Contreras-Vidal Jose L
Department of Electrical and Computer Engineering, University of Houston, TX 77004, USA and the Department of Neurosurgery at The Methodist Hospital Research Institute.
Conf Proc IEEE Int Conf Syst Man Cybern. 2014 Oct 5;2014:1489-1492. doi: 10.1109/SMC.2014.6974126.
Brain-machine interface (BMI) devices have unparalleled potential to restore functional movement capabilities to stroke, paralyzed and amputee patients. Although BMI systems have achieved success in a handful of investigative studies, translation of closed-loop neuroprosthetic devices from the laboratory to the market is challenged by gaps in the scientific data regarding long-term device reliability and safety, uncertainty in the regulatory, market and reimbursement pathways, lack of metrics for evaluating and quantifying performance in BMI systems, as well as patient-acceptance challenges that impede their fast and effective translation to the end user. This review focuses on the identification of engineering, clinical and user's BMI metrics for new and existing BMI applications.
脑机接口(BMI)设备在恢复中风、瘫痪和截肢患者的功能运动能力方面具有无与伦比的潜力。尽管BMI系统在一些调查研究中取得了成功,但将闭环神经假体设备从实验室推向市场面临诸多挑战,包括有关长期设备可靠性和安全性的科学数据存在差距、监管、市场和报销途径存在不确定性、缺乏评估和量化BMI系统性能的指标,以及阻碍其快速有效推广至最终用户的患者接受度方面的挑战。本综述重点在于确定适用于新的和现有的BMI应用的工程学、临床和用户BMI指标。