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Estimation of dynamic neural activity including informative priors into a Kalman filter based approach

机译:基于卡尔曼滤波器的动态神经活动的动态神经活动估计

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The EEG recordings contain dynamic information inherent to its nature, therefore, the accurate estimation of neural activity is highly dependent on the inclusion of such information in the inverse problem solution. The present study proposes the inclusion of informative priors into a Kalman filter based solution, aimed to include the different dynamics present on the data. This is achieved by decomposing a space-time-frequency, here after s-f-t, representation of the data to extract different dynamics contained in the EEG signals. Attained results using physiological-based simulations, show that including more informative s-f-t priors along with a temporal-based solution, the reconstruction of neural activity can be improved, in the present study, we achieved an average localization error of 4 mm, compared to 47 mm using the baseline approach.
机译:EEG录制包含其性质固有的动态信息,因此,神经活动的准确估计高度依赖于在逆问题解决方案中包含此类信息。本研究提出将信息前瞻纳入基于卡尔曼滤波器的解决方案,旨在包括数据上存在的不同动态。这是通过分解空时频率的实现,这里在S-F-T之后,表示数据的表示,以提取包含在EEG信号中的不同动态。使用基于生理学模拟的结果,表明包括更多信息性的SFT引脚以及基于时间的解决方案,可以改善神经活动的重建,在本研究中,我们实现了4毫米的平均分子化误差,而47相比47 mm使用基线方法。

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