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Hierarchical Bayesian Inference of Brain Activity

机译:脑活动的分层贝叶斯推理

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摘要

Magnctoencephalography (MEG) can measure brain activity with millisecond-order temporal resolution, but its spatial resolution is poor, due to the ill-posed nature of the inverse problem, for estimating source currents from the electromagnetic measurement. Therefore, prior information on the source currents is essential to solve the inverse problem. We have proposed a new hierarchical Bayesian method to combine several sources of information. In our method, the variance of the source current at each source location is considered an unknown parameter and estimated from the observed MEG data and prior information by using variational Bayes method. The fMRI information can be imposed as prior distribution rather than the variance itself so that it gives a soft constraint on the variance. It is shown that the hierarchical Bayesian method has better accuracy and spatial resolution than conventional linear inverse methods by evaluating the resolution curve. The proposed method also demonstrated good spatial and temporal resolution for estimating current activity in early visual area evoked by a stimulus in a quadrant of the visual field.
机译:磁脑电图(MEG)可以以毫秒级的时间分辨率来测量大脑活动,但是由于反问题的不适定性质,其空间分辨率很差,无法通过电磁测量来估计源电流。因此,关于源电流的先验信息对于解决反问题是必不可少的。我们提出了一种新的分层贝叶斯方法来组合多种信息源。在我们的方法中,每个源位置的源电流方差被认为是未知参数,并使用变分贝叶斯方法根据观测到的MEG数据和先验信息进行估算。可以将fMRI信息作为先验分布而不是方差本身,以便对方差给出软约束。通过评估分辨率曲线,表明分层贝叶斯方法具有比常规线性逆方法更好的精度和空间分辨率。所提出的方法还证明了良好的时空分辨率,用于估计视野中象限刺激引起的早期视觉区域中的当前活动。

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