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The role of noise modeling in the estimation of resting-state brain effective connectivity

机译:噪声建模在静息状态大脑有效连通性估计中的作用

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Causal relations among neuronal populations of the brain are studied through the so-called effective connectivity (EC) network. This is estimated from EEG or fMRI measurements, by inverting a generative model of the corresponding data. It is clear that the goodness of the estimated network heavily depends on the modeling assumptions. In this present paper we consider the EC estimation problem using fMRI data in resting-state condition. Specifically, we investigate on how to model endogenous fluctuations driving the neuronal activity.
机译:通过所谓的有效连接(EC)网络研究了大脑神经元群体之间的因果关系。通过反转相应数据的生成模型,可以从EEG或fMRI测量中估算出这一点。显然,估计网络的优劣在很大程度上取决于建模假设。在本文中,我们考虑了使用fMRI数据在静止状态下的EC估计问题。具体来说,我们研究如何建模驱动神经元活动的内源性波动。

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