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Identification of the Plant for Upright Stance in Humans: Multiple Movement Patterns From a Single Neural Strategy

机译:鉴定人类直立姿势的植物:来自单一神经策略的多种运动模式

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摘要

We determined properties of the plant during human upright stance using a closed-loop system identification method originally applied to human postural control by another group. To identify the plant, which was operationally defined as the mapping from muscle activation (rectified EMG signals) to body segment angles, we rotated the visual scene about the axis through the subject's ankles using a sum-of-sines stimulus signal. Because EMG signals from ankle muscles and from hip and lower trunk muscles showed similar responses to the visual perturbation across frequency, we combined EMG signals from all recorded muscles into a single plant input. Body kinematics were described by the trunk and leg angles in the sagittal plane. The phase responses of both angles to visual scene angle were similar at low frequencies and approached a difference of ∼150° at higher frequencies. Therefore we considered leg and trunk angles as separate plant outputs. We modeled the plant with a two-joint (ankle and hip) model of the body, a second-order low-pass filter from EMG activity to active joint torques, and intrinsic stiffness and damping at both joints. The results indicated that the in-phase (ankle) pattern was neurally generated, whereas the out-of-phase pattern was caused by plant dynamics. Thus a single neural strategy leads to multiple kinematic patterns. Moreover, estimated intrinsic stiffness in the model was insufficient to stabilize the plant.
机译:我们使用最初应用于另一组人体姿势控制的闭环系统识别方法,确定了人体在直立姿势期间的植物特性。为了确定植物,在操作上定义为从肌肉激活(校正的EMG信号)到人体节段角度的映射,我们使用正弦和刺激信号围绕对象的脚踝绕轴旋转视觉场景。由于来自脚踝肌肉以及臀部和下躯干肌肉的EMG信号对整个频率的视觉扰动显示出相似的响应,因此我们将来自所有记录的肌肉的EMG信号组合到单个植物输入中。身体运动学由矢状面中的躯干和腿部角度来描述。低频时,两个角度对场景角度的相位响应相似,而高频时,相差接近150°。因此,我们将腿部和躯干角视为单独的工厂输出。我们使用身体的两关节(脚踝和臀部)模型,从EMG活动到主动关节扭矩的第二阶低通滤波器以及两个关节的固有刚度和阻尼对植物进行建模。结果表明,同相(脚踝)模式是神经生成的,而异相模式是由植物动力学引起的。因此,单个神经策略会导致多种运动学模式。此外,模型中估计的固有刚度不足以稳定植物。

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