Department of Electrical and Computer Engineering, McMaster University, Hamilton, Ontario, Canada. Toronto Rehabilitation Institute-University Health Network, Toronto, Ontario, Canada. Institute of Biomaterials and Biomedical Engineering, University of Toronto, Toronto, Ontario, Canada.
Physiol Meas. 2018 Apr 26;39(4):04NT02. doi: 10.1088/1361-6579/aab994.
Previous studies showed success using wrist-worn accelerometers to monitor upper-limb activity in adults and children with hemiparesis. However, a knowledge gap exists regarding which specific joint movements are reflected in accelerometry readings. We conducted a case series intended to enrich data interpretation by characterizing the influence of different pediatric upper-limb movements on accelerometry data.
The study recruited six typically developing children and five children with hemiparetic cerebral palsy. The participants performed unilateral and bilateral activities, and their upper limb movements were measured with wrist-worn accelerometers and the Microsoft Kinect, a markerless motion-capture system that tracks skeletal data. The Kinect data were used to quantify specific upper limb movements through joint angle calculations (trunk, shoulder, elbow and wrist). Correlation coefficients (r) were calculated to quantify the influence of individual joint movements on accelerometry data. Regression analyses were performed to examine multi-joint patterns and explain variability across different activities and participants.
Single-joint correlation results suggest that pediatric wrist-worn accelerometry data are not biased to particular individual joint movements. Rather, the accelerometry data could best be explained by the movements of the joints with the most functional relevance to the performed activity.
This case series provides deeper insight into the interpretation of wrist-worn accelerometry data, and supports the use of this tool in quantifying functional upper-limb movements in pediatric populations.
先前的研究表明,腕戴式加速度计可成功监测偏瘫成人和儿童的上肢活动。然而,对于加速度计读数反映哪些特定关节运动,目前仍存在知识空白。本病例系列研究旨在通过描述不同儿科上肢运动对加速度计数据的影响,丰富数据解释。
该研究招募了 6 名正常发育的儿童和 5 名偏瘫脑瘫儿童。参与者进行单侧和双侧活动,其上肢运动通过腕戴式加速度计和 Microsoft Kinect(一种无标记运动捕捉系统,可跟踪骨骼数据)进行测量。Kinect 数据用于通过关节角度计算(躯干、肩部、肘部和手腕)来量化特定的上肢运动。计算相关系数(r)以量化单个关节运动对加速度计数据的影响。进行回归分析以检查多关节模式,并解释不同活动和参与者之间的变异性。
单关节相关结果表明,儿科腕戴式加速度计数据不受特定单个关节运动的影响。相反,加速度计数据可以通过与所进行活动最具功能相关性的关节运动来最好地解释。
本病例系列研究深入了解了腕戴式加速度计数据的解释,支持在量化儿科人群功能性上肢运动中使用该工具。