Could Prioritisation by Emergency Medicine Dispatchers Be Improved by Using Computer-based Decision Support? A Cohort of Patients with Chest Pain
Overview
Authors
Affiliations
Background: To evaluate whether a computer-based decision support system could improve the allocation of patients with acute coronary syndrome (ACS) or a life-threatening condition (LTC). We hypothesised that a system of this kind would improve sensitivity without compromising specificity.
Methods: A total of 2285 consecutive patients who dialed 112 due to chest pain were asked 10 specific questions and a prediction model was constructed based on the answers. We compared the sensitivity of the dispatchers' decisions with that of the model-based decision support model.
Results: A total of 2048 patients answered all 10 questions. Among the 235 patients with ACS, 194 were allocated the highest prioritisation by dispatchers (sensitivity 82.6%) and 41 patients were given a lower prioritisation (17.4% false negatives). The allocation suggested by the model used the highest prioritisation in 212 of the patients with ACS (sensitivity of 90.2%), while 23 patients were underprioritised (9.8% false negatives). The results were similar when the two systems were compared with regard to LTC and 30-day mortality. This indicates that computer-based decision support could be used either for increasing sensitivity or for saving resources. Three questions proved to be most important in terms of predicting ACS/LTC, [1] the intensity of pain, [2] the localisation of pain and [3] a history of ACS.
Conclusion: Among patients with acute chest pain, computer-based decision support with a model based on a few fundamental questions could improve sensitivity and reduce the number of cases with the highest prioritisation without endangering the patients.
A data-driven approach to solve the RT scheduling problem.
Gurjar M, Lindberg J, Bjork-Eriksson T, Olsson C Tech Innov Patient Support Radiat Oncol. 2024; 32:100282.
PMID: 39497855 PMC: 11533699. DOI: 10.1016/j.tipsro.2024.100282.
Wibring K, Lingman M, Herlitz J, Bang A Scand J Trauma Resusc Emerg Med. 2022; 30(1):34.
PMID: 35527302 PMC: 9080130. DOI: 10.1186/s13049-022-01021-5.
Wibring K, Lingman M, Herlitz J, Blom L, Gripestam O, Bang A Scand J Trauma Resusc Emerg Med. 2021; 29(1):157.
PMID: 34717716 PMC: 8557510. DOI: 10.1186/s13049-021-00972-5.
Alotaibi A, Alghamdi A, Reynard C, Body R BMJ Open. 2021; 11(8):e045815.
PMID: 34433592 PMC: 8388270. DOI: 10.1136/bmjopen-2020-045815.
Validity and risk factor analysis for helicopter emergency medical services in Japan: a pilot study.
Yamada N, Kitagawa Y, Yoshida T, Nachi S, Okada H, Ogura S BMC Emerg Med. 2021; 21(1):87.
PMID: 34294031 PMC: 8296691. DOI: 10.1186/s12873-021-00471-x.