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Multimodal Functional Imaging Using fMRI-Informed Regional EEG/MEG Source Estimation

机译:使用fMRI通知的区域EEG / MEG源估计进行多峰功能成像

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We propose a novel method, fMRI-Informed Regional Estimation (FIRE), which utilizes information from fMRI in E/MEG source reconstruction. FIRE takes advantage of the spatial alignment between the neural and the vascular activities, while allowing for substantial differences in their dynamics. Furthermore, with the regional approach, FIRE can be efficiently applied to a dense grid of sources. Inspection of our optimization procedure reveals that FIRE is related to the re-weighted minimum-norm algorithms, the difference being that the weights in the proposed approach are computed from both the current estimates and fMRI data. Analysis of both simulated and human fMRI-MEG data shows that FIRE reduces the ambiguities in source localization present in the minimum-norm estimates. Comparisons with several joint fMRI-E/MEG algorithms demonstrate robustness of FIRE in the presence of sources silent to either fMRI or E/MEG measurements.
机译:我们提出了一种新的方法,fMRI信息区域估计(FIRE),该方法在e / MEG源重构中利用了来自fMRI的信息。 FIRE利用了神经活动和血管活动之间的空间对齐方式,同时允许其动力学上的实质性差异。此外,通过区域方法,可以将FIRE有效地应用于密集的源网格。对我们优化程序的检查表明,FIRE与重新加权的最小范数算法有关,不同之处在于,所提出方法中的权重是根据当前估计值和fMRI数据计算得出的。对模拟fMRI-MEG和人类fMRI-MEG数据的分析表明,FIRE减少了最小范数估计中存在的源定位中的歧义。与几种联合fMRI-E / MEG算法的比较表明,在存在对fMRI或E / MEG测量无声的信号源的情况下,FIRE的鲁棒性。

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