Department of Electrical and Computer Engineering, Noninvasive Brain-Machine Interface Systems Laboratory, University of Houston, Houston, TX 77204, United States of America.
J Neural Eng. 2018 Apr;15(2):021004. doi: 10.1088/1741-2552/aaa8c0.
Lower-limb, powered robotics systems such as exoskeletons and orthoses have emerged as novel robotic interventions to assist or rehabilitate people with walking disabilities. These devices are generally controlled by certain physical maneuvers, for example pressing buttons or shifting body weight. Although effective, these control schemes are not what humans naturally use. The usability and clinical relevance of these robotics systems could be further enhanced by brain-machine interfaces (BMIs). A number of preliminary studies have been published on this topic, but a systematic understanding of the experimental design, tasks, and performance of BMI-exoskeleton systems for restoration of gait is lacking.
To address this gap, we applied standard systematic review methodology for a literature search in PubMed and EMBASE databases and identified 11 studies involving BMI-robotics systems. The devices, user population, input and output of the BMIs and robot systems respectively, neural features, decoders, denoising techniques, and system performance were reviewed and compared.
Results showed BMIs classifying walk versus stand tasks are the most common. The results also indicate that electroencephalography (EEG) is the only recording method for humans. Performance was not clearly presented in most of the studies. Several challenges were summarized, including EEG denoising, safety, responsiveness and others.
We conclude that lower-body powered exoskeletons with automated gait intention detection based on BMIs open new possibilities in the assistance and rehabilitation fields, although the current performance, clinical benefits and several key challenging issues indicate that additional research and development is required to deploy these systems in the clinic and at home. Moreover, rigorous EEG denoising techniques, suitable performance metrics, consistent trial reporting, and more clinical trials are needed to advance the field.
下肢动力机器人系统,如外骨骼和矫形器,已成为辅助或康复行动障碍患者的新型机器人干预措施。这些设备通常通过某些物理操作进行控制,例如按下按钮或改变体重。尽管这些控制方案有效,但它们不是人类自然使用的方式。脑机接口 (BMI) 可以进一步提高这些机器人系统的可用性和临床相关性。已经发表了一些关于这个主题的初步研究,但缺乏对用于恢复步态的 BMI-外骨骼系统的实验设计、任务和性能的系统理解。
为了解决这一差距,我们应用标准的系统综述方法,在 PubMed 和 EMBASE 数据库中进行了文献检索,确定了 11 项涉及 BMI-机器人系统的研究。分别对设备、用户人群、BMI 和机器人系统的输入和输出、神经特征、解码器、去噪技术和系统性能进行了回顾和比较。
结果表明,分类行走与站立任务的 BMI 最为常见。结果还表明,脑电图 (EEG) 是人类唯一的记录方法。大多数研究并未明确呈现性能。总结了几个挑战,包括 EEG 去噪、安全性、响应性等。
我们得出结论,基于 BMI 的自动步态意图检测的下肢动力外骨骼为辅助和康复领域开辟了新的可能性,尽管当前的性能、临床益处和几个关键挑战表明,需要进一步的研究和开发才能将这些系统部署在临床和家庭中。此外,还需要严格的 EEG 去噪技术、合适的性能指标、一致的试验报告和更多的临床试验来推动该领域的发展。