Division of Health Care Delivery Research, Robert D. and Patricia E. Kern Center for the Science of Health Care Delivery, Mayo Clinic, Rochester, Minnesota, United States of America.
Department of Chemical and Biomedical Engineering, West Virginia University, Morgantown, West Virginia, Minnesota, United States of America.
PLoS One. 2024 Apr 2;19(4):e0300318. doi: 10.1371/journal.pone.0300318. eCollection 2024.
This study aimed to develop and evaluate the ARM (arm repetitive movement) algorithm using inertial measurement unit (IMU) data to assess repetitive arm motion in manual wheelchair (MWC) users in real-world settings. The algorithm was tested on community data from four MWC users with spinal cord injury and compared with video-based analysis. Additionally, the algorithm was applied to in-home and free-living environment data from two and sixteen MWC users, respectively, to assess its utility in quantifying differences across activities of daily living and between dominant and non-dominant arms. The ARM algorithm accurately estimated active and resting times (>98%) in the community and confirmed asymmetries between dominant and non-dominant arm usage in in-home and free-living environment data. Analysis of free-living environment data revealed that the total resting bout time was significantly longer (P = 0.049) and total active bout time was significantly shorter (P = 0.011) for the non-dominant arm. Analysis of active bouts longer than 10 seconds showed higher total time (P = 0.015), average duration (P = 0.026), and number of movement cycles per bout (P = 0.020) for the dominant side. These findings support the feasibility of using the IMU-based ARM algorithm to assess repetitive arm motion and monitor shoulder disorder risk factors in MWC users during daily activities.
本研究旨在开发和评估 ARM(手臂重复运动)算法,该算法使用惯性测量单元(IMU)数据来评估现实环境中使用手动轮椅(MWC)的患者的重复手臂运动。该算法在来自四名脊髓损伤的 MWC 用户的社区数据上进行了测试,并与基于视频的分析进行了比较。此外,该算法还应用于来自两名和十六名 MWC 用户的家庭和自由生活环境数据,以评估其在量化日常生活活动和优势与非优势手臂之间差异的能力。ARM 算法在社区中准确估计了活跃和休息时间(>98%),并在家庭和自由生活环境数据中证实了优势和非优势手臂使用之间的不对称性。对自由生活环境数据的分析表明,非优势手臂的总休息时间明显更长(P=0.049),总活跃时间明显更短(P=0.011)。对持续时间超过 10 秒的活跃运动的分析表明,优势侧的总时间(P=0.015)、平均持续时间(P=0.026)和每回合运动周期数(P=0.020)更高。这些发现支持使用基于 IMU 的 ARM 算法评估 MWC 用户日常活动中的重复手臂运动和监测肩部疾病风险因素的可行性。