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Real-time Secure Health Surveillance for Smarter Health Communities

机译:用于更智能的健康社区的实时安全健康监视

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Pervasive healthcare services with smart decision making capability and ubiquitous communication technologies can forge future smart communities. Real-time health surveillance for early detection of life-threatening diseases through advanced sensing and communication technology can provide better treatment, reduce medical expenses and save lives of community residents (i.e., patients). However, the assurance of data privacy is the prime concern for such smart health technologies. This research aims to describe a privacy-preserving cloud-based system for real-time health surveillance through change detection of multiple vital health signs of smart community members. Vital signs data generated from IoT-enabled wearable devices are processed in real-time in a cloud environment. This article focuses on the development of a predictive model for the smart community considering the sensitivity of data processing in a third-party environment (e.g., cloud computing). We developed a vital sign change detection system using Holt's linear trend method (to enable prediction of data with trends) where fully homomorphic encryption is adapted to perform computations on an encrypted domain that can ensure data privacy. Moreover, to reduce the overhead of the fully homomorphic encryption method over large medical data we introduced a parallel approach for encrypted computations using a MapReduce algorithm of Apache Hadoop. We demonstrated the proposed model by evaluating some case studies for different vital signs of patients. The accuracy and efficiency of the implementation demonstrate the effectiveness of the proposed model for building a smart community.
机译:具有智能决策能力和无处不在的通信技术的无处不在的医疗服务可以打造未来的智能社区。通过先进的传感和通讯技术进行实时健康监测,以尽早发现威胁生命的疾病,可以提供更好的治疗,减少医疗费用并挽救社区居民(即患者)的生命。但是,确保数据隐私是此类智能健康技术的主要关注点。这项研究的目的是通过对智能社区成员的多个重要健康体征进行更改检测,来描述一种用于实时健康监控的基于隐私保护的云系统。从支持IoT的可穿戴设备生成的生命体征数据在云环境中进行实时处理。本文着重考虑了第三方环境(例如,云计算)中数据处理的敏感性,为智能社区开发预测模型。我们使用Holt的线性趋势方法(可以预测趋势数据)开发了一种生命体征变化检测系统,其中完全同态加密适用于在可确保数据隐私的加密域上执行计算。此外,为了减少大型医学数据上完全同态加密方法的开销,我们引入了一种并行方法,使用Apache Hadoop的MapReduce算法进行加密计算。我们通过评估一些针对患者不同生命体征的案例研究证明了提出的模型。实施的准确性和效率证明了所提出的模型构建智能社区的有效性。

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