IEEE J Biomed Health Inform. 2016 May;20(3):748-755. doi: 10.1109/JBHI.2015.2477245. Epub 2015 Sep 8.
Spasticity is a common disorder of the skeletal muscle with a high incidence in industrialised countries. A quantitative measure of spasticity using body-worn sensors is important in order to assess rehabilitative motor training and to adjust the rehabilitative therapy accordingly. We present a new approach to spasticity detection using the Integrated Posture and Activity Network by Medit Aachen body sensor network (BSN). For this, a new electromyography (EMG) sensor node was developed and employed in human locomotion. Following an analysis of the clinical gait data of patients with unilateral cerebral palsy, a novel algorithm was developed based on the idea to detect coactivation of antagonistic muscle groups as observed in the exaggerated stretch reflex with associated joint rigidity. The algorithm applies a cross-correlation function to the EMG signals of two antagonistically working muscles and subsequent weighting using a Blackman window. The result is a coactivation index which is also weighted by the signal equivalent energy to exclude positive detection of inactive muscles. Our experimental study indicates good performance in the detection of coactive muscles associated with spasticity from clinical data as well as measurements from a BSN in qualitative comparison with the Modified Ashworth Scale as classified by clinical experts. Possible applications of the new algorithm include (but are not limited to) use in robotic sensorimotor therapy to reduce the effect of spasticity.
痉挛是一种常见的骨骼肌疾病,在工业化国家发病率很高。使用穿戴式传感器对痉挛进行定量测量对于评估康复运动训练和相应调整康复治疗非常重要。我们提出了一种使用 Medit Aachen 身体传感器网络 (BSN) 的 Integrated Posture and Activity Network 来检测痉挛的新方法。为此,我们开发了一种新的肌电图 (EMG) 传感器节点,并将其应用于人体运动中。在对单侧脑瘫患者的临床步态数据进行分析后,我们基于检测拮抗肌群共同激活的想法开发了一种新的算法,这种共同激活在夸张伸展反射中与相关关节僵硬一起观察到。该算法将互相关函数应用于两个拮抗工作的肌肉的 EMG 信号,并使用 Blackman 窗口进行后续加权。结果是一个共同激活指数,它也通过信号等效能量进行加权,以排除对非活动肌肉的阳性检测。我们的实验研究表明,与临床专家根据 Modified Ashworth Scale 进行分类的结果相比,该算法在从临床数据和 BSN 测量中检测与痉挛相关的共同激活肌肉方面具有良好的性能。新算法的可能应用包括(但不限于)在机器人感觉运动疗法中使用,以减轻痉挛的影响。