Sachs Nicholas A, Corbett Elaine A, Miller Lee E, Perreault Eric J
Departments of Biomedical Engineering and Physiology, Northwestern University, Evanston, IL 60208, USA.
Annu Int Conf IEEE Eng Med Biol Soc. 2011;2011:5432-5. doi: 10.1109/IEMBS.2011.6091343.
Trajectory-based models that incorporate target position information have been shown to accurately decode reaching movements from bio-control signals, such as muscle (EMG) and cortical activity (neural spikes). One major hurdle in implementing such models for neuroprosthetic control is that they are inherently designed to decode single reaches from a position of origin to a specific target. Gaze direction can be used to identify appropriate targets, however information regarding movement intent is needed to determine when a reach is meant to begin and when it has been completed. We used linear discriminant analysis to classify limb states into movement classes based on recorded EMG from a sparse set of shoulder muscles. We then used the detected state transitions to update target information in a mixture of Kalman filters that incorporated target position explicitly in the state, and used EMG activity to decode arm movements. Updating the target position initiated movement along new trajectories, allowing a sequence of appropriately timed single reaches to be decoded in series and enabling highly accurate continuous control.
已证明,纳入目标位置信息的基于轨迹的模型能够从生物控制信号(如肌肉(肌电图)和皮层活动(神经尖峰))中准确解码伸手动作。将此类模型用于神经假体控制的一个主要障碍是,它们本质上是设计用于从起始位置到特定目标解码单个伸手动作的。注视方向可用于识别合适的目标,然而,需要有关运动意图的信息来确定伸手动作何时开始以及何时完成。我们使用线性判别分析,根据从一组稀疏肩部肌肉记录的肌电图,将肢体状态分类为运动类别。然后,我们使用检测到的状态转换在卡尔曼滤波器混合模型中更新目标信息,该模型在状态中明确纳入了目标位置,并使用肌电图活动来解码手臂运动。更新目标位置会启动沿新轨迹的运动,从而允许按顺序对一系列定时恰当的单个伸手动作进行解码,并实现高度精确的连续控制。