Department of Neuroscience, Baylor College of Medicine, Houston, United States.
Elife. 2017 Oct 18;6:e28074. doi: 10.7554/eLife.28074.
Brainstem and cerebellar neurons implement an internal model to accurately estimate self-motion during externally generated ('passive') movements. However, these neurons show reduced responses during self-generated ('active') movements, indicating that predicted sensory consequences of motor commands cancel sensory signals. Remarkably, the computational processes underlying sensory prediction during active motion and their relationship to internal model computations during passive movements remain unknown. We construct a Kalman filter that incorporates motor commands into a previously established model of optimal passive self-motion estimation. The simulated sensory error and feedback signals match experimentally measured neuronal responses during active and passive head and trunk rotations and translations. We conclude that a single sensory internal model can combine motor commands with vestibular and proprioceptive signals optimally. Thus, although neurons carrying sensory prediction error or feedback signals show attenuated modulation, the sensory cues and internal model are both engaged and critically important for accurate self-motion estimation during active head movements.
脑桥和小脑神经元实施内部模型,以便在外部产生的(“被动”)运动期间准确估计自身运动。然而,这些神经元在自身产生的(“主动”)运动期间表现出反应减少,表明运动指令的预测感觉后果会抵消感觉信号。值得注意的是,主动运动期间感觉预测的计算过程及其与被动运动期间内部模型计算的关系尚不清楚。我们构建了一个卡尔曼滤波器,将运动指令纳入先前建立的最佳被动自我运动估计模型中。模拟的感觉误差和反馈信号与主动和被动头部及躯干旋转和平移期间测量到的神经元反应相匹配。我们的结论是,单一的感觉内部模型可以将运动指令与前庭和本体感觉信号最佳地结合起来。因此,尽管携带感觉预测误差或反馈信号的神经元的调制减弱,但在主动头部运动期间,感觉提示和内部模型都被激活,并且对于准确的自我运动估计至关重要。