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Application of an LDA Classifier for Determining User-Intent in Multi-DOF Quasi-Static Shoulder Tasks in Individuals with Chronic Stroke: Preliminary Analysis

机译:LDA分类器在慢性冲程中的个体中多DOF准静态肩部任务中确定用户意图的应用:初步分析

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Abnormal synergies commonly present after stroke, limiting function and accomplishment of ADL's. They cause co-activation of sets of muscles spanning multiple joints across the affected upper-extremity. These synergies present proportionally to the amount of shoulder effort, thus the effects of the synergy reduce with reduced effort of shoulder muscles. A promising solution may be the application of a wearable exoskeletal robotic device to support the paretic shoulder in hopes to maximize function. To date, control strategies for such a device remain unknown. This work examines the feasibility of using two different linear discriminant analysis classifiers to control shoulder abduction and adduction as well as external and internal rotation simultaneously, two primary degrees of freedom that have gone largely unstudied in hemiparetic stroke. Forces, moments, and muscle activity were recorded during single and dual-tasks involving these degrees of freedom. A classifier that classified all tasks was able to determine user-intent in 14 of the 15 tasks above 90% accuracy. A classifier using force and moment data provided an average 94.3% accuracy, EMG 79%, and data sets combined, 94.9% accuracy. Parallel classifiers identifying user-intent in either abduction and adduction or internal and external rotation were 95.4%, 92.6%, and 97.3% accurate for the respective data sets. These preliminary results indicate that it seems possible to classify user-intent of the paretic shoulder in these degrees of freedom to an adequate accuracy using load cell data or load cell and EMG data combined that would enable control of a powered exoskeletal device.
机译:中风后常用的异常协同作用,限制函数和Adl的完成。它们导致跨越受影响的上肢跨越多个关节的肌肉组的共激活。这些协同作用与肩部努力的数量成比例地提出,因此协同作用的影响减少了肩部肌肉的减少。有希望的解决方案可以是可穿戴外科机器人机器人的应用,以支持静脉肩部,希望能够最大化功能。迄今为止,这种设备的控制策略仍然是未知的。这项工作探讨了使用两种不同的线性判别分析分类器来控制肩部绑架和内容以及外部和内部旋转的可行性,同时存在两次初级自由度,这在偏热行程中大致不含糊。在涉及这些自由度的单一和双任务期间记录力量,时刻和肌肉活动。分类所有任务的分类器能够在高于90%的准确度的15个任务中确定用户意图。使用力和时刻数据的分类器提供了平均94.3%的精度,EMG 79%和数据集合,精度为94.9%。识别绑架和内容或内部和外部旋转中的用户意图的并行分类器为各个数据集的95.4%,92.6%和97.3%。这些初步结果表明,似乎可以使用负载小区数据或称重电池和EMG数据组合将这些自由度的静脉肩部的用户意图分类到足够的准确性,并使能够控制供电的外骨骼设备。

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