Simon Ann M, Hargrove Levi J, Lock Blair A, Kuiken Todd A
Neural Engineering Center for Artificial Limbs, Rehabilitation Institute of Chicago, Chicago, IL 60611, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2009;2009:1327-30. doi: 10.1109/IEMBS.2009.5334135.
Pattern recognition myoelectric control in combination with targeted muscle reinnervation (TMR) may provide better real-time control of upper limb prostheses. Current pattern recognition algorithms can classify movements with an off-line accuracy of approximately 95%. When amputees use these systems to control prostheses, motion misclassifications may hinder their performance. This study investigated the use of a decision based velocity profile that limited movement speed when there was a change in classifier decision. The goal of this velocity ramp was to improve prosthesis positioning by minimizing the effect of unintended movements. Two patients who had undergone TMR surgery controlled either a virtual or physical prosthesis. They completed a Target Achievement Control Test where they commanded a virtual prosthesis into a target posture. Participants showed improved performance metrics of 34% increase in completion rate and 13% faster overall time with the velocity ramp compared to without the velocity ramp. One participant controlled a physical prosthesis and in three minutes was able to create a tower of 1" cubes seven blocks tall with the velocity ramp compared to a tower of only two blocks tall in the control condition. These results suggest that using a pattern recognition system with a decision based velocity profile may improve user performance.
模式识别肌电控制与靶向肌肉再支配(TMR)相结合,可能会为上肢假肢提供更好的实时控制。当前的模式识别算法对运动进行分类的离线准确率约为95%。当截肢者使用这些系统来控制假肢时,运动误分类可能会妨碍他们的表现。本研究调查了基于决策的速度曲线的使用情况,该曲线在分类器决策发生变化时限制运动速度。这种速度斜坡的目的是通过最小化意外运动的影响来改善假肢定位。两名接受了TMR手术的患者控制一个虚拟或实体假肢。他们完成了一项目标达成控制测试,在测试中他们指挥一个虚拟假肢进入目标姿势。与没有速度斜坡相比,参与者在使用速度斜坡时的表现指标有所改善,完成率提高了34%,总时间快了13%。一名参与者控制一个实体假肢,在三分钟内,使用速度斜坡能够搭建一座由七个1英寸立方体组成的七层高的塔,而在对照条件下只能搭建一座两层高的塔。这些结果表明,使用具有基于决策的速度曲线的模式识别系统可能会提高用户表现。