Systematic review of smart health monitoring using deep learning and Artificial intelligence

A.V.L.N. Sujith , Guna Sekhar Sajja , V. Mahalakshmi , Shibili Nuhmani , B. Prasanalakshmi
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引用次数: 65

Abstract

In the rapidly growing world of technology and evolution, the outbreak and emergences diseases have become a critical issue. Precaution, prevention and controlling the diseases by technology has become the major challenge for healthcare professionals and health care industries. Maintaining a healthy lifestyle has become impossible in the busy work schedules. Smart health monitoring system is the solution to the above poses challenges. The recent revolution of industry 5.0 and 5G has led to development of smart cum cost effective sensors which help in real time health monitoring or individuals. The SHM has led to fast, cost effective, and reliable health monitoring services from remote locations which was not possible with traditional health care systems. The integration of blockchain framework improved data security and data privacy of confidential data of patient to prevent the data misuse against patients. Involvement of Deep Learning and Machine learning to analyze health data to achieve multiple targets has helped attain preventive healthcare and fatality management in patients. This has helped in the early detection of chronic diseases which was not possible recently. To make the services more cost effective and real time, the integration of cloud computing and cloud storage has been implemented. The work presents the systematic review of SHM along with recent advancements in SHM with existing challenges.

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利用深度学习和人工智能进行智能健康监测的系统综述
在快速发展的技术和进化世界中,疾病的爆发和突发已成为一个关键问题。利用技术手段预防、预防和控制疾病已成为卫生保健专业人员和卫生保健行业面临的主要挑战。在繁忙的工作日程中,保持健康的生活方式已经变得不可能了。智能健康监测系统正是解决上述挑战的解决方案。最近的工业5.0和5G革命导致了智能和具有成本效益的传感器的发展,有助于实时监测个人健康。SHM带来了从偏远地区提供快速、具有成本效益和可靠的健康监测服务,这是传统卫生保健系统无法做到的。区块链框架的集成提高了患者保密数据的数据安全性和数据保密性,防止对患者数据的误用。深度学习和机器学习的参与分析健康数据以实现多个目标,有助于实现患者的预防性医疗保健和死亡率管理。这有助于早期发现慢性病,这在最近是不可能的。为了使服务更具成本效益和实时性,实现了云计算和云存储的集成。这项工作提出了SHM的系统回顾,以及SHM的最新进展和现有的挑战。
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来源期刊
Neuroscience informatics
Neuroscience informatics Surgery, Radiology and Imaging, Information Systems, Neurology, Artificial Intelligence, Computer Science Applications, Signal Processing, Critical Care and Intensive Care Medicine, Health Informatics, Clinical Neurology, Pathology and Medical Technology
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审稿时长
57 days
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