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A Real-time PPG Quality Assessment Approach for Healthcare Internet-of-Things

机译:用于医疗物联网的实时PPG质量评估方法

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摘要

Photoplethysmography (PPG) as a non-invasive and low-cost technique plays a significant role in wearable Internet-of-Things based health monitoring systems, enabling continuous health and well-being data collection. As PPG monitoring is relatively simple, non-invasive, and convenient, it is widely used in a variety of wearable devices (e.g., smart bands, smart rings, smartphones) to acquire different vital signs such as heart rate and pulse rate variability. However, the accuracy of such vital signs highly depends on the quality of the signal and the presence of artifacts generated by other resources such as motion. This unreliable performance is unacceptable in health monitoring systems. To tackle this issue, different studies have proposed motion artifacts reduction and signal quality assessment methods. However, they merely focus on improvements in the results and signal quality. Therefore, they are unable to alleviate erroneous decision making due to invalid vital signs extracted from the unreliable PPG signals. In this paper, we propose a novel PPG quality assessment approach for IoT-based health monitoring systems, by which the reliability of the vital signs extracted from PPG quality is determined. Therefore, unreliable data can be discarded to prevent inaccurate decision making and false alarms. Exploiting a Convolutional Neural Networks (CNN) approach, a hypothesis function is created by comparing heart rate in the PPG with corresponding heart rate values extracted from ECG signal. We implement a proof-of-concept IoT-based system to evaluate the accuracy of the proposed approach.
机译:光电容积描记术(PPG)作为一种非侵入性且低成本的技术,在基于可穿戴物联网的健康监测系统中扮演着重要角色,可实现持续的健康和幸福数据收集。由于PPG监视相对简单,无创且方便,因此已广泛用于各种可穿戴设备(例如,智能手环,智能环,智能手机)中,以获取不同的生命体征,例如心率和脉搏率变异性。但是,这种生命体征的准确性高度取决于信号的质量以及其他资源(例如运动)生成的伪像的存在。这种不可靠的性能在健康监控系统中是不可接受的。为了解决这个问题,不同的研究提出了减少运动伪影和信号质量评估的方法。但是,它们仅关注结果和信号质量的改进。因此,由于从不可靠的PPG信号中提取的无效生命体征,他们无法减轻错误的决策。在本文中,我们提出了一种用于基于IoT的健康监控系统的新颖PPG质量评估方法,该方法可确定从PPG质量提取的生命体征的可靠性。因此,可以丢弃不可靠的数据,以防止决策不正确和错误警报。利用卷积神经网络(CNN)方法,通过将PPG中的心率与从ECG信号中提取的相应心率值进行比较来创建假设函数。我们实施了一种基于概念验证的基于IoT的系统,以评估所提出方法的准确性。

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