Abstract
In recent years, machine learning techniques have been the main techniques used for the early detection of various vital signals. With the integration of machine learning and body sensors, and with the widespread use of smartwatches and cellphones, it has been possible to keep track of a variety of physical parameters along with the possibility to give easy visualization of the obtained data. In this paper, a multiagent medical assistance system is proposed for the detection of cardio-respiratory abnormalities in older adults. In the data acquisition stage, heart rate and blood oxygen saturation parameters are acquired with a pulse oximeter. Once the information is obtained, it is stored, filtered, and processed on the edge with an embedded computer. For the classification stage, a random forest algorithm is used, using a public database for the training. The body signals and the classification results are displayed on a GUI.
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References
He, D., Zeadally, S.: Authentication protocol for an ambient assisted living system. IEEE Commun. Mag. 53(1), 71–77 (2015)
Koleva, P., Tonchev, K., Balabanov, G., Manolova, A., Poulkov, V.: Challenges in designing and implementation of an effective ambient assisted living system. In: 2015 12th International Conference on Telecommunication in Modern Satellite, Cable and Broadcasting Services (TELSIKS), pp. 305–308 (2015)
Banaee, H., Ahmed, M., Loutfi, A.: Data mining for wearable sensors in health monitoring systems: a review of recent trends and challenges. Sensors 13(12), 17472–17500 (2013)
Jiang, F., et al.: Artificial intelligence in healthcare: past, present and future. Stroke Vasc. Neurol. 2(4), 230–243 (2017)
Baljak, V., Ljubovic, A., Michel, J., Montgomery, M., Salaway, R.: A scalable realtime analytics pipeline and storage architecture for physiological monitoring big data. Smart Heal. (2018)
Julio, C., et al.: Sistema multiagentes para el monitoreo inteligente. IFMBE Proc. 18, 501–505 (2008)
Rusell, S., Norvig, P.: Inteligencia Artificial 2(6) (2007)
da Costa, C.A., Pasluosta, C.F., Eskofier, B., da Silva, D.B., da Rosa Righi, R.: Internet of health things: toward intelligent vital signs monitoring in hospital wards. Artif. Intell. Med. 89, 61–69 (2018)
Santos, M.A.G., Munoz, R., Olivares, R., Filho, P.P.R., Del Ser, J., de Albuquerque, V.H.C.: Online heart monitoring systems on the internet of health things environments: a survey, a reference model and an outlook. Inf. Fusion 53, 222–239 (2020)
Bonow, M.P.L.M.R.O, Mann, M.D.L., Zipes, M.D.P.: Braunwald’s Heart Disease: A Textbook of Cardiovascular Medicine, 9th ed. (2012)
Dua, D., Graff, C.: {UCI} Machine Learning Repository (2017)
Bhogal, A.S., Mani, A.R.: Pattern analysis of oxygen saturation variability in healthy individuals: entropy of pulse oximetry signals carries information about mean oxygen saturation. Front. Physiol. 8, 1–9 (2017)
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Hernandez-Leal, F., Alanis, A., Patiño, E. (2020). Multiagent Monitoring System for Oxygen Saturation and Heart Rate. In: Jezic, G., Chen-Burger, J., Kusek, M., Sperka, R., Howlett, R., Jain, L. (eds) Agents and Multi-Agent Systems: Technologies and Applications 2020. Smart Innovation, Systems and Technologies, vol 186. Springer, Singapore. https://doi.org/10.1007/978-981-15-5764-4_23
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DOI: https://doi.org/10.1007/978-981-15-5764-4_23
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