Gupta Rahul, Ashe James
Brain Sciences Center, VA Medical Center, Minneapolis, MN 55417, USA.
IEEE Trans Neural Syst Rehabil Eng. 2009 Jun;17(3):254-62. doi: 10.1109/TNSRE.2009.2023290. Epub 2009 Jun 2.
Brain-machine interfaces (BMIs) hold a lot of promise for restoring some level of motor function to patients with neuronal disease or injury. Current BMI approaches fall into two broad categories--those that decode discrete properties of limb movement (such as movement direction and movement intent) and those that decode continuous variables (such as position and velocity). However, to enable the prosthetic devices to be useful for common everyday tasks, precise control of the forces applied by the end-point of the prosthesis (e.g., the hand) is also essential. Here, we used linear regression and Kalman filter methods to show that neural activity recorded from the motor cortex of the monkey during movements in a force field can be used to decode the end-point forces applied by the subject successfully and with high fidelity. Furthermore, the models exhibit some generalization to novel task conditions. We also demonstrate how the simultaneous prediction of kinematics and kinetics can be easily achieved using the same framework, without any degradation in decoding quality. Our results represent a useful extension of the current BMI technology, making dynamic control of a prosthetic device a distinct possibility in the near future.
脑机接口(BMI)有望为患有神经元疾病或损伤的患者恢复一定程度的运动功能。当前的BMI方法大致可分为两类——一类是解码肢体运动的离散属性(如运动方向和运动意图),另一类是解码连续变量(如位置和速度)。然而,为了使假肢设备在日常常见任务中发挥作用,精确控制假肢端点(如手)施加的力也至关重要。在此,我们使用线性回归和卡尔曼滤波方法表明,在力场中运动期间从猴子运动皮层记录的神经活动可用于成功且高保真地解码受试者施加的端点力。此外,这些模型对新的任务条件具有一定的泛化能力。我们还展示了如何使用相同框架轻松实现运动学和动力学的同时预测,且解码质量不会下降。我们的结果代表了当前BMI技术的有益扩展,使在不久的将来对假肢设备进行动态控制成为一种切实可能。