基于imu的可穿戴系统在静态和动态条件下的呼吸速率估计。

IF 1.6 4区 医学 Q3 CARDIAC & CARDIOVASCULAR SYSTEMS Cardiovascular Engineering and Technology Pub Date : 2023-06-01 DOI:10.1007/s13239-023-00657-3
Alessandra Angelucci, Andrea Aliverti
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引用次数: 1

摘要

目的:呼吸参数随着活动和姿势的变化而变化,但目前可用的解决方案只能在静态条件下进行测量。方法:本文提出了一种创新的可穿戴传感器系统,由三个惯性测量单元组成,在静态和动态条件下同时估计呼吸速率(RR),并在相同的传感原理下进行人体活动识别(HAR)。有两个单元用于检测胸壁呼吸相关的运动(一个在胸部,一个在腹部);第三个在腰部。所有单元计算描述受试者运动的四元数,并通过ANT传输协议将数据连续发送到应用程序。参与研究的20名健康受试者(9名男性,11名女性)年龄在23至54岁之间,平均年龄26.8岁,平均身高172.5 cm,平均体重66.9 kg。收集这些受试者在不同姿势或活动时的数据并进行分析以提取RR。结果:动态活动(“慢走”、“快走”、“跑步”和“骑自行车”)与静态姿势之间存在统计学显著差异(p)。结论:总体而言,所提出的解决方案表明,使用相同的传感器系统在静态和动态条件下同时进行HAR和RR测量是可能的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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An IMU-Based Wearable System for Respiratory Rate Estimation in Static and Dynamic Conditions.

Purpose: Breathing parameters change with activity and posture, but currently available solutions can perform measurements only during static conditions.

Methods: This article presents an innovative wearable sensor system constituted by three inertial measurement units to simultaneously estimate respiratory rate (RR) in static and dynamic conditions and perform human activity recognition (HAR) with the same sensing principle. Two units are aimed at detecting chest wall breathing-related movements (one on the thorax, one on the abdomen); the third is on the lower back. All units compute the quaternions describing the subject's movement and send data continuously with the ANT transmission protocol to an app. The 20 healthy subjects involved in the research (9 men, 11 women) were between 23 and 54 years old, with mean age 26.8, mean height 172.5 cm and mean weight 66.9 kg. Data from these subjects during different postures or activities were collected and analyzed to extract RR.

Results: Statistically significant differences between dynamic activities ("walking slow", "walking fast", "running" and "cycling") and static postures were detected (p < 0.05), confirming the obtained measurements are in line with physiology even during dynamic activities. Data from the reference unit only and from all three units were used as inputs to artificial intelligence methods for HAR. When the data from the reference unit were used, the Gated Recurrent Unit was the best performing method (97% accuracy). With three units, a 1D Convolutional Neural Network was the best performing (99% accuracy).

Conclusion: Overall, the proposed solution shows it is possible to perform simultaneous HAR and RR measurements in static and dynamic conditions with the same sensor system.

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来源期刊
Cardiovascular Engineering and Technology
Cardiovascular Engineering and Technology Engineering-Biomedical Engineering
CiteScore
4.00
自引率
0.00%
发文量
51
期刊介绍: Cardiovascular Engineering and Technology is a journal publishing the spectrum of basic to translational research in all aspects of cardiovascular physiology and medical treatment. It is the forum for academic and industrial investigators to disseminate research that utilizes engineering principles and methods to advance fundamental knowledge and technological solutions related to the cardiovascular system. Manuscripts spanning from subcellular to systems level topics are invited, including but not limited to implantable medical devices, hemodynamics and tissue biomechanics, functional imaging, surgical devices, electrophysiology, tissue engineering and regenerative medicine, diagnostic instruments, transport and delivery of biologics, and sensors. In addition to manuscripts describing the original publication of research, manuscripts reviewing developments in these topics or their state-of-art are also invited.
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