Institute of Biomedical Engineering, École Polytechnique de Montréal, Montreal, QC, Canada.
CRME - Research Center, Office GR-123, 5200, East Bélanger Street, H1T 1C9, Montreal, QC, Canada.
Med Biol Eng Comput. 2018 Jan;56(1):49-59. doi: 10.1007/s11517-017-1678-y. Epub 2017 Jul 1.
Treatment for cerebral palsy depends upon the severity of the child's condition and requires knowledge about upper limb disability. The aim of this study was to develop a systematic quantitative classification method of the upper limb disability levels for children with spastic unilateral cerebral palsy based on upper limb movements and muscle activation. Thirteen children with spastic unilateral cerebral palsy and six typically developing children participated in this study. Patients were matched on age and manual ability classification system levels I to III. Twenty-three kinematic and electromyographic variables were collected from two tasks. Discriminative analysis and K-means clustering algorithm were applied using 23 kinematic and EMG variables of each participant. Among the 23 kinematic and electromyographic variables, only two variables containing the most relevant information for the prediction of the four levels of severity of spastic unilateral cerebral palsy, which are fixed by manual ability classification system, were identified by discriminant analysis: (1) the Falconer index (CAI ) which represents the ratio of biceps to triceps brachii activity during extension and (2) the maximal angle extension (θ ). A good correlation (Kendall Rank correlation coefficient = -0.53, p = 0.01) was found between levels fixed by manual ability classification system and the obtained classes. These findings suggest that the cost and effort needed to assess and characterize the disability level of a child can be further reduced.
脑性瘫痪的治疗取决于患儿病情的严重程度,需要了解上肢残疾情况。本研究旨在基于上肢运动和肌肉激活,为痉挛性单侧脑瘫儿童开发一种上肢残疾程度的系统定量分类方法。13 名痉挛性单侧脑瘫患儿和 6 名正常发育儿童参与了这项研究。患儿根据年龄和手动能力分类系统 I 至 III 级进行匹配。从两个任务中收集了 23 个运动学和肌电图变量。对每个参与者的 23 个运动学和肌电图变量应用判别分析和 K-均值聚类算法。在 23 个运动学和肌电图变量中,只有两个变量包含与通过手动能力分类系统预测痉挛性单侧脑瘫严重程度的四个等级最相关的信息,通过判别分析确定:(1)在伸展过程中代表二头肌和三头肌活动比率的 Falconer 指数(CAI),以及(2)最大伸展角度(θ)。通过手动能力分类系统确定的等级与获得的等级之间存在良好的相关性(Kendall 秩相关系数=-0.53,p=0.01)。这些发现表明,评估和描述残疾儿童残疾程度所需的成本和努力可以进一步降低。