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Fog-Computing-Based Heartbeat Detection and Arrhythmia Classification Using Machine Learning

机译:基于雾计算的心跳检测和使用机器学习的心律学分类

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摘要

Designing advanced health monitoring systems is still an active research topic. Wearable and remote monitoring devices enable monitoring of physiological and clinical parameters (heart rate, respiration rate, temperature, etc.) and analysis using cloud-centric machine-learning applications and decision-support systems to predict critical clinical states. This paper moves from a totally cloud-centric concept to a more distributed one, by transferring sensor data processing and analysis tasks to the edges of the network. The resulting solution enables the analysis and interpretation of sensor-data traces within the wearable device to provide actionable alerts without any dependence on cloud services. In this paper, we use a supervised-learning approach to detect heartbeats and classify arrhythmias. The system uses a window-based feature definition that is suitable for execution within an asymmetric multicore embedded processor that provides a dedicated core for hardware assisted pattern matching. We evaluate the performance of the system in comparison with various existing approaches, in terms of achieved accuracy in the detection of abnormal events. The results show that the proposed embedded system achieves a high detection rate that in some cases matches the accuracy of the state-of-the-art algorithms executed in standard processors.
机译:设计先进的健康监测系统仍然是一个积极的研究主题。可穿戴和远程监控设备能够监控生理和临床参数(心率,呼吸率,温度等),并使用以云为中心的机器学习应用和决策支持系统进行分析,以预测关键临床状态。本文通过将传感器数据处理和分析任务传输到网络边沿,从一个完全云中心的概念从一个完全云的概念移动到更具分布式的概念。所得到的解决方案使得可穿戴设备中的传感器数据迹线的分析和解释能够提供可操作警报而没有任何对云服务的依赖性。在本文中,我们使用监督学习方法来检测心跳并分类心律失常。该系统使用基于窗口的特征定义,该特征定义适用于非对称多核嵌入式处理器内的执行,为硬件辅助模式匹配提供专用核心。我们根据在检测异常事件的准确性方面,评估系统的性能与各种现有方法相比。结果表明,所提出的嵌入式系统实现了高检测率,在某些情况下,在某些情况下匹配在标准处理器中执行的最先进算法的准确性。

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