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基于模型的眨眼条件反射分析揭示了小脑可塑性和神经元活动的潜在结构。

Model-Driven Analysis of Eyeblink Classical Conditioning Reveals the Underlying Structure of Cerebellar Plasticity and Neuronal Activity.

机构信息

Department of Electronics, Neuroengineering and Medical Robotics Laboratory, Information and Bioengineering, Politecnico di Milano, Milan, Italy.

Department of Brain and Behavioral Sciences, Brain Connectivity Center, Istituto di Ricovero e Cura a Carattere Scientifico and the Istituto Neurologico Nazionale C. Mondino, University of Pavia, Pavia, Italy.

出版信息

IEEE Trans Neural Netw Learn Syst. 2017 Nov;28(11):2748-2762. doi: 10.1109/TNNLS.2016.2598190.

Abstract

The cerebellum plays a critical role in sensorimotor control. However, how the specific circuits and plastic mechanisms of the cerebellum are engaged in closed-loop processing is still unclear. We developed an artificial sensorimotor control system embedding a detailed spiking cerebellar microcircuit with three bidirectional plasticity sites. This proved able to reproduce a cerebellar-driven associative paradigm, the eyeblink classical conditioning (EBCC), in which a precise time relationship between an unconditioned stimulus (US) and a conditioned stimulus (CS) is established. We challenged the spiking model to fit an experimental data set from human subjects. Two subsequent sessions of EBCC acquisition and extinction were recorded and transcranial magnetic stimulation (TMS) was applied on the cerebellum to alter circuit function and plasticity. Evolutionary algorithms were used to find the near-optimal model parameters to reproduce the behaviors of subjects in the different sessions of the protocol. The main finding is that the optimized cerebellar model was able to learn to anticipate (predict) conditioned responses with accurate timing and success rate, demonstrating fast acquisition, memory stabilization, rapid extinction, and faster reacquisition as in EBCC in humans. The firing of Purkinje cells (PCs) and deep cerebellar nuclei (DCN) changed during learning under the control of synaptic plasticity, which evolved at different rates, with a faster acquisition in the cerebellar cortex than in DCN synapses. Eventually, a reduced PC activity released DCN discharge just after the CS, precisely anticipating the US and causing the eyeblink. Moreover, a specific alteration in cortical plasticity explained the EBCC changes induced by cerebellar TMS in humans. In this paper, for the first time, it is shown how closed-loop simulations, using detailed cerebellar microcircuit models, can be successfully used to fit real experimental data sets. Thus, the changes of the model parameters in the different sessions of the protocol unveil how implicit microcircuit mechanisms can generate normal and altered associative behaviors.The cerebellum plays a critical role in sensorimotor control. However, how the specific circuits and plastic mechanisms of the cerebellum are engaged in closed-loop processing is still unclear. We developed an artificial sensorimotor control system embedding a detailed spiking cerebellar microcircuit with three bidirectional plasticity sites. This proved able to reproduce a cerebellar-driven associative paradigm, the eyeblink classical conditioning (EBCC), in which a precise time relationship between an unconditioned stimulus (US) and a conditioned stimulus (CS) is established. We challenged the spiking model to fit an experimental data set from human subjects. Two subsequent sessions of EBCC acquisition and extinction were recorded and transcranial magnetic stimulation (TMS) was applied on the cerebellum to alter circuit function and plasticity. Evolutionary algorithms were used to find the near-optimal model parameters to reproduce the behaviors of subjects in the different sessions of the protocol. The main finding is that the optimized cerebellar model was able to learn to anticipate (predict) conditioned responses with accurate timing and success rate, demonstrating fast acquisition, memory stabilization, rapid extinction, and faster reacquisition as in EBCC in humans. The firing of Purkinje cells (PCs) and deep cerebellar nuclei (DCN) changed during learning under the control of synaptic plasticity, which evolved at different rates, with a faster acquisition in the cerebellar cortex than in DCN synapses. Eventually, a reduced PC activity released DCN discharge just after the CS, precisely anticipating the US and causing the eyeblink. Moreover, a specific alteration in cortical plasticity explained the EBCC changes induced by cerebellar TMS in humans. In this paper, for the first time, it is shown how closed-loop simulations, using detailed cerebellar microcircuit models, can be successfully used to fit real experimental data sets. Thus, the changes of the model parameters in the different sessions of the protocol unveil how implicit microcircuit mechanisms can generate normal and altered associative behaviors.

摘要

小脑在感觉运动控制中起着至关重要的作用。然而,小脑的特定回路和可塑性机制如何参与闭环处理仍不清楚。我们开发了一种人工感觉运动控制系统,其中嵌入了具有三个双向可塑性位点的详细尖峰小脑微电路。事实证明,该系统能够重现小脑驱动的联想范式,即眨眼经典条件反射(EBCC),在该范式中,非条件刺激(US)和条件刺激(CS)之间建立了精确的时间关系。我们对尖峰模型进行了挑战,以拟合来自人类受试者的实验数据集。记录了随后的两次 EBCC 获得和消退,并且对小脑进行经颅磁刺激(TMS)以改变电路功能和可塑性。进化算法用于找到接近最优的模型参数,以再现协议不同阶段中受试者的行为。主要发现是,优化的小脑模型能够学习以准确的时间和成功率来预测条件反应,从而展示了快速获得、记忆稳定、快速消退以及像人类 EBCC 一样更快的重新获得。在学习过程中,浦肯野细胞(PCs)和小脑深部核(DCN)的放电随突触可塑性的控制而变化,其进化速度不同,小脑皮层的获得速度比 DCN 突触快。最终,PC 活动的减少释放了 DCN 放电,就在 CS 之后,准确地预测了 US 并引起眨眼。此外,皮质可塑性的特定改变解释了小脑 TMS 在人类中引起的 EBCC 变化。在本文中,首次展示了如何使用详细的小脑微电路模型进行闭环模拟,成功地拟合真实的实验数据集。因此,协议不同阶段模型参数的变化揭示了隐式微电路机制如何产生正常和改变的联想行为。

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