期刊
出版社
BMC
DOI: 10.1186/s13049-022-01021-5
关键词
Chest pain; Emergency medical services; Emergency medical dispatch; Acute coronary syndrome; Signs and symptoms; Risk assessment; Prioritisation
资金
- University of Gothenburg
- Department of Ambulance and Prehospital Care, Region Halland
- Scientific Council of Region Halland [HALLAND-209901]
Developed prediction models using logistic regression analysis improved prioritization in emergency medical dispatch centers, accurately identifying high-priority and low-priority patients with chest pain. The models showed better sensitivity, positive predictive value, and allowed for more efficient allocation of emergency medical services resources compared to current criteria-based dispatch methods.
Objectives To develop emergency medical dispatch (EMD) centre prediction models with high sensitivity and satisfying specificity to identify high-priority patients and patients suitable for non-emergency care respectively, when assessing patients with chest pain. Methods Observational cohort study of 2917 unselected patients with chest pain who contacted an EMD centre in Sweden due to chest pain during 2018. Multivariate logistic regression was applied to develop models predicting low-risk or high-risk condition, that is, occurrence of time-sensitive diagnosis on hospital discharge. Results Prediction models were developed for the identification of patients suitable for high- and low-priority dispatch, using 11 and 10 variables respectively. The area under the receiver-operating characteristic curve (AUROC) for the high-risk prediction model was 0.79 and for the low-risk model it was 0.74. When applying the high-risk prediction model, 56% of the EMS missions were given highest priority, compared with 65% with the current standard. When applying the low-risk model, 7% were given the lowest priority compared to 1% for the current standard. The new prediction models outperformed today's dispatch priority accuracy in terms of sensitivity as well as positive and negative predictive value in both high- and low-risk prediction. The low-risk model predicted almost six times as many patients as having low-risk conditions compared with today's standard. This was done without increasing the number of high-risk patients wrongly assessed as low-risk. Conclusions By introducing prediction models, based on logistic regression analyses, using variables obtained by standard EMD-questions on age, sex, medical history and symptomology, EMD prioritisation can be improved compared with using current criteria index-based ones. This will allow a more efficient emergency medical services resource allocation.
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