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Source Reconstruction Accuracy of MEG and EEG Bayesian Inversion Approaches

机译:MEG和EEG贝叶斯反演方法的源重构精度

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摘要

Electro- and magnetoencephalography allow for non-invasive investigation of human brain activation and corresponding networks with high temporal resolution. Still, no correct network detection is possible without reliable source localization. In this paper, we examine four different source localization schemes under a common Variational Bayesian framework. A Bayesian approach to the Minimum Norm Model (MNM), an Empirical Bayesian Beamformer (EBB) and two iterative Bayesian schemes (Automatic Relevance Determination (ARD) and Greedy Search (GS)) are quantitatively compared. While EBB and MNM each use a single empirical prior, ARD and GS employ a library of anatomical priors that define possible source configurations. The localization performance was investigated as a function of (i) the number of sources (one vs. two vs. three), (ii) the signal to noise ratio (SNR; 5 levels) and (iii) the temporal correlation of source time courses (for the cases of two or three sources). We also tested whether the use of additional bilateral priors specifying source covariance for ARD and GS algorithms improved performance. Our results show that MNM proves effective only with single source configurations. EBB shows a spatial accuracy of few millimeters with high SNRs and low correlation between sources. In contrast, ARD and GS are more robust to noise and less affected by temporal correlations between sources. However, the spatial accuracy of ARD and GS is generally limited to the order of one centimeter. We found that the use of correlated covariance priors made no difference to ARD/GS performance.
机译:脑电图和脑磁图法可用于非侵入性地研究人脑激活以及具有高时间分辨率的相应网络。但是,如果没有可靠的源定位,就无法进行正确的网络检测。在本文中,我们在共同的变分贝叶斯框架下研究了四种不同的源定位方案。定量比较了最小范数模型(MNM)的贝叶斯方法,经验贝叶斯波束形成器(EBB)和两个迭代贝叶斯方案(自动相关性确定(ARD)和贪婪搜索(GS))。 EBB和MNM都使用单个经验先验,而ARD和GS使用解剖先验库来定义可能的源配置。研究了本地化性能与以下功能的关系:(i)信号源数量(一个vs.两个vs.三个),(ii)信噪比(SNR; 5级)和(iii)信号源时间的时间相关性课程(针对两个或三个来源的课程)。我们还测试了使用附加的双边先验为ARD和GS算法指定源协方差是否改善了性能。我们的结果表明,MNM仅在单源配置下证明有效。 EBB显示出几毫米的空间精度,并且具有高SNR和源之间的低相关性。相反,ARD和GS对噪声更鲁棒,受源之间时间相关性的影响较小。但是,ARD和GS的空间精度通常限于一厘米的数量级。我们发现,使用相关协方差先验对ARD / GS性能没有影响。

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