Flint Robert D, Wright Zachary A, Slutzky Marc W
Department of Neurology, Northwestern University Feinberg School of Medicine, Chicago, IL 60611, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2012;2012:6719-22. doi: 10.1109/EMBC.2012.6347536.
Brain-machine interfaces (BMIs) have the potential to restore lost function to individuals with severe motor impairments. An important design specification for BMIs to be clinically useful is the ability to achieve high performance over a period of months to years without requiring frequent recalibration. Here, we report the first successful implementation of a biomimetic BMI based on local field potentials (LFPs). A BMI decoder was built from a single recording session of a random-pursuit reaching task for each of two monkeys, and used to control cursor position in real time (online) over a span of 210 days. Performance using this BMI was similar to prior reports using BMIs based on single-unit spikes for 2D cursor control. During this ongoing study, target acquisition rates remained constant (in 1 monkey) or improved slightly (1 monkey) over a 7 month span, and performance metrics of cursor movement (path length and time-to-target) also remained constant or showed mild improvement as the monkeys gained practice. Based on these results, we expect that a stable, high-performance BMI based on LFP signals could serve as a viable alternative to single-unit based BMIs.
脑机接口(BMI)有潜力为严重运动障碍患者恢复丧失的功能。要使BMI在临床上有用,一个重要的设计规范是能够在数月至数年的时间内实现高性能,而无需频繁重新校准。在此,我们报告了首个基于局部场电位(LFP)的仿生BMI的成功实现。针对两只猴子中的每一只,从随机追踪到达任务的单次记录会话构建了一个BMI解码器,并用于在210天的时间跨度内实时(在线)控制光标位置。使用此BMI的性能与先前使用基于单单元尖峰的BMI进行二维光标控制的报告相似。在这项正在进行的研究中,在7个月的时间跨度内,目标获取率保持恒定(在1只猴子中)或略有提高(1只猴子),并且随着猴子练习增多,光标移动的性能指标(路径长度和到达目标的时间)也保持恒定或略有改善。基于这些结果,我们预计基于LFP信号的稳定、高性能BMI可以成为基于单单元的BMI的可行替代方案。