基于智能手表心率变异性数据的站立性低血压预测:一种新方法

D. Iakovakis, L. Hadjileontiadis
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引用次数: 14

摘要

每天在物联网(IoT)中连接的可穿戴设备和智能设备的数量不断增长。我们有很大的机会通过增加这些设备的医疗价值来提高生活质量(QoL)标准。特别是,通过利用物联网技术,我们有潜力创造有用的工具,利用传感器提供生物识别数据。这项新颖的研究旨在使用独立于其他硬件的智能手表来预测由姿势变化引起的血压下降。如果血压下降是由于体位性低血压(OH)引起的,可能会导致头晕甚至晕倒,这增加了老年人跌倒的风险,但也会增加年轻人跌倒的风险。本文提出了一种数学预测模型,该模型可以通过感知心率变异性(数据)和10名健康受试者站立后收缩压下降来降低OH引起的跌倒风险。实验结果证明了该模型的有效性,在86.7%的病例中可以进行正确的预测,并且足以令人鼓舞地将所提出的方法扩展到病理病例,如帕金森病患者,进行大规模实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Standing hypotension prediction based on smartwatch heart rate variability data: a novel approach
The number of wearable and smart devices which are connecting every day in the Internet of Things (IoT) is continuously growing. We have a great opportunity though to improve the quality of life (QoL) standards by adding medical value to these devices. Especially, by exploiting IoT technology, we have the potential to create useful tools which utilize the sensors to provide biometric data. This novel study aims to use a smartwatch, independent from other hardware, to predict the Blood Pressure (BP) drop caused by postural changes. In cases that the drop is due to orthostatic hypotension (OH) can cause dizziness or even faint factors, which increase the risk of fall in the elderly but, as well as, in younger groups of people. A mathematical prediction model is proposed here which can reduce the risk of fall due to OH by sensing heart rate variability (data and drops in systolic BP after standing in a healthy group of 10 subjects. The experimental results justify the efficiency of the model, as it can perform correct prediction in 86.7% of the cases, and are encouraging enough for extending the proposed approach to pathological cases, such as patients with Parkinson's disease, involving large scale experiments.
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