用于移动医疗服务的HRV模式发现神经网络

T. Vu, Jun Wook Lee, Yongmi Lee, Hi-Seok Kim, K. Ryu
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引用次数: 2

摘要

脉搏、心电、运动传感器等可植入日常可穿戴设备的植入式设备已成为当今无线传感器网络领域的研究热点。在这项研究中,我们专注于开发一个增量自适应网络,以检测受试者在血压和呼吸频率下的长期心率变异性(HRV)测量,使用庞加莱图编码,称为PHIAN。网络随着环境的各种变化而学习,而不破坏旧的原型模式。在训练过程中注意误差概率密度,这是避免输入具有高临时概率密度的区域吸引所有神经单元的必要条件。PHIAN在不同的设置下进行了评估,并与以前的在线学习技术在分类误差和网络结构方面进行了比较。我们提出的方法可以有效地应用于智能传感器系统,提醒医疗服务提供者在紧急情况下进行干预。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An HRV Patterns Discovering Neural Network for Mobile Healthcare Services
Implantable devices such as pulse, ECG, and movement sensors that can be embedded in day to day wearables have been drawn a lot of research attentions in the field of wireless sensor network nowadays. In this research, we focus on developing an incremental adaptive network to detect subject at risk of coronary heart disease based on long-term Heart Rate Variability (HRV) measurement under blood pressure and breathing frequency using Poincare plot encoding, named PHIAN. The network is learnt along with the various changes of environment without destroying the old prototype patterns. The error probability density is taken care in the training process, which is necessary to avoid the regions where inputs have a high temporary probability density attracting all neural units. PHIAN is evaluated under different settings and in comparison with previous on-line learning techniques in terms of classification error and the network structure. Our proposed method is efficiently applicable to the smart sensor system to alert the health care service provider to intervene in the emergency situation.
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