Abstract
In this paper, it is proposed an APK that works in conjunction with an emergency triage system that may help both patients and doctors using IoT. The classification system implemented on this work reads the data provided by the user (oxygen saturation, hearth rate) on the app, this will be processed, as the results are given in real time and classified on an emergency color system (green, yellow, orange and red) the doctor would be notified instantly, allow him to be up to date with its patient’s condition and help him get a better analysis and have a mor exact diagnose, this being beneficial for both patient and doctor.
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Bautista, J., Alanis, A., Patiño, E., Hernandez-Leal, F. (2021). Multi-agent System for the Area of Medical Emergencies for Health Surveillance (MAS-AMeHs). In: Guarda, T., Portela, F., Santos, M.F. (eds) Advanced Research in Technologies, Information, Innovation and Sustainability. ARTIIS 2021. Communications in Computer and Information Science, vol 1485. Springer, Cham. https://doi.org/10.1007/978-3-030-90241-4_4
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