Department of Electronic Science and Technology, University of Science and Technology of China (USTC), Hefei, China.
Med Biol Eng Comput. 2020 Jan;58(1):101-116. doi: 10.1007/s11517-019-02076-w. Epub 2019 Nov 21.
Taking advantage of motion sensing technology, a quantitative assessment method for lower limbs motor function of cerebral palsy (CP) based on the gross motor function measurement (GMFM)-24 scale was explored in this study. According to the motion analysis on GMFM-24 scale, we translated the assessment problem of GMFM-24 scale into a detection problem of different motion modes including static state, fall, step, turning, alternating gait, walking, running, lifting legs, kicking balls, and jumping. The surface electromyography (sEMG) electrodes and inertial sensors were adopted to capture motion data, and a framework integrating a series of detection algorithms was presented for the assessment of lower limbs gross motor function. Two groups of participants including 8 healthy adults and 14 CP children were recruited. A self-developed data acquisition equipment integrating 24 sEMG electrodes and 9 inertial units was adopted for data acquisition. A platform based on two laser beam sensors was used to perform cross-border detection. The parameters/thresholds of motion detection algorithms were determined by the data from healthy adults, and the lower limbs gross motor function evaluation was conducted on 14 CP children. The experimental results verified the feasibility and effectiveness of the proposed quantitative assessment method. Compared to the clinical assessment score based on GMFM-24 scale, 90.1% accuracy was obtained for evaluation of 303 tasks in 14 CP children. The objective motor function assessment method proposed has potential application value for the quantitative assessment of lower limbs motor function of CP children in clinical practice. Graphical abstract The algorithm framework for the assessment of lower limbs gross motor function. Using the GMFM-24 scale as the evaluation standard, a quantitative evaluation program for the lower limbs gross motor function of CP children based on motion sensing technology was proposed.
本研究利用运动感测技术,探索了一种基于粗大运动功能测量(GMFM)-24 量表的脑瘫(CP)下肢运动功能的定量评估方法。根据 GMFM-24 量表的运动分析,我们将 GMFM-24 量表的评估问题转化为检测不同运动模式的问题,包括静态、跌倒、跨步、转弯、交替步态、行走、跑步、抬腿、踢球和跳跃。采用表面肌电图(sEMG)电极和惯性传感器来捕获运动数据,并提出了一个集成了一系列检测算法的框架,用于评估下肢粗大运动功能。招募了两组参与者,包括 8 名健康成年人和 14 名 CP 儿童。采用集成 24 个 sEMG 电极和 9 个惯性单元的自行开发的数据采集设备进行数据采集。基于两个激光束传感器的平台用于进行跨界检测。运动检测算法的参数/阈值由健康成年人的数据确定,并对 14 名 CP 儿童进行下肢粗大运动功能评估。实验结果验证了所提出的定量评估方法的可行性和有效性。与基于 GMFM-24 量表的临床评估评分相比,对 14 名 CP 儿童的 303 项任务评估的准确率达到 90.1%。所提出的客观运动功能评估方法对于 CP 儿童下肢运动功能的定量评估在临床实践中具有潜在的应用价值。