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首页> 外文期刊>JAMA: the Journal of the American Medical Association >Targeted muscle reinnervation for real-time myoelectric control of multifunction artificial arms.
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Targeted muscle reinnervation for real-time myoelectric control of multifunction artificial arms.

机译:定向肌肉神经支配,用于多功能人工手臂的实时肌电控制。

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CONTEXT: Improving the function of prosthetic arms remains a challenge, because access to the neural-control information for the arm is lost during amputation. A surgical technique called targeted muscle reinnervation (TMR) transfers residual arm nerves to alternative muscle sites. After reinnervation, these target muscles produce electromyogram (EMG) signals on the surface of the skin that can be measured and used to control prosthetic arms. OBJECTIVE: To assess the performance of patients with upper-limb amputation who had undergone TMR surgery, using a pattern-recognition algorithm to decode EMG signals and control prosthetic-arm motions. DESIGN, SETTING, AND PARTICIPANTS: Study conducted between January 2007 and January 2008 at the Rehabilitation Institute of Chicago among 5 patients with shoulder-disarticulation or transhumeral amputations who underwent TMR surgery between February 2002 and October 2006 and 5 control participants without amputation. Surface EMG signals were recorded from all participants and decoded using a pattern-recognition algorithm. The decoding program controlled the movement of a virtual prosthetic arm. All participants were instructed to perform various arm movements, and their abilities to control the virtual prosthetic arm were measured. In addition, TMR patients used the same control system to operate advanced arm prosthesis prototypes. MAIN OUTCOME MEASURE: Performance metrics measured during virtual arm movements included motion selection time, motion completion time, and motion completion ("success") rate. RESULTS: The TMR patients were able to repeatedly perform 10 different elbow, wrist, and hand motions with the virtual prosthetic arm. For these patients, the mean motion selection and motion completion times for elbow and wrist movements were 0.22 seconds (SD, 0.06) and 1.29 seconds (SD, 0.15), respectively. These times were 0.06 seconds and 0.21 seconds longer than the mean times for control participants. For TMR patients, the mean motion selection and motion completion times for hand-grasp patterns were 0.38 seconds (SD, 0.12) and 1.54 seconds (SD, 0.27), respectively. These patients successfully completed a mean of 96.3% (SD, 3.8) of elbow and wrist movements and 86.9% (SD, 13.9) of hand movements within 5 seconds, compared with 100% (SD, 0) and 96.7% (SD, 4.7) completed by controls. Three of the patients were able to demonstrate the use of this control system in advanced prostheses, including motorized shoulders, elbows, wrists, and hands. CONCLUSION: These results suggest that reinnervated muscles can produce sufficient EMG information for real-time control of advanced artificial arms.
机译:背景:改善假肢的功能仍然是一个挑战,因为在截肢过程中失去了对手臂神经控制信息的访问。一种称为靶向肌肉再支配(TMR)的外科手术技术将残留的手臂神经转移到其他肌肉部位。重新神经支配后,这些目标肌肉在皮肤表面产生肌电图(EMG)信号,可以对其进行测量并用于控制义肢。目的:使用模式识别算法解码EMG信号并控制假肢运动,以评估接受TMR手术的上肢截肢患者的表现。设计,地点和参与者:2007年1月至2008年1月在芝加哥康复研究所进行的研究,对5例在2002年2月至2006年10月之间接受TMR手术的肩关节脱位或经肱骨截肢的患者和5例没有截肢的对照组进行了研究。记录了所有参与者的表面肌电信号,并使用模式识别算法对其进行解码。解码程序控制了虚拟假肢的运动。指导所有参与者执行各种手臂运动,并测量他们控制虚拟假肢的能力。此外,TMR患者使用相同的控制系统来操作高级手臂假体原型。主要观察指标:在虚拟手臂运动期间测得的性能指标包括运动选择时间,运动完成时间和运动完成(“成功”)率。结果:TMR患者能够使用虚拟假肢重复执行10种不同的肘部,腕部和手部动作。对于这些患者,肘部和腕部运动的平均运动选择和运动完成时间分别为0.22秒(SD,0.06)和1.29秒(SD,0.15)。这些时间比对照组参与者的平均时间长0.06秒和0.21秒。对于TMR患者,手抓模式的平均运动选择和运动完成时间分别为0.38秒(SD,0.12)和1.54秒(SD,0.27)。这些患者在5秒内成功完成了平均96.3%(SD,3.8)的肘部和腕部运动和86.9%(SD,13.9)的手部运动,而100%(SD,0)和96.7%(SD,4.7) )由控件完成。其中三名患者能够证明该控制系统在高级假体中的使用,包括机动肩膀,肘部,腕部和手部。结论:这些结果表明,神经支配的肌肉可以产生足够的肌电图信息,以实时控制先进的人造手臂。

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