首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >A neural model of cortico-cerebellar interactions during attentive imitation and predictive learning of sequential handwriting movements.
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A neural model of cortico-cerebellar interactions during attentive imitation and predictive learning of sequential handwriting movements.

机译:细心模仿和顺序笔迹运动的预测学习过程中皮层-小脑相互作用的神经模型。

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Much sensory-motor behavior develops through imitation, as during the learning of handwriting by children. Such complex sequential acts are broken down into distinct motor control synergies, or muscle groups, whose activities overlap in time to generate continuous, curved movements that obey an inverse relation between curvature and speed. How are such complex movements learned through attentive imitation? Novel movements may be made as a series of distinct segments, but a practiced movement can be made smoothly, with a continuous, often bell-shaped, velocity profile. How does learning of complex movements transform reactive imitation into predictive, automatic performance? A neural model is developed which suggests how parietal and motor cortical mechanisms, such as difference vector encoding, interact with adaptively timed, predictive cerebellar learning during movement imitation and predictive performance. To initiate movement, visual attention shifts along the shape to be imitated and generates vector movement using motor cortical cells. During such an imitative movement, cerebellar Purkinje cells with a spectrum of delayed response profiles sample and learn the changing directional information and, in turn, send that learned information back to the cortex and eventually to the muscle synergies involved. If the imitative movement deviates from an attentional focus around a shape to be imitated, the visual system shifts attention, and may make an eye movement, back to the shape, thereby providing corrective directional information to the arm movement system. This imitative movement cycle repeats until the cortico-cerebellar system can accurately drive the movement based on memory alone. A cortical working memory buffer transiently stores the cerebellar output and releases it at a variable rate, allowing speed scaling of learned movements which is limited by the rate of cerebellar memory readout. Movements can be learned at variable speeds if the density of the spectrum of delayed cellular responses in the cerebellum varies with speed. Learning at slower speeds facilitates learning at faster speeds. Size can be varied after learning while keeping the movement duration constant (isochrony). Context-effects arise from the overlap of cerebellar memory outputs. The model is used to simulate key psychophysical and neural data about learning to make curved movements, including a decrease in writing time as learning progresses; generation of unimodal, bell-shaped velocity profiles for each movement synergy; size and speed scaling with preservation of the letter shape and the shapes of the velocity profiles; an inverse relation between curvature and tangential velocity; and a Two-Thirds Power Law relation between angular velocity and curvature.
机译:在儿童学习笔迹的过程中,模仿会发展出许多感觉运动行为。这种复杂的顺序动作被分解为不同的运动控制协同作用或肌肉群,它们的活动在时间上重叠,从而产生连续的弯曲运动,服从曲率和速度之间的反比关系。如何通过细心模仿来学习如此复杂的动作?新颖的机芯可以分为一系列截然不同的部分,但可以连续,通常为钟形的速度曲线平稳地进行练习。学习复杂动作如何将反应性模仿转变为预测性的自动表演?开发了一种神经模型,该模型表明顶叶和运动皮层机制(例如差异矢量编码)如何在模仿运动和预测性能的过程中与自适应定时的预测性小脑学习进行交互。要启动运动,视觉注意力会沿着要模仿的形状移动,并使用运动皮层细胞产生矢量运动。在这样的模仿运动中,具有一系列延迟响应曲线的小脑浦肯野细胞采样并学习不断变化的方向信息,然后将学到的信息发送回皮层,最终传递给所涉及的肌肉协同作用。如果模仿运动偏离注意力焦点在要模仿的形状周围,则视觉系统会将注意力转移,并使眼睛运动回到该形状,从而为手臂运动系统提供正确的方向信息。重复此模拟运动周期,直到皮质小脑系统仅凭记忆即可准确驱动运动。皮质工作记忆缓冲器可暂时存储小脑输出并以可变速率释放它,从而允许学习运动的速度缩放,该运动受小脑记忆读出速率的限制。如果小脑中延迟细胞反应的频谱密度随速度变化,则可以以可变速度学习运动。以较低的速度学习有助于以较高的速度学习。学习后可以改变大小,同时保持运动持续时间恒定(等时)。小脑记忆输出的重叠产生了语境效应。该模型用于模拟有关学习进行弯曲运动的关键心理和神经数据,包括随着学习的进行而减少写作时间;为每个运动协同作用生成单峰钟形速度曲线;保留字母形状和速度分布图形状的大小和速度缩放;曲率与切线速度成反比关系;以及角速度和曲率之间的三次幂定律关系。

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