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使用人工神经网络和数据手套实现肘部以下截肢者的精细肌电控制。

Refined myoelectric control in below-elbow amputees using artificial neural networks and a data glove.

作者信息

Sebelius Fredrik C P, Rosén Birgitta N, Lundborg Göran N

机构信息

Department of Electrical Measurements and Hand Surgery, Malmö University Hospital, Lund University, Lund, Sweden.

出版信息

J Hand Surg Am. 2005 Jul;30(4):780-9. doi: 10.1016/j.jhsa.2005.01.002.

Abstract

PURPOSE

To develop a system for refined motor control of artificial hands based on multiple electromyographic (EMG) recordings, allowing multiple patterns of hand movements.

METHODS

Five subjects with traumatic below-elbow amputations and 1 subject with a congenital below- elbow failure of formation performed 10 imaginary movements with their phantom hand while surface electrodes recorded the EMG data. In a training phase a data glove with 18 degrees of freedom was used for positional recording of movements in the contralateral healthy hand. These movements were performed at the same time as the imaginary movements in the phantom hand. An artificial neural network (ANN) then could be trained to associate the specific EMG patterns recorded from the amputation stump with the analogous specific hand movements synchronously performed in the healthy hand. The ability of the ANN to predict the 10 imaginary movements offline, when they were reflected in a virtual computer hand, was assessed and calculated.

RESULTS

After the ANN was trained the subjects were able to perform and control 10 hand movements in the virtual computer hand. The subjects showed a median performance of 5 types of movement with a high correlation with the movement pattern of the data glove. The subjects seemed to relearn to execute motor commands rapidly that had been learned before the accident, independent of how old the injury was. The subject with congenital below-elbow failure of formation was able to perform and control several hand movements in the computer hand that cannot be performed in a myoelectric prosthesis (eg, opposition of the thumb).

CONCLUSIONS

With the combined use of an ANN and a data glove, acting in concert in a training phase, amputees rapidly can learn to execute several imaginary movements in a virtual computerized hand, this opens promising possibilities for motor control of future hand prostheses.

摘要

目的

开发一种基于多通道肌电图(EMG)记录的人工手精细运动控制系统,以实现多种手部运动模式。

方法

5名创伤性肘关节以下截肢患者和1名先天性肘关节以下肢体发育不全患者在进行10次幻手想象运动时,通过表面电极记录EMG数据。在训练阶段,使用具有18个自由度的数据手套对健侧手的运动进行位置记录。这些运动与幻手的想象运动同时进行。然后训练人工神经网络(ANN),将从截肢残端记录的特定EMG模式与健侧手同步执行的类似特定手部运动相关联。评估并计算了ANN在离线状态下预测10次想象运动的能力,这些运动在虚拟计算机手中呈现。

结果

ANN训练后,受试者能够在虚拟计算机手中执行和控制10种手部运动。受试者平均能完成5种运动类型,与数据手套的运动模式高度相关。受试者似乎能迅速重新学会执行事故前就已掌握的运动指令,而与受伤时间无关。先天性肘关节以下肢体发育不全的受试者能够在计算机手中执行和控制一些在肌电假手中无法完成的手部运动(如拇指对掌)。

结论

在训练阶段,ANN与数据手套联合使用,截肢者能够迅速学会在虚拟计算机化手中执行多种想象运动,这为未来手部假肢的运动控制开辟了广阔前景。

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