基于无线无源可穿戴设备的呼吸伪影检测自适应搜索算法。

P O'Neill, W M Mongan, R Ross, S Acharya, A Fontecchio, K R Dandekar
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引用次数: 1

摘要

该算法使用无线、可穿戴、被动针织智能织物设备作为应变传感器,可以估计呼吸活动等生物医学反馈。射频识别(RFID)信号物理特性的变化可用于无线检测生理过程和状态。然而,它是典型的环境噪声伪影出现在RFID信号,使其难以识别生理过程。本文介绍了一种利用k-means聚类技术来发现这些重复的生理信号,并将其分为活跃和不活跃两种状态。该算法检测这些生物医学事件,而不需要使用半无监督方法完全去除噪声成分,并根据这些结果,使用这些分类结果预测下一个生物医学事件。这种方法可以实现实时无创监测,用于驱动医疗设备的治疗。使用这种方法,该算法在大约一秒钟内预测模拟环境中呼吸活动的开始。
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An Adaptive Search Algorithm for Detecting Respiratory Artifacts Using a Wireless Passive Wearable Device.

With the use of a wireless, wearable, passive knitted smart fabric device as a strain gauge sensor, the proposed algorithm can estimate biomedical feedback such as respiratory activity. Variations in physical properties of Radio Frequency Identification (RFID) signals can be used to wirelessly detect physiological processes and states. However, it is typical for ambient noise artifacts to appear in the RFID signal making it difficult to identify physiological processes. This paper introduces a new technique for finding these repetitive physiological signals and identifying them into two states, active and inactive, using k-means clustering. The algorithm detects these biomedical events without the need to completely remove the noise components using a semi-unsupervised approach, and with these results, predict the next biomedical event using these classification results. This approach enables real-time noninvasive monitoring for use with actuating medical devices for therapy. Using this approach, the algorithm predicts the onset of respiratory activity in a simulated environment within approximately one second.

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Signal Processing in Medicine and Biology: Innovations in Big Data Processing Gaussian Smoothing Filter for Improved EMG Signal Modeling An Adaptive Search Algorithm for Detecting Respiratory Artifacts Using a Wireless Passive Wearable Device. VASCULAR STENOSIS DETECTION USING TEMPORAL-SPECTRAL DIFFERENCES IN CORRELATED ACOUSTIC MEASUREMENTS. Data-intensive Undergraduate Research Project Informs to Advance Healthcare Analytics.
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