下肢逆运动学结果不同于惯性测量单元和标记派生的步态数据。

IF 1.1 4区 医学 Q4 ENGINEERING, BIOMEDICAL Journal of Applied Biomechanics Pub Date : 2023-06-01 DOI:10.1123/jab.2022-0194
Jocelyn F Hafer, Julien A Mihy, Andrew Hunt, Ronald F Zernicke, Russell T Johnson
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引用次数: 2

摘要

在实验室中,基于标记的步态分析可能不能代表现实世界的步态。使用惯性测量单元(imu)结合开源数据处理管道(OpenSense),现实世界的步态分析可能是可行的。在使用OpenSense研究真实世界的步态之前,我们必须确定这些方法对关节运动学的估计是否与传统的基于标记的运动捕捉(MoCap)相似,并区分临床不同步态力学的组。健康的年轻人和老年人以及患有膝骨关节炎的老年人完成了这项研究。我们以2种速度在地上行走时捕获动作捕捉和移动单元数据。使用OpenSim工作流计算动作捕捉和IMU运动学。我们测试了MoCap和IMU之间的矢状位运动学是否不同,工具是否同样检测到组间差异,以及工具之间的运动学是否因速度而不同。动作捕捉显示骨盆前倾(0%-100%步幅)和关节屈曲比IMU(髋关节:0%-38%和61%-100%步幅;膝关节:0%-38%,58%-89%,步幅95%-99%;脚踝:6%-99%步幅)。各组之间没有明显的相互作用。我们在各个角度都发现了显著的工具速度交互。虽然MoCap和imu衍生的运动学不同,但缺乏工具组间的相互作用表明在临床队列中有一致的跟踪。目前的研究结果表明,使用OpenSense的imu导出的运动学可以在现实环境中可靠地评估步态。
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Lower Extremity Inverse Kinematics Results Differ Between Inertial Measurement Unit- and Marker-Derived Gait Data.

In-lab, marker-based gait analyses may not represent real-world gait. Real-world gait analyses may be feasible using inertial measurement units (IMUs) in combination with open-source data processing pipelines (OpenSense). Before using OpenSense to study real-world gait, we must determine whether these methods estimate joint kinematics similarly to traditional marker-based motion capture (MoCap) and differentiate groups with clinically different gait mechanics. Healthy young and older adults and older adults with knee osteoarthritis completed this study. We captured MoCap and IMU data during overground walking at 2 speeds. MoCap and IMU kinematics were computed with OpenSim workflows. We tested whether sagittal kinematics differed between MoCap and IMU, whether tools detected between-group differences similarly, and whether kinematics differed between tools by speed. MoCap showed more anterior pelvic tilt (0%-100% stride) and joint flexion than IMU (hip: 0%-38% and 61%-100% stride; knee: 0%-38%, 58%-89%, and 95%-99% stride; and ankle: 6%-99% stride). There were no significant tool-by-group interactions. We found significant tool-by-speed interactions for all angles. While MoCap- and IMU-derived kinematics differed, the lack of tool-by-group interactions suggests consistent tracking across clinical cohorts. Results of the current study suggest that IMU-derived kinematics with OpenSense may enable reliable evaluation of gait in real-world settings.

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来源期刊
Journal of Applied Biomechanics
Journal of Applied Biomechanics 医学-工程:生物医学
CiteScore
2.00
自引率
0.00%
发文量
47
审稿时长
6-12 weeks
期刊介绍: The mission of the Journal of Applied Biomechanics (JAB) is to disseminate the highest quality peer-reviewed studies that utilize biomechanical strategies to advance the study of human movement. Areas of interest include clinical biomechanics, gait and posture mechanics, musculoskeletal and neuromuscular biomechanics, sport mechanics, and biomechanical modeling. Studies of sport performance that explicitly generalize to broader activities, contribute substantially to fundamental understanding of human motion, or are in a sport that enjoys wide participation, are welcome. Also within the scope of JAB are studies using biomechanical strategies to investigate the structure, control, function, and state (health and disease) of animals.
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