支持人工智能的可穿戴医疗设备、临床和诊断决策支持系统以及基于物联网的医疗保健应用,用于COVID-19的预防、筛查和治疗

R. Barnes
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引用次数: 11

摘要

根据埃森哲、GlobalWebIndex、GoMo Health、毕马威、麦肯锡、甲骨文、Sermo、STAT、Statista和Workplace Intelligence收集的数据,我们对预测性大数据分析、身体传感器网络、医疗可穿戴设备、决策支持系统、无线传感应用可以用于实时连续远程监测患者生命体征,并在无处不在的以患者为中心的移动医疗保健中配置临床数据。通过尖端的机器学习算法,对COVID-19患者的大量数据进行吸收和检查,掌握病毒传播模式,优化诊断的速度和精度,提出适当的治疗方法,根据个性化的遗传和生理特征,识别最脆弱的个体。通过利用从埃森哲、Global-WebIndex、GoMo Health、毕马威、麦肯锡、甲骨文、Sermo、STAT、Statista和Workplace Intelligence收集的数据,我们对预测性大数据分析、身体传感器网络、医疗可穿戴设备、决策支持系统、无线传感应用可以用于实时连续远程监测患者的生命体征,在无处不在的以患者为中心的移动医疗保健中配置临床数据。研究设计、调查方法和材料访谈是在线进行的,数据采用人口普查局美国社区调查的五个变量(年龄、种族/民族、性别、教育程度和地理区域)加权,以可靠和准确地反映美国的人口构成。
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Artificial Intelligence-enabled Wearable Medical Devices, Clinical and Diagnostic Decision Support Systems, and Internet of Things-based Healthcare Applications in COVID-19 Prevention, Screening, and Treatment
Building our argument by drawing on data collected from Accenture, GlobalWebIndex, GoMo Health, KPMG, McKinsey, Oracle, Sermo, STAT, Statista, and Workplace Intelligence, we performed analyses and made estimates regarding how predictive big data analytics, body sensor networks, medical wearable devices, decision support systems, and wireless sensing applications can be harnessed in real-time continuous remote monitoring of patients vital signs configuring clinical data in pervasive mobile patient-centric healthcare. Introduction The extensive data of COVID-19 patients can be assimilated and inspected by cutting-edge machine learning algorithms to grasp the pattern of viral transmission, optimize diagnostic swiftness and precision, advance adequate therapeutic methods, and identify the most vulnerable individuals according to personalized genetic and physiological features. Methodology and Empirical Analysis Building our argument by drawing on data collected from Accenture, Global-WebIndex, GoMo Health, KPMG, McKinsey, Oracle, Sermo, STAT, Statista, and Workplace Intelligence, we performed analyses and made estimates regarding how predictive big data analytics, body sensor networks, medical wearable devices, decision support systems, and wireless sensing applications can be harnessed in real-time continuous remote monitoring of patients' vital signs configuring clinical data in pervasive mobile patient-centric healthcare. Study Design, Survey Methods, and Materials The interviews were conducted online and data were weighted by five variables (age, race/ethnicity, gender, education, and geographic region) using the Census Bureau's American Community Survey to reflect reliably and accurately the demographic composition of the United States.
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Internet of Medical Things-based Clinical Decision Support Systems, Smart Healthcare Wearable Devices, and Machine Learning Algorithms in COVID-19 Prevention, Screening, Detection, Diagnosis, and Treatment Internet of Medical Things-driven Remote Monitoring Systems, Big Healthcare Data Analytics, and Wireless Body Area Networks in COVID-19 Detection and Diagnosis Resting Motor Threshold (RMT) during “Preservation” Transcranial Magnetic Stimulation (TMS) Machine and Deep Learning Algorithms, Computer Vision Technologies, and Internet of Things-based Healthcare Monitoring Systems in COVID-19 Prevention, Testing, Detection, and Treatment Smart Wearable Internet of Medical Things Technologies, Artificial Intelligence-based Diagnostic Algorithms, and Real-Time Healthcare Monitoring Systems in COVID-19 Detection and Treatment
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