Moorman Helene G, Gowda Suraj, Carmena Jose M
IEEE Trans Neural Syst Rehabil Eng. 2017 Jun;25(6):750-760. doi: 10.1109/TNSRE.2016.2593696. Epub 2016 Jul 21.
Brain-machine interface (BMI) systems use signals acquired from the brain to directly control the movement of an actuator, such as a computer cursor or a robotic arm, with the goal of restoring motor function lost due to injury or disease of the nervous system. In BMIs with kinematically redundant actuators, the combination of the task goals and the system under neural control can allow for many equally optimal task solutions. The extent to which kinematically redundant degrees of freedom (DOFs) in a BMI system may be under direct neural control is unknown. To address this question, a Kalman filter was used to decode single- and multi-unit cortical neural activity of two macaque monkeys into the joint velocities of a virtual four-link kinematic chain. Subjects completed movements of the chain's endpoint to instructed target locations within a two-dimensional plane. This system was kinematically redundant for an endpoint movement task, as four DOFs were used to manipulate the 2-D endpoint position. Both subjects successfully performed the task and improved with practice by producing faster endpoint velocity control signals. Kinematic redundancy allowed null movements whereby the individual links of the chain could move in a way that cancels out and does not result in endpoint movement. As the subjects became more proficient at controlling the chain, the amount of null movement also increased. Task performance suffered when the links of the kinematic chain were hidden and only the endpoint was visible. Furthermore, all four DOFs of the joint-velocity control space exhibited task-relevant modulation. The relative usage of each DOF depended on the configuration of the chain, and trials in which the less-prominent DOFs were utilized also had better task performance. Overall, these results indicate that the subjects incorporated the redundant components of the control space into their control strategy. Future BMI systems with kinematic redundancy, such as exoskeletal systems or anthropomorphic robotic arms, may benefit from allowing neural control over redundant configuration dimensions as well as the end-effector.
脑机接口(BMI)系统利用从大脑获取的信号直接控制执行器的运动,如计算机光标或机器人手臂,目的是恢复因神经系统损伤或疾病而丧失的运动功能。在具有运动学冗余执行器的BMI系统中,任务目标与神经控制下的系统相结合,可以产生许多同样最优的任务解决方案。BMI系统中运动学冗余自由度(DOF)在多大程度上可能受到直接神经控制尚不清楚。为了解决这个问题,使用卡尔曼滤波器将两只猕猴的单单元和多单元皮层神经活动解码为虚拟四连杆运动链的关节速度。受试者在二维平面内将链的端点移动到指定的目标位置。对于端点运动任务,该系统在运动学上是冗余的,因为使用了四个自由度来操纵二维端点位置。两名受试者都成功完成了任务,并通过产生更快的端点速度控制信号在练习中得到了改善。运动学冗余允许零运动,即链的各个环节可以以相互抵消且不会导致端点运动的方式移动。随着受试者在控制链条方面变得更加熟练,零运动量也增加了。当运动链的环节被隐藏,只显示端点时,任务表现会受到影响。此外,关节速度控制空间的所有四个自由度都表现出与任务相关的调制。每个自由度的相对使用取决于链条的配置,并且使用不太突出的自由度的试验也具有更好的任务表现。总体而言,这些结果表明受试者将控制空间的冗余组件纳入了他们的控制策略。未来具有运动学冗余的BMI系统,如外骨骼系统或拟人化机器人手臂,可能会受益于允许对冗余配置维度以及末端执行器进行神经控制。