Neural Correlates of Control of a Kinematically Redundant Brain-Machine Interface*

Albert You, Abhimanyu Singhal, H. Moorman, Suraj Gowda, J. Carmena
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引用次数: 3

Abstract

Brain-machine interfaces (BMIs) use signals from the brain to control cursors or robotic arms, with potential applications for restoring the ability for users to interact with the physical world around them. BMIs that are kinematically redundant allow for many viable solutions for the same task. While natural motor control involves the coordinated movements of kinematically redundant limbs, it is unclear how the brain might control the redundant degrees of freedom (DOF) in a BMI. In this study, we analyze a previously collected dataset where a macaque controlled a 4 DOF virtual arm in 2D space. A Kalman filter was used to decode neural signals from motor cortices into the four joint angle velocities. The monkey was instructed to move the virtual arm from a center target to eight peripheral targets, distributed evenly around a circle in a self-initiated center-out task. The monkey was able to achieve high accuracy in the task in the first day, but reach times continued to decrease over learning and endpoint trajectories became more stereotyped. We found that the neural activity fired in more correlated patterns over days with increased firing rates, suggesting a consolidation of neural activity into a high-level representation of the joint angles, optimizing endpoint control.
运动冗余脑机接口控制的神经关联*
脑机接口(bmi)使用来自大脑的信号来控制光标或机械臂,在恢复用户与周围物理世界互动的能力方面具有潜在的应用前景。运动冗余的bmi允许同一任务有许多可行的解决方案。虽然自然运动控制涉及运动学冗余肢体的协调运动,但尚不清楚大脑如何控制BMI中的冗余自由度(DOF)。在这项研究中,我们分析了之前收集的一个数据集,其中猕猴在二维空间中控制了一个4自由度的虚拟手臂。利用卡尔曼滤波将运动皮层的神经信号解码为四个关节角速度。猴子被指示将虚拟手臂从一个中心目标移动到八个外围目标,这些目标均匀地分布在一个自我启动的中心外任务中。在第一天,猴子能够在任务中达到很高的准确性,但随着学习,到达时间继续减少,终点轨迹变得更加刻板化。我们发现,随着放电频率的增加,神经活动在几天内以更相关的模式放电,这表明神经活动巩固为关节角度的高级表示,优化了端点控制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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