Improving Triage Accuracy in Prehospital EmergencyTelemedicine:Scoping Review of Machine Learning-Enhanced Approaches

被引:0
作者
Raff, Daniel [1 ]
Stewart, Kurtis [2 ]
Yang, Michelle Christie [2 ]
Shang, Jessie [2 ]
Cressman, Sonya [2 ,3 ]
Tam, Roger [4 ,5 ]
Wong, Jessica [6 ]
Tammemaegi, Martin C. [7 ]
Ho, Kendall [2 ]
机构
[1] Univ British Columbia, Fac Med, Dept Family Practice, Vancouver, BC, Canada
[2] Univ British Columbia, Fac Med, Dept Emergency Med, 818 W10 Ave,3rd Floor, Vancouver, BC V5Z1M9, Canada
[3] Simon Fraser Univ, Fac Hlth Sci, Burnaby, BC, Canada
[4] Univ British Columbia, Fac Appl Sci, Sch Biomed Engn, Vancouver, BC, Canada
[5] Univ British Columbia, Fac Med, Vancouver, BC, Canada
[6] Univ British Columbia, Comp Sci, Fac Sci, Vancouver, BC, Canada
[7] Brock Univ, Fac Appl Hlth Sci, St Catharines, ON, Canada
来源
INTERACTIVE JOURNAL OF MEDICAL RESEARCH | 2024年 / 13卷
关键词
telemedicine; machine learning; emergency medicine; artificial intelligence; chatbot; triage; scoping review; prehospital; HEALTH;
D O I
10.2196/56729
中图分类号
R-3 [医学研究方法]; R3 [基础医学];
学科分类号
1001 ;
摘要
Background: Prehospital telemedicine triage systems combined with machine learning (ML) methods have the potential to improve triage accuracy and safely redirect low-acuity patients from attending the emergency department. However, research in prehospital settings is limited but needed; emergency department overcrowding and adverse patient outcomes are increasingly common. Objective: In this scoping review, we sought to characterize the existing methods for ML-enhanced telemedicine emergency triage. In order to support future research, we aimed to delineate what data sources, predictors, labels, ML models, and performance metrics were used, and in which telemedicine triage systems these methods were applied. Methods: A scoping review was conducted, querying multiple databases (MEDLINE, PubMed, Scopus, and IEEE Xplore) through February 24, 2023, to identify potential ML-enhanced methods, and for those eligible, relevant study characteristics were extracted, including prehospital triage setting, types of predictors, ground truth labeling method, ML models used, and performance metrics. Inclusion criteria were restricted to the triage of emergency telemedicine services using ML methods on an undifferentiated (disease nonspecific) population. Only primary research studies in English were considered. Furthermore, only those studies using data collected remotely (as opposed to derived from physical assessments) were included. In order to limit bias, we exclusively included articles identified through our predefined search criteria and had 3 researchers (DR, JS, and KS) independently screen the resulting studies. We conducted a narrative synthesis of findings to establish a knowledge base in this domain and identify potential gaps to be addressed in forthcoming ML-enhanced methods. Results: A total of 165 unique records were screened for eligibility and 15 were included in the review. Most studies applied ML methods during emergency medical dispatch (7/15, 47%) or used chatbot applications (5/15, 33%). Patient demographics and health status variables were the most common predictors, with a notable absence of social variables. Frequently used ML models included support vector machines and tree-based methods. ML-enhanced models typically outperformed conventional triage algorithms, and we found a wide range of methods used to establish ground truth labels. Conclusions: This scoping review observed heterogeneity in dataset size, predictors, clinical setting (triage process), and reported performance metrics. Standard structured predictors, including age, sex, and comorbidities, across articles suggest the importance of these inputs; however, there was a notable absence of other potentially useful data, including medications, social variables, and health system exposure. Ground truth labeling practices should be reported in a standard fashion as the true model performance hinges on these labels. This review calls for future work to form a standardized framework, thereby supporting consistent reporting and performance comparisons across ML-enhanced prehospital triage systems.
引用
收藏
页数:16
相关论文
共 47 条
  • [1] Prospective, multi-site study of patient outcomes after implementation of the TREWS machine learning-based early warning system for sepsis
    Adams, Roy
    Henry, Katharine E.
    Sridharan, Anirudh
    Soleimani, Hossein
    Zhan, Andong
    Rawat, Nishi
    Johnson, Lauren
    Hager, David N.
    Cosgrove, Sara E.
    Markowski, Andrew
    Klein, Eili Y.
    Chen, Edward S.
    Saheed, Mustapha O.
    Henley, Maureen
    Miranda, Sheila
    Houston, Katrina
    Linton, Robert C.
    Ahluwalia, Anushree R.
    Wu, Albert W.
    Saria, Suchi
    [J]. NATURE MEDICINE, 2022, 28 (07) : 1455 - +
  • [2] The Feasibility of Using Machine Learning to Classify Calls to South African Emergency Dispatch Centres According to Prehospital Diagnosis, by Utilising Caller Descriptions of the Incident
    Anthony, Tayla
    Mishra, Amit Kumar
    Stassen, Willem
    Son, Jarryd
    [J]. HEALTHCARE, 2021, 9 (09)
  • [3] Arksey H., 2005, INT J SOC RES METHOD, V8, P19, DOI [DOI 10.1080/1364557032000119616, 10.1080/1364557032000119616]
  • [4] Aslam Sadaf, 2010, Indian J Sex Transm Dis AIDS, V31, P47, DOI 10.4103/0253-7184.69003
  • [5] Applications of artificial intelligence and machine learning in orthodontics: a scoping review
    Bichu, Yashodhan M.
    Hansa, Ismaeel
    Bichu, Aditi Y.
    Premjani, Pratik
    Flores-Mir, Carlos
    Vaid, Nikhilesh R.
    [J]. PROGRESS IN ORTHODONTICS, 2021, 22 (01)
  • [6] The appropriateness of, and compliance with, telephone triage decisions: a systematic review and narrative synthesis
    Blank, Lindsay
    Coster, Joanne
    O'Cathain, Alicia
    Knowles, Emma
    Tosh, Jonathan
    Turner, Janette
    Nicholl, Jon
    [J]. JOURNAL OF ADVANCED NURSING, 2012, 68 (12) : 2610 - 2621
  • [7] The accuracy of medical dispatch - a systematic review
    Bohm, K.
    Kurland, L.
    [J]. SCANDINAVIAN JOURNAL OF TRAUMA RESUSCITATION & EMERGENCY MEDICINE, 2018, 26
  • [8] Construction and exploitation of an historical knowledge graph to deal with the evolution of ontologies
    Cardoso, Silvio Domingos
    Da Silveira, Marcos
    Pruski, Cedric
    [J]. KNOWLEDGE-BASED SYSTEMS, 2020, 194
  • [9] Ambulance dispatch prioritisation for traffic crashes using machine learning: A natural language approach
    Ceklic, Ellen
    Ball, Stephen
    Finn, Judith
    Brown, Elizabeth
    Brink, Deon
    Bailey, Paul
    Whiteside, Austin
    Brits, Rudolph
    Tohira, Hideo
    [J]. INTERNATIONAL JOURNAL OF MEDICAL INFORMATICS, 2022, 168
  • [10] Algorithmic fairness in artificial intelligence for medicine and healthcare
    Chen, Richard J.
    Wang, Judy J.
    Williamson, Drew F. K.
    Chen, Tiffany Y.
    Lipkova, Jana
    Lu, Ming Y.
    Sahai, Sharifa
    Mahmood, Faisal
    [J]. NATURE BIOMEDICAL ENGINEERING, 2023, 7 (06) : 719 - 742