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A comprehensive health assessment framework to facilitate IoT-assisted smart workouts: A predictive healthcare perspective

机译:全面的健康评估框架,以方便Io辅助智能训练:预测医疗保健观点

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摘要

Enormous potential of Internet of Things (IoT) Technology has made it feasible to perceive and analyze real time health conditions in ubiquitous manner. Moreover, incorporation of IoT in healthcare industry has led researchers around the world to develop smart applications like mobile healthcare, health-aware recommendations, and intelligent healthcare systems. Inspired from these aspects, this research presents an intelligent healthcare framework based on IoT Technology to provide ubiquitous healthcare to person during his/her workout sessions. The intelligence of the presented framework lies with its ability to analyze real time health conditions during workouts and predict probabilistic health state vulnerability. For predictive purpose, the proposed framework indulges the utilization of Artificial Neural Network (ANN) model, which is comprised of three phases namely, monitor, learn, and predict. In addition to this, the presented framework is supported by a mathematical foundation to predict probabilistic vulnerability, in terms of Probabilistic State of Vulnerability (PSoV). In order to determine the validity and applicability of the proposed framework, experiments were performed where 5 people with different attributes are monitored for 14 days using numerous smart sensors. Results, upon comparison with various state-of-the-art techniques, depict that the proposed system is superior in performance and is highly effective in delivering healthcare services during workouts. (C) 2017 Elsevier B.V. All rights reserved.
机译:巨大的东西潜力(物联网)技术使得在无处不在的方式中感知和分析实时健康状况。此外,在医疗保健行业的IOT纳入了世界各地的研究人员,以开发移动医疗保健,健康意识建议和智能医疗保健系统等智能应用。这项研究引发了这些方面,这项研究提出了一个基于物联网技术的智能医疗保健框架,在他/她的锻炼会议期间向人提供无处不在的医疗保健。所提出的框架的智能旨在在锻炼期间分析实时健康状况,并预测概率健康状态脆弱性。为了预测目的,所提出的框架沉迷于人工神经网络(ANN)模型的利用,包括三个阶段,即监测,学习和预测。除此之外,在概率漏洞(PSOV)的概率状态方面,通过数学基础支持所呈现的框架来支持概率漏洞。为了确定所提出的框架的有效性和适用性,进行实验,其中使用许多智能传感器监测有5个不同属性的5人。结果与各种最先进的技术相比,描绘了所提出的系统在性能方面优越,并且在锻炼期间提供医疗保健服务的高度有效。 (c)2017 Elsevier B.v.保留所有权利。

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