首页> 外文期刊>IEEE transactions on neural systems and rehabilitation engineering >Should Hands Be Restricted When Measuring Able-Bodied Participants to Evaluate Machine Learning Controlled Prosthetic Hands?
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Should Hands Be Restricted When Measuring Able-Bodied Participants to Evaluate Machine Learning Controlled Prosthetic Hands?

机译:在衡量能干的参与者评估机器学习的受控假肢手时应受到限制吗?

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Objective: When evaluating methods for machine-learning controlled prosthetic hands, able-bodied participants are often recruited, for practical reasons, instead of participants with upper limb absence (ULA). However, able-bodied participants have been shown to often perform myoelectric control tasks better than participants with ULA. It has been suggested that this performance difference can be reduced by restricting the wrist and hand movements of able-bodied participants. However, the effect of such restrictions on the consistency and separability of the electromyogram's (EMG) features remains unknown. The present work investigates whether the EMG separability and consistency between unaffected and affected arms differ and whether they change after restricting the unaffected limb in persons with ULA. Methods: Both arms of participants with unilateral ULA were compared in two conditions: with the unaffected hand and wrist restricted or not. Furthermore, it was tested if the effect of arm and restriction is influenced by arm posture (arm down, arm in front, or arm up). Results: Fourteen participants (two women, age = 53.4 +/- 4.05) with acquired transradial limb loss were recruited. We found that the unaffected limb generated more separated EMG than the affected limb. Furthermore, restricting the unaffected hand and wrist lowered the separability of the EMG when the arm was held down. Conclusion: Limb restriction is a viable method to make the EMG of able-bodied participants more similar to that of participants with ULA. Significance: Future research that evaluates methods for machine learning controlled hands in able-bodied participants should restrict the participants' hand and wrist.
机译:目的:在评估机器学习控制的假肢手的方法时,能够出于实际原因招募能够招募能够的参与者,而不是上肢缺席的参与者(ULA)。然而,已经显示出能够的能够的参与者比ULA的参与者更好地执行肌电控制任务。已经提出,通过限制能够拥有能够的携带者的参与者的手腕和手动运动,可以减少这种性能差异。然而,这种限制对电灰度(EMG)特征的一致性和可分离性的影响仍然未知。目前的工作调查了非影响和受影响的武器之间的EMG可分离性和一致性是否有所不同,是否在将不受影响的肢体限制在ula的人身上之后改变。方法:在两个条件下比较单侧ULA的参与者的双臂:未受影响的手和手腕受限制。此外,如果臂和限制的效果受臂姿势(手臂向下,前部或臂上的臂)的影响,则测试了它。结果:招募了14名参与者(两名女性,年龄= 53.4 +/- 4.05),招募了跨越肢体损失。我们发现未受影响的肢体产生比受影响的肢体更分开的EMG。此外,限制不受影响的手和手腕,当臂压下时,降低了EMG的可分离性。结论:肢体限制是一种可行的方法,使能够拥有能干的参与者更类似于ula的参与者。意义:未来的研究,评估能够体内参与者的机器学习控制的方法的研究应限制参与者的手和手腕。

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