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基于实时肌电图的假肢手模式识别控制:现有方法、挑战和未来实现的综述。

Real-Time EMG Based Pattern Recognition Control for Hand Prostheses: A Review on Existing Methods, Challenges and Future Implementation.

机构信息

The MARCS Institute, Western Sydney University, Werrington 2747, NSW, Australia.

School of Computing, Engineering and Mathematics, Western Sydney University, Penrith 2751, NSW, Australia.

出版信息

Sensors (Basel). 2019 Oct 22;19(20):4596. doi: 10.3390/s19204596.

Abstract

Upper limb amputation is a condition that significantly restricts the amputees from performing their daily activities. The myoelectric prosthesis, using signals from residual stump muscles, is aimed at restoring the function of such lost limbs seamlessly. Unfortunately, the acquisition and use of such myosignals are cumbersome and complicated. Furthermore, once acquired, it usually requires heavy computational power to turn it into a user control signal. Its transition to a practical prosthesis solution is still being challenged by various factors particularly those related to the fact that each amputee has different mobility, muscle contraction forces, limb positional variations and electrode placements. Thus, a solution that can adapt or otherwise tailor itself to each individual is required for maximum utility across amputees. Modified machine learning schemes for pattern recognition have the potential to significantly reduce the factors (movement of users and contraction of the muscle) affecting the traditional electromyography (EMG)-pattern recognition methods. Although recent developments of intelligent pattern recognition techniques could discriminate multiple degrees of freedom with high-level accuracy, their efficiency level was less accessible and revealed in real-world (amputee) applications. This review paper examined the suitability of upper limb prosthesis (ULP) inventions in the healthcare sector from their technical control perspective. More focus was given to the review of real-world applications and the use of pattern recognition control on amputees. We first reviewed the overall structure of pattern recognition schemes for myo-control prosthetic systems and then discussed their real-time use on amputee upper limbs. Finally, we concluded the paper with a discussion of the existing challenges and future research recommendations.

摘要

上肢截肢会严重限制截肢者进行日常活动。肌电假肢利用残肢肌肉的信号,旨在无缝恢复失去的肢体功能。不幸的是,这种肌电信号的获取和使用既繁琐又复杂。此外,一旦获取,通常需要大量的计算能力将其转换为用户控制信号。它向实用假肢解决方案的过渡仍然受到各种因素的挑战,特别是与每个截肢者的移动性、肌肉收缩力、肢体位置变化和电极放置不同有关的因素。因此,需要一种能够适应或针对每个人进行调整的解决方案,以便最大限度地提高截肢者的效用。用于模式识别的改进机器学习方案有可能显著减少传统肌电图(EMG)-模式识别方法中受用户运动和肌肉收缩影响的因素。尽管智能模式识别技术的最新发展可以以高精度区分多个自由度,但它们的效率水平在实际应用(截肢者)中不太容易获得和体现。本文从技术控制的角度检查了上肢假肢(ULP)发明在医疗保健领域的适用性。更多地关注对现实世界应用的审查以及对截肢者使用模式识别控制。我们首先回顾了肌电控制假肢系统的模式识别方案的总体结构,然后讨论了它们在截肢者上肢的实时使用。最后,我们讨论了现有挑战和未来研究建议。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/a3d8/6832440/35d8f48b5513/sensors-19-04596-g001.jpg

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