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Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications

Personalised healthcare has seen significant improvements due to the introduction of health monitoring technologies that allow wearable devices to unintrusively monitor physiological parameters such as heart health, blood pressure, sleep patterns, and blood glucose levels, among others. Additionally...

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Autores principales: Shumba, Angela-Tafadzwa, Montanaro, Teodoro, Sergi, Ilaria, Fachechi, Luca, De Vittorio, Massimo, Patrono, Luigi
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9571691/
https://www.ncbi.nlm.nih.gov/pubmed/36236773
http://dx.doi.org/10.3390/s22197675
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author Shumba, Angela-Tafadzwa
Montanaro, Teodoro
Sergi, Ilaria
Fachechi, Luca
De Vittorio, Massimo
Patrono, Luigi
author_facet Shumba, Angela-Tafadzwa
Montanaro, Teodoro
Sergi, Ilaria
Fachechi, Luca
De Vittorio, Massimo
Patrono, Luigi
author_sort Shumba, Angela-Tafadzwa
collection PubMed
description Personalised healthcare has seen significant improvements due to the introduction of health monitoring technologies that allow wearable devices to unintrusively monitor physiological parameters such as heart health, blood pressure, sleep patterns, and blood glucose levels, among others. Additionally, utilising advanced sensing technologies based on flexible and innovative biocompatible materials in wearable devices allows high accuracy and precision measurement of biological signals. Furthermore, applying real-time Machine Learning algorithms to highly accurate physiological parameters allows precise identification of unusual patterns in the data to provide health event predictions and warnings for timely intervention. However, in the predominantly adopted architectures, health event predictions based on Machine Learning are typically obtained by leveraging Cloud infrastructures characterised by shortcomings such as delayed response times and privacy issues. Fortunately, recent works highlight that a new paradigm based on Edge Computing technologies and on-device Artificial Intelligence significantly improve the latency and privacy issues. Applying this new paradigm to personalised healthcare architectures can significantly improve their efficiency and efficacy. Therefore, this paper reviews existing IoT healthcare architectures that utilise wearable devices and subsequently presents a scalable and modular system architecture to leverage emerging technologies to solve identified shortcomings. The defined architecture includes ultrathin, skin-compatible, flexible, high precision piezoelectric sensors, low-cost communication technologies, on-device intelligence, Edge Intelligence, and Edge Computing technologies. To provide development guidelines and define a consistent reference architecture for improved scalable wearable IoT-based critical healthcare architectures, this manuscript outlines the essential functional and non-functional requirements based on deductions from existing architectures and emerging technology trends. The presented system architecture can be applied to many scenarios, including ambient assisted living, where continuous surveillance and issuance of timely warnings can afford independence to the elderly and chronically ill. We conclude that the distribution and modularity of architecture layers, local AI-based elaboration, and data packaging consistency are the more essential functional requirements for critical healthcare application use cases. We also identify fast response time, utility, comfort, and low cost as the essential non-functional requirements for the defined system architecture.
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spelling pubmed-95716912022-10-17 Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications Shumba, Angela-Tafadzwa Montanaro, Teodoro Sergi, Ilaria Fachechi, Luca De Vittorio, Massimo Patrono, Luigi Sensors (Basel) Article Personalised healthcare has seen significant improvements due to the introduction of health monitoring technologies that allow wearable devices to unintrusively monitor physiological parameters such as heart health, blood pressure, sleep patterns, and blood glucose levels, among others. Additionally, utilising advanced sensing technologies based on flexible and innovative biocompatible materials in wearable devices allows high accuracy and precision measurement of biological signals. Furthermore, applying real-time Machine Learning algorithms to highly accurate physiological parameters allows precise identification of unusual patterns in the data to provide health event predictions and warnings for timely intervention. However, in the predominantly adopted architectures, health event predictions based on Machine Learning are typically obtained by leveraging Cloud infrastructures characterised by shortcomings such as delayed response times and privacy issues. Fortunately, recent works highlight that a new paradigm based on Edge Computing technologies and on-device Artificial Intelligence significantly improve the latency and privacy issues. Applying this new paradigm to personalised healthcare architectures can significantly improve their efficiency and efficacy. Therefore, this paper reviews existing IoT healthcare architectures that utilise wearable devices and subsequently presents a scalable and modular system architecture to leverage emerging technologies to solve identified shortcomings. The defined architecture includes ultrathin, skin-compatible, flexible, high precision piezoelectric sensors, low-cost communication technologies, on-device intelligence, Edge Intelligence, and Edge Computing technologies. To provide development guidelines and define a consistent reference architecture for improved scalable wearable IoT-based critical healthcare architectures, this manuscript outlines the essential functional and non-functional requirements based on deductions from existing architectures and emerging technology trends. The presented system architecture can be applied to many scenarios, including ambient assisted living, where continuous surveillance and issuance of timely warnings can afford independence to the elderly and chronically ill. We conclude that the distribution and modularity of architecture layers, local AI-based elaboration, and data packaging consistency are the more essential functional requirements for critical healthcare application use cases. We also identify fast response time, utility, comfort, and low cost as the essential non-functional requirements for the defined system architecture. MDPI 2022-10-10 /pmc/articles/PMC9571691/ /pubmed/36236773 http://dx.doi.org/10.3390/s22197675 Text en © 2022 by the authors. https://creativecommons.org/licenses/by/4.0/Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (https://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Shumba, Angela-Tafadzwa
Montanaro, Teodoro
Sergi, Ilaria
Fachechi, Luca
De Vittorio, Massimo
Patrono, Luigi
Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title_full Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title_fullStr Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title_full_unstemmed Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title_short Leveraging IoT-Aware Technologies and AI Techniques for Real-Time Critical Healthcare Applications
title_sort leveraging iot-aware technologies and ai techniques for real-time critical healthcare applications
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9571691/
https://www.ncbi.nlm.nih.gov/pubmed/36236773
http://dx.doi.org/10.3390/s22197675
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