CARE, 2020, 24 (03) :385-393
[2]  
Anguita Davide., 2012, 20th European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, P441, DOI DOI 10.1007/S11042-019-08345-Y
[3]  
[Anonymous], 2021, HYPERPARAMETER OPTIM
[4]  
Bacchi S, 2020, INTERN EMERG MED, V15, P989, DOI 10.1007/s11739-019-02265-3
[5]   Deep Learning Natural Language Processing Successfully Predicts the Cerebrovascular Cause of Transient Ischemic Attack-Like Presentations [J].
Bacchi, Stephen ;
Oakden-Rayner, Luke ;
Zerner, Toby ;
Kleinig, Timothy ;
Patel, Sandy ;
Jannes, Jim .
STROKE, 2019, 50 (03) :758-760
[6]   Association between ambulance dispatch priority and patient condition [J].
Ball, Stephen J. ;
Williams, Teresa A. ;
Smith, Karen ;
Cameron, Peter ;
Fatovich, Daniel ;
O'Halloran, Kay L. ;
Hendrie, Delia ;
Whiteside, Austin ;
Inoue, Madoka ;
Brink, Deon ;
Langridge, Iain ;
Pereira, Gavin ;
Tohira, Hideo ;
Chinnery, Sean ;
Bray, Janet E. ;
Bailey, Paul ;
Finn, Judith .
EMERGENCY MEDICINE AUSTRALASIA, 2016, 28 (06) :716-724
[7]   Effect of Machine Learning on Dispatcher Recognition of Out-of-Hospital Cardiac Arrest During Calls to Emergency Medical Services A Randomized Clinical Trial [J].
Blomberg, Stig Nikolaj ;
Christensen, Helle Collatz ;
Lippert, Freddy ;
Ersboll, Annette Kjaer ;
Torp-Petersen, Christian ;
Sayre, Michael R. ;
Kudenchuk, Peter J. ;
Folke, Fredrik .
JAMA NETWORK OPEN, 2021, 4 (01)
[8]   The accuracy of medical dispatch - a systematic review [J].
Bohm, K. ;
Kurland, L. .
SCANDINAVIAN JOURNAL OF TRAUMA RESUSCITATION & EMERGENCY MEDICINE, 2018, 26
[9]   Why do patients with 'primary care sensitive' problems access ambulance services? A systematic mapping review of the literature [J].
Booker, Matthew J. ;
Shaw, Ali R. G. ;
Purdy, Sarah .
BMJ OPEN, 2015, 5 (05)
[10]   Can ambulance dispatch categories discriminate traffic incidents that do/do not require a lights and sirens response? [J].
Ceklic, Ellen ;
Tohira, Hideo ;
Finn, Judith ;
Brink, Deon ;
Bailey, Paul ;
Whiteside, Austin ;
Brown, Elizabeth ;
Brits, Rudolph ;
Ball, Stephen .
INTERNATIONAL JOURNAL OF EMERGENCY SERVICES, 2022, 11 (02) :222-234