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Causal network in a deafferented non-human primate brain

机译:丧失生命力的非人类灵长类动物大脑中的因果网络

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De-afferented/efferented neural ensembles can undergo causal changes when interfaced to neuroprosthetic devices. These changes occur via recruitment or isolation of neurons, alterations in functional connectivity within the ensemble and/or changes in the role of neurons, i.e., excitatory/inhibitory. In this work, emergence of a causal network and changes in the dynamics are demonstrated for a deafferented brain region exposed to BMI (brain-machine interface) learning. The BMI was controlling a robot for reach-and-grasp behavior. And, the motor cortical regions used for the BMI were deafferented due to chronic amputation, and ensembles of neurons were decoded for velocity control of the multi-DOF robot. A generalized linear model-framework based Granger causality (GLM-GC) technique was used in estimating the ensemble connectivity. Model selection was based on the AIC (Akaike Information Criterion).
机译:与神经假体设备连接时,去无力/出神的神经集成体可能会发生因果变化。这些变化通过神经元的募集或分离,集合内功能连接的改变和/或神经元作用的改变(即兴奋/抑制)而发生。在这项工作中,因暴露于BMI(脑机接口)学习而丧失生命力的大脑区域表现出了因果网络的出现和动力学的变化。 BMI正在控制机器人以进行抓举行为。而且,由于慢性截肢,用于BMI的运动皮层区域脱了皮,对神经元的集合进行了解码,以控制多自由度机器人的速度。基于广义线性模型框架的Granger因果关系(GLM-GC)技术用于估计整体连通性。模型的选择基于AIC(赤池信息准则)。

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