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Estimating underlying neuronal activity from EEG using an iterative sparse technique

机译:使用迭代稀疏技术从EEG估计潜在的神经元活动

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In this paper a novel technique for solving the bio-electromagnetic inverse problem is proposed. This method provides information about the location and extent of underlying neuronal activity. This is essential for the presurgical planning for partial epilepsy patients who are resistant to anti-epileptic drugs. The proposed algorithm takes advantage of the fact that neuronal activity transparent to EEG, arises from a spatially extended brain region. This spatial coherence is modeled within the framework of sparse signal processing techniques and makes better use of the limited number of EEG recordings. An iterative data-driven weighting is also introduced to better the extent estimation as well as eliminating the need to threshold estimated solutions.
机译:本文提出了一种解决生物电磁逆问题的新技术。此方法提供有关基础神经元活动的位置和程度的信息。这对于对抗癫痫药有抵抗力的部分癫痫患者的术前计划至关重要。所提出的算法利用了以下事实:对脑电图透明的神经元活动来自空间扩展的大脑区域。这种空间相干性是在稀疏信号处理技术的框架内建模的,可以更好地利用有限数量的EEG记录。还引入了迭代数据驱动的加权,以更好地进行范围估计,并消除了对估计的解决方案进行阈值化的需求。

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