Neural representations of movement intentions during brain-controlled self-motion

R. So, Zhiming Xu, C. Libedinsky, Kyaw Kyar Toe, K. Ang, S. Yen, Cuntai Guan
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引用次数: 5

Abstract

Using a brain-machine interface (BMI), a non-human primate (NHP) was trained to control a mobile robotic platform in real time using spike activity from the motor cortex, enabling self-motion through brain-control. The decoding model was initially trained using neural signals recorded when the NHP controlled the platform using a joystick. Using this decoding model, we compared the performance of the BMI during brain control with and without the use of a dummy joystick, and found that the success ratio dropped by 40% and time taken increased by 45% when the dummy joystick was removed. Performance during full brain control was only restored after a recalibration of the decoding model. We aimed to understand the differences in the underlying neural representations of movement intentions with and without the use of a dummy joystick, and showed that there were significant changes in both directional tuning, as well as global firing rates. These results indicate that the strategies used by the NHP for self-motion were different depending on whether a dummy joystick was present. We propose that a recalibration of the decoding model is an important step during the implementation of a BMI system for self-motion.
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脑控自我运动中运动意图的神经表征
使用脑机接口(BMI),训练非人类灵长类动物(NHP)利用运动皮层的脉冲活动实时控制移动机器人平台,从而通过大脑控制实现自我运动。解码模型最初是使用NHP使用操纵杆控制平台时记录的神经信号进行训练的。利用这个解码模型,我们比较了使用和不使用假操纵杆时大脑控制期间BMI的表现,发现当假操纵杆被移除时,成功率下降了40%,所需时间增加了45%。在完全大脑控制期间的表现只有在解码模型重新校准后才能恢复。我们的目的是了解在使用和不使用虚拟操纵杆的情况下,运动意图的潜在神经表征的差异,并表明方向调整和整体射击速率都有显著变化。这些结果表明,NHP用于自我运动的策略取决于是否存在虚拟操纵杆。我们提出,解码模型的重新校准是实现自我运动的BMI系统的重要步骤。
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