APPROACHES FOR ENHANCING PRE-HOSPITAL EMS RESPONSE DURING THE COVID-19 PANDEMIC MACHINE LEARNING

Approaches for Enhancing Pre-hospital EMS Response during the COVID-19 Pandemic Machine Learning

Approaches for Enhancing Pre-hospital EMS Response during the COVID-19 Pandemic Machine Learning

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Background: Coronavirus disease 2019 (COVID-19) caused an unprecedented healthcare crisis and warranted a need to use artificial intelligence (AI) and machine learning (ML) for enhancing caller screening and triage within pre-hospital Mens Skirts Emergency Medical Services (EMS) specifically tailored to COVID-19 cases.This study aimed to analyze existing AI and ML models and assess their accuracy and precision.Methods: A comprehensive assessment of artificial intelligence (AI) applications used to improve EMS responses in the context of COVID-19 instances was done.The dataset produced by Mexican government was used.This dataset was assessed over different models encompassing logistic regression, random forest, gradient boosting, neural networks, k-nearest neighbors (KNN), Naive Bayes, and clustering (K-means).

Results: Multiple models performance evaluation was done employing metrics such as accuracy, precision, recall, and F1-score to comprehensively assess the strengths and limitations of these models.Conclusion: The study's findings underline the complexities inherent in caller screening and triage for COVID-19 cases, showcasing diverse strengths and limitations within the deployed machine learning models.The glove pouch discourse underscores the necessity for a multifaceted approach to effectively manage the intricate challenges associated with caller classification and triage, offering invaluable insights for future research endeavors and guiding the enhancement of emergency healthcare systems.[SJEMed 2024; 5(1.000): 024-029].

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