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用于运动范围评估的可穿戴惯性传感器

Wearable Inertial Sensors for Range of Motion Assessment.

作者信息

Rajkumar Ashwin, Vulpi Fabio, Bethi Satish Reddy, Wazir Hassam Khan, Raghavan Preeti, Kapila Vikram

机构信息

Mechanical and Aerospace Engineering, NYU Tandon School of Engineering, Brooklyn, NY 11201 USA.

Physical Medicine and Rehabilitation and Neurology, John Hopkins University School of Medicine and Rusk Rehabilitation, New York University School of Medicine.

出版信息

IEEE Sens J. 2020 Apr;20(7):3777-3787. doi: 10.1109/JSEN.2019.2960320. Epub 2019 Dec 17.

DOI:10.1109/JSEN.2019.2960320
PMID:32377175
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC7202549/
Abstract

This paper presents the design and development of wearable inertial sensors (WIS) for real-time simultaneous triplanar motion capture of the upper extremity (UE). The sensors simultaneously capture in the frontal, sagittal, and horizontal planes UE range of motion (ROM), which is critical to assess an individual's movement limitations and determine appropriate rehabilitative treatments. Off-the-shelf sensors and microcontrollers are used to develop the WIS system, which wirelessly streams real-time joint orientation for UE ROM measurement. Key developments include: 1) two novel approaches, using earth's gravity (EG approach) and magnetic field (EGM approach) as references, to correct misalignments in the orientation between the sensor and its housing to minimize measurement errors; 2) implementation of the joint coordinate system (JCS)-based method for triplanar ROM measurements for clinical use; and 3) an guided mounting technique for accurate sensor placement and alignment on human body. The results 1) compare computational time between two orientation misalignment correction approaches (EG approach = 325.05 s and EGM approach = 92.05s); 2) demonstrate the accuracy and repeatability of measurements from the WIS system (percent deviation of measured angle from applied angle is less than ±6.5% and percent coefficient of variation is less than 11%, indicating acceptable accuracy and repeatability, respectively); and 3) demonstrate the feasibility of using the WIS system within the JCS framework for providing anatomically-correct simultaneous triplanar ROM measurements of shoulder, elbow, and forearm movements during several upper limb exercises.

摘要

本文介绍了用于实时同步捕捉上肢(UE)三平面运动的可穿戴惯性传感器(WIS)的设计与开发。这些传感器可同时在额面、矢状面和水平面捕捉UE的运动范围(ROM),这对于评估个体的运动限制和确定合适的康复治疗至关重要。利用现成的传感器和微控制器来开发WIS系统,该系统可无线传输用于UE ROM测量的实时关节方位。主要进展包括:1)两种新颖的方法,即利用地球重力(EG方法)和磁场(EGM方法)作为参考,来校正传感器与其外壳之间方位的不对准,以尽量减少测量误差;2)基于关节坐标系(JCS)的方法用于临床三平面ROM测量的实现;3)一种用于在人体上准确放置和对准传感器的引导式安装技术。结果如下:1)比较了两种方位不对准校正方法的计算时间(EG方法 = 325.05秒,EGM方法 = 92.05秒);2)证明了WIS系统测量的准确性和可重复性(测量角度与施加角度的偏差百分比小于±6.5%,变异系数百分比小于11%,分别表明具有可接受的准确性和可重复性);3)证明了在JCS框架内使用WIS系统为几种上肢运动期间的肩部、肘部和前臂运动提供解剖学上正确的同步三平面ROM测量的可行性。

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