Elasticnetisdr to Reconstruct Both Sparse Brain Activity and Effective Connectivity

Brahim Belaoucha, T. Papadopoulo
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Abstract

Electroencephalography (EEG) distributed source reconstruction methods can be improved by using spatio-temporal constraints. Few methods use structural connectivity (SC), obtained from diffusion MRI, to constrain the EEG source space. In this work, we present a source reconstruction algorithm that uses SC and constrains the source dynamics by a multivariate autoregressive model (MAR) to estimate both the effective connectivity (EC) between brain regions and their activation. To obtain an asymmetric EC, we add a sparse prior to the MAR model. We call this algorithm Elasticnet iterative Source and Dynamics reconstruction (eiSDR). This paper presents our approach and how the proposed model can obtain both brain activation and interactions. Its accuracy is demonstrated using synthetic data and tested with real data for a face recognition task. The results are in phase with other works that used the same data showing that the choice of using a MAR model and some priors on it give relevant results.
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弹性网络重建稀疏脑活动和有效连接
利用时空约束对脑电图分布式源重构方法进行了改进。很少有方法利用弥散性MRI获得的结构连通性来约束脑电源空间。在这项工作中,我们提出了一种使用SC并通过多元自回归模型(MAR)约束源动态的源重建算法,以估计大脑区域之间的有效连通性(EC)及其激活。为了得到一个不对称EC,我们在MAR模型之前添加了一个稀疏。我们将此算法称为Elasticnet迭代源与动态重构(eiSDR)。本文介绍了我们的方法以及所提出的模型如何获得大脑激活和相互作用。利用合成数据验证了该方法的准确性,并用人脸识别任务的真实数据进行了测试。该结果与其他使用相同数据的工作相一致,表明使用MAR模型的选择和对其的一些先验给出了相关的结果。
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