Hybrid deep learning model based smart IOT based monitoring system for Covid-19

Recently, COVID-19 becomes a hot topic and explicitly made people follow social distancing and quarantine practices all over the world. Meanwhile, it is arduous to visit medical professionals intermittently by the patients for fear of spreading the disease. This IoT-based healthcare monitoring syste...

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Veröffentlicht in:Heliyon 2023-11, Vol.9 (11), p.e21150, Article e21150
Hauptverfasser: Yu, Liping, Vijay, M.M., Sunil, J., Vincy, V.G. Anisha Gnana, Govindan, Vediyappan, Khan, M. Ijaz, Ali, Shahid, Tamam, Nissren, Abdullaeva, Barno Sayfutdinovna
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Sprache:eng
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Zusammenfassung:Recently, COVID-19 becomes a hot topic and explicitly made people follow social distancing and quarantine practices all over the world. Meanwhile, it is arduous to visit medical professionals intermittently by the patients for fear of spreading the disease. This IoT-based healthcare monitoring system is utilized by many professionals, can be accessed remotely, and provides treatment accordingly. In context with this, we designed an IoT-based healthcare monitoring system that sophisticatedly measures and monitors the parameters of patients such as oxygen level, blood pressure, temperature, and heart rate. This system can be widely used in rural areas that are linked to the nearest city hospitals to monitor the patients. The collected data from the monitoring system are stored in the cloud-based data storage and for the classification our approach proposes an innovative Recurrent Convolutional Neural Network (RCNN) based Puzzle optimization algorithm (PO). Based on the outcome further treatments are made with the assistance of physicians. Experimental analyses are made and analyzed the performance with state-of-art works. The availability of more data storage capacity in the cloud can make physicians access the previous data effortlessly.
ISSN:2405-8440
2405-8440
DOI:10.1016/j.heliyon.2023.e21150