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Smart Wearable Internet of Medical Things Technologies, Artificial Intelligence-based Diagnostic Algorithms, and Real-Time Healthcare Monitoring Systems in COVID-19 Detection and Treatment
American Journal of Medical Research ; 9(1):17-32, 2022.
Article in English | ProQuest Central | ID: covidwho-1863557
ABSTRACT
Keywords Internet of Medical Things;diagnostic algorithm;COVID-19 1.Introduction The purpose of our systematic review is to examine the recently published literature on COVID-19 detection and treatment and integrate the insights it configures on smart wearable Internet of Medical Things technologies, artificial intelligence-based diagnostic algorithms, and real-time healthcare monitoring systems. The manuscript is organized as following theoretical overview (section 2), methodology (section 3), networked sensors, wearable devices, and smart clinical systems (section 4), real-time healthcare monitoring systems and processing algorithms in Internet of Medical Things (section 5), smart personalized healthcare applications and services (section 6), discussion (section 7), synopsis of the main research outcomes (section 8), conclusions (section 9), limitations, implications, and further directions of research (section 10). 4.Networked Sensors, Wearable Devices, and Smart Clinical Systems Internet of Medical Things is pivotal in heterogeneous clinical trials, disease monitoring, and healthcare procedures (Gul et al., 2021;Maitra et al., 2021;Scrugli et al., 2022) through wireless data collection, analysis, and sharing. Specialized machine learning and predictive algorithms can be pivotal in preventive screenings, monitoring vital signs and life-threatening conditions, and supporting clinical judgment in COVID-19 early recognition and treatment by analyzing patient records and clinical data.
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Full text: Available Collection: Databases of international organizations Database: ProQuest Central Language: English Journal: American Journal of Medical Research Year: 2022 Document Type: Article

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Full text: Available Collection: Databases of international organizations Database: ProQuest Central Language: English Journal: American Journal of Medical Research Year: 2022 Document Type: Article