利用大脑分区估计有效连通性

Elvina Gindullina, M. Zorzi, A. Bertoldo, A. Chiuso
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引用次数: 1

摘要

神经科学中一个主要的突出问题是脑网络的有效连通性的估计,它模拟了神经元群之间的因果相互作用。有效连通性的估计包含两种类型的挑战,例如估计精度和计算复杂性。在本文中,我们考虑静息状态(rs) fMRI数据作为随机线性DCM模型的输入。通过期望最大化迭代法对模型参数进行估计。在这项工作中,我们提出了一种替代方案,用于超参数估计,旨在减少原始em算法的计算负担。仿真结果验证了所提出的分块加权方案的可行性,为进一步研究提供了一个有前景的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Estimating Effective Connectivity using Brain Partitioning
One of the main outstanding issues in the neuroscience is estimation of effective connectivity in brain networks, which models the causal interactions among neuronal populations. Estimation of effective connectivity embraces two types of the challenges, such as estimation accuracy and computational complexity. In this paper, we consider resting-state (rs) fMRI data serving as an input for a stochastic linear DCM model. The model parameters are estimated through an EM (expectation maximization) iterative procedure. In this work, we propose the alternative scheme for the hyperparameters estimation aiming in reduction of computational burden of the original EM-algorithm. The simulation results demonstrate the viability of the proposed block-reweighting scheme and represents a promising research direction to be further investigated.
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