Chao Zenas C, Nagasaka Yasuo, Fujii Naotaka
Laboratory for Adaptive Intelligence, RIKEN Brain Science Institute Saitama, Japan.
Front Neuroeng. 2010 Mar 30;3:3. doi: 10.3389/fneng.2010.00003. eCollection 2010.
Brain-machine interfaces (BMIs) employ the electrical activity generated by cortical neurons directly for controlling external devices and have been conceived as a means for restoring human cognitive or sensory-motor functions. The dominant approach in BMI research has been to decode motor variables based on single-unit activity (SUA). Unfortunately, this approach suffers from poor long-term stability and daily recalibration is normally required to maintain reliable performance. A possible alternative is BMIs based on electrocorticograms (ECoGs), which measure population activity and may provide more durable and stable recording. However, the level of long-term stability that ECoG-based decoding can offer remains unclear. Here we propose a novel ECoG-based decoding paradigm and show that we have successfully decoded hand positions and arm joint angles during an asynchronous food-reaching task in monkeys when explicit cues prompting the onset of movement were not required. Performance using our ECoG-based decoder was comparable to existing SUA-based systems while evincing far superior stability and durability. In addition, the same decoder could be used for months without any drift in accuracy or recalibration. These results were achieved by incorporating the spatio-spectro-temporal integration of activity across multiple cortical areas to compensate for the lower fidelity of ECoG signals. These results show the feasibility of high-performance, chronic and versatile ECoG-based neuroprosthetic devices for real-life applications. This new method provides a stable platform for investigating cortical correlates for understanding motor control, sensory perception, and high-level cognitive processes.
脑机接口(BMI)直接利用皮层神经元产生的电活动来控制外部设备,并被视为恢复人类认知或感觉运动功能的一种手段。BMI研究中的主流方法是基于单神经元活动(SUA)来解码运动变量。不幸的是,这种方法长期稳定性较差,通常需要每日重新校准以维持可靠的性能。一种可能的替代方法是基于皮层脑电图(ECoG)的BMI,它测量群体活动,可能会提供更持久和稳定的记录。然而,基于ECoG的解码所能提供的长期稳定性水平仍不明确。在此,我们提出一种基于ECoG的新型解码范式,并表明在猴子进行异步取食任务期间,当不需要明确的运动起始提示线索时,我们成功地解码了手部位置和手臂关节角度。使用我们基于ECoG的解码器的性能与现有的基于SUA的系统相当,同时表现出远 superior稳定性和耐用性。此外,同一个解码器可以使用数月而不会出现准确性漂移或重新校准的情况。这些结果是通过整合多个皮层区域活动的时空频谱整合来补偿ECoG信号较低的保真度而实现的。这些结果表明了基于ECoG的高性能、慢性和通用神经假体装置在实际应用中的可行性。这种新方法为研究皮层相关性以理解运动控制、感觉知觉和高级认知过程提供了一个稳定的平台。