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Adaptation of a smart walker for stroke individuals: a study on sEMG and accelerometer signals

机译:适应中风个体的智能助行器:sEMG和加速度计信号的研究

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Abstract Introduction: Stroke is a leading cause of neuromuscular system damages, and researchers have been studying and developing robotic devices to assist affected people. Depending on the damage extension, the gait of these people can be impaired, making devices, such as smart walkers, useful for rehabilitation. The goal of this work is to analyze changes in muscle patterns on the paretic limb during free and walker-assisted gaits in stroke individuals, through accelerometry and surface electromyography (sEMG). Methods The analyzed muscles were vastus medialis, biceps femoris, tibialis anterior and gastrocnemius medialis. The volunteers walked three times on a straight path in free gait and, further, three times again, but now using the smart walker, to help them with the movements. Then, the data from gait pattern and muscle signals collected by sEMG and accelerometers were analyzed and statistical analyses were applied. Results The accelerometry allowed gait phase identification (stance and swing), and sEMG provided information about muscle pattern variations, which were detected in vastus medialis (onset and offset; p = 0.022) and biceps femoris (offset; p = 0.025). Additionally, comparisons between free and walker-assisted gaits showed significant reduction in speed (from 0.45 to 0.30 m/s; p = 0.021) and longer stance phase (from 54.75 to 60.34%; p = 0.008). Conclusions Variations in muscle patterns were detected in vastus medialis and biceps femoris during the experiments, besides user speed reduction and longer stance phase when the walker-assisted gait is compared with the free gait.
机译:摘要简介:中风是神经肌肉系统损害的主要原因,研究人员一直在研究和开发机器人设备来帮助受影响的人。根据损伤程度的不同,这些人的步态可能会受损,从而使诸如智能步行器之类的设备对康复很有用。这项工作的目的是通过加速度计和表面肌电图(sEMG)分析卒中个体在自由和步行者辅助步态期间模仿肢体肌肉模式的变化。方法分析的肌肉为腓肠肌,股二头肌,胫骨前肌和腓肠肌。志愿者们以自由步态沿着笔直的路径走了三遍,然后又走了三遍,但是现在使用智能助行器来帮助他们进行运动。然后,分析了通过步态图和sEMG和加速度计收集的肌肉信号数据,并进行了统计分析。结果加速度计可以识别步态(姿势和摆动),而sEMG提供了有关肌肉模式变化的信息,这些信息在股内侧(起始和偏移; p = 0.022)和股二头肌(偏移; p = 0.025)中检测到。此外,自由步态和步行者步态之间的比较显示出速度显着降低(从0.45降低至0.30 m / s; p = 0.021)和更长的姿态阶段(从54.75降低至60.34%; p = 0.008)。结论在实验过程中,除了步行者的步态与自由步态相比,使用者的速度降低和较长的站立阶段,还发现了股内侧肌和股二头肌的肌肉形态变化。

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