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On Delay-Sensitive Healthcare Data Analytics at the Network Edge Based on Deep Learning

机译:基于深度学习的网络边缘时延敏感医疗数据分析

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As the age of the Internet of Things (IoT) continues to flourish, the concept of smart healthcare has taken an unprecedented turn due to interdisciplinary thrusts. To carry the big healthcare data ema nating from the plethora of bi 0-sens ors and machines in the IoT sensing plane to the central cloud, next generation high-speed delivery networks are essential. On the other hand, once the IoT data are delivered to the cloud, the massive IoT healthcare data are processed and analyzed em-ploying the state-of-the-art analytics tools such as deep machine learning and so forth. However, given the explosion of big data (from various sources in addition to the healthcare data), the delivery network as well the cloud may experience network and computational congestion, respectively. This may impact the realtime analytics of the healthcare data, e.g., critical for in-house patients and senior citizens aging at home. To address this issue, the emerging IoT edge analytics concept can be regarded as a promising solution to process the big healthcare data close to the source. For larg e-s cale IoT dep loym ents, this fu nctio nality is critical because of the sheer volumes of Data being generated. In this paper, we propose a deep learning based IoT edge analytics approach to support intelligent healthcare for residential users. The performance of the proposal is validated using computer-based simulation for online training of a real dataset. The reported results of our proposal exhibit encouraging performance in terms of low loss rate, high accuracy, and low execution time to support near real-time actionable decision making on the healthcare data.
机译:随着物联网(IoT)时代的蓬勃发展,由于跨学科研究的推动,智能医疗保健的概念发生了前所未有的转变。为了将庞大的医疗数据从物联网传感平面中的大量Bi 0传感器和机器发送到中央云,下一代高速交付网络必不可少。另一方面,一旦将IoT数据传送到云,就可以利用最先进的分析工具(如深度机器学习等)来处理和分析大量的IoT医疗保健数据。但是,鉴于大数据(除了医疗数据之外还来自各种来源)的爆炸性增长,交付网络以及云可能分别经历网络和计算拥塞。这可能会影响医疗保健数据的实时分析,例如,这对于内部患者和在家中老龄化的老年人至关重要。为了解决这个问题,新兴的物联网边缘分析概念可以看作是一种有前途的解决方案,可以在源头附近处理大型医疗数据。对于大型IoT部署,此功能至关重要,因为所生成的数据量巨大。在本文中,我们提出了一种基于深度学习的物联网边缘分析方法,以为居民用户提供智能医疗服务。使用基于计算机的模拟对真实数据集进行在线训练,可以验证该提案的性能。我们的提案的报告结果在低丢失率,高精度和低执行时间方面表现出令人鼓舞的性能,可支持对医疗数据进行近乎实时的可行决策。

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