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首页> 外文期刊>Brain topography >Incorporating FMRI functional networks in EEG source imaging: a Bayesian model comparison approach.
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Incorporating FMRI functional networks in EEG source imaging: a Bayesian model comparison approach.

机译:将FMRI功能网络整合到EEG源成像中:贝叶斯模型比较方法。

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摘要

Brain functional networks extracted from fMRI can improve the accuracy of EEG source localization. However, the coupling between EEG and fMRI remains poorly understood, i.e., whether fMRI networks provide information about the magnitude of neural activity, and whether neural sources demonstrate temporal correlations within each network. In this paper, we present an improved version of the NEtwork-based SOurce Imaging method (iNESOI) through Bayesian model comparison. Different models correspond to various matching between EEG and fMRI, and the appropriate one is selected by data with the model evidence. Synthetic and real data tests show that iNESOI has potential to select the appropriate fMRI priors to reach a better source reconstruction than some other typical approaches.
机译:从功能磁共振成像中提取的脑功能网络可以提高脑电信号源定位的准确性。但是,脑电图和功能磁共振成像之间的耦合仍然知之甚少,即功能磁共振成像网络是否提供有关神经活动强度的信息,以及神经源是否在每个网络中都显示出时间相关性。在本文中,我们通过贝叶斯模型比较提出了一种基于NEtwork的SOurce成像方法(iNESOI)的改进版本。不同的模型对应于脑电图和功能磁共振成像之间的各种匹配,并通过具有模型证据的数据选择合适的模型。综合和真实数据测试表明,iNESOI有潜力选择合适的功能磁共振成像先验,以实现比其他一些典型方法更好的源重建。

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