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使用无标记运动捕捉(MMC)对中风幸存者进行上肢运动学测量:一项横断面实验研究。

Upper limb kinematic measurement using markerless motion capturing (MMC) in stroke survivors: A cross-sectional experimental study.

作者信息

Lam Winnie Wt, Fong Kenneth Nk, Chien Chi-Wen

机构信息

Department of Rehabilitation Sciences, The Hong Kong Polytechnic University, Kowloon, Hong Kong SAR.

出版信息

Digit Health. 2025 Jun 19;11:20552076251342009. doi: 10.1177/20552076251342009. eCollection 2025 Jan-Dec.

Abstract

INTRODUCTION

Markerless motion capture (MMC) technology has emerged as a clinical tool to assess the physical performance of patients. This study evaluates: (a) differences in upper limb joint angles between stroke survivors with different functional levels and their healthy counterparts in controlled indoor and uncontrolled outdoor environments; and (b) the relationship between the kinematic information obtained by the MMC system and the scores of manual motor assessments.

METHODS

A customized MMC system using an iPad Pro captured the participants' movements. Stroke survivors underwent three upper limb assessments and performed seven sets of upper limb tasks with their non-affected side, followed by their affected side. Healthy participants performed the same tasks with their dominant and non-dominant sides. The sensitivity and specificity of the machine models were calculated for classifying upper limb motor function levels using kinematic data from the MMC system.

RESULTS

Fifty stroke survivors and 49 healthy adults were recruited. Significant differences were found between the affected and non-affected sides of stroke participants in most tasks. Significant positive correlations were found between the results of the manual motor assessments and most of the kinematic parameters. The results of the four selected machine learning models revealed ≥0.85 sensitivity in the stroke upper limb functional level classification.

CONCLUSION

The MMC system and machine learning algorithms provide accurate data for evaluating upper limb recovery in stroke survivors. Further research is needed to explore the use of the MMC system by stroke survivors at home during remote therapy.

摘要

引言

无标记运动捕捉(MMC)技术已成为一种评估患者身体机能的临床工具。本研究评估:(a)在受控的室内环境和不受控的室外环境中,不同功能水平的中风幸存者与其健康对照者在上肢关节角度上的差异;以及(b)MMC系统获取的运动学信息与手动运动评估分数之间的关系。

方法

使用iPad Pro的定制MMC系统捕捉参与者的动作。中风幸存者对其未受影响的一侧进行三项上肢评估并执行七组上肢任务,随后对其受影响的一侧进行同样操作。健康参与者对其优势侧和非优势侧执行相同任务。利用MMC系统的运动学数据计算机器模型对上肢运动功能水平进行分类的敏感性和特异性。

结果

招募了50名中风幸存者和49名健康成年人。在大多数任务中,中风参与者受影响侧和未受影响侧之间存在显著差异。手动运动评估结果与大多数运动学参数之间存在显著正相关。四个选定机器学习模型的结果显示,在中风上肢功能水平分类中敏感性≥0.85。

结论

MMC系统和机器学习算法为评估中风幸存者的上肢恢复情况提供了准确的数据。需要进一步研究以探索中风幸存者在远程治疗期间在家中使用MMC系统的情况。

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