Wang Tianhe, Ivry Richard B
Department of Psychology and Helen Wills Neuroscience Institute, University of California, Berkeley, California.
bioRxiv. 2024 Apr 10:2023.07.04.547720. doi: 10.1101/2023.07.04.547720.
The cerebellum is crucial for sensorimotor adaptation, using error information to keep the sensorimotor system well-calibrated. Here we introduce a population-coding model to explain how cerebellar-dependent learning is modulated by contextual variation. The model consists of a two-layer network, designed to capture activity in both the cerebellar cortex and deep cerebellar nuclei. A core feature of the model is that within each layer, the processing units are tuned to both movement direction and the direction of movement error. The model captures a large range of contextual effects including interference from prior learning and the influence of error uncertainty and volatility. While these effects have traditionally been taken to indicate meta learning or context-dependent memory within the adaptation system, our results show that they are emergent properties that arise from the population dynamics within the cerebellum. Our results provide a novel framework to understand how the nervous system responds to variable environments.
小脑对于感觉运动适应至关重要,它利用误差信息来使感觉运动系统保持良好校准。在此,我们引入一种群体编码模型,以解释小脑依赖性学习如何受到情境变化的调节。该模型由一个两层网络组成,旨在捕捉小脑皮质和小脑深部核团的活动。该模型的一个核心特征是,在每一层内,处理单元都被调整为对运动方向和运动误差方向进行调谐。该模型捕捉了广泛的情境效应,包括先前学习的干扰以及误差不确定性和波动性的影响。虽然这些效应传统上被认为表明适应系统内的元学习或情境依赖性记忆,但我们的结果表明,它们是小脑内群体动力学产生的涌现特性。我们的结果提供了一个新的框架,以理解神经系统如何对多变的环境做出反应。