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A hybrid algorithm for solving the EEG inverse problem from spatio-temporal EEG data.

机译:从时空脑电数据解决脑电逆问题的混合算法。

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摘要

Epilepsy is a neurological disorder caused by intense electrical activity in the brain. The electrical activity, which can be modelled through the superposition of several electrical dipoles, can be determined in a non-invasive way by analysing the electro-encephalogram. This source localization requires the solution of an inverse problem. Locally convergent optimization algorithms may be trapped in local solutions and when using global optimization techniques, the computational effort can become expensive. Fast recovery of the electrical sources becomes difficult that way. Therefore, there is a need to solve the inverse problem in an accurate and fast way. This paper performs the localization of multiple dipoles using a global-local hybrid algorithm. Global convergence is guaranteed by using space mapping techniques and independent component analysis in a computationally efficient way. The accuracy is locally obtained by using the Recursively Applied and Projected-MUltiple Signal Classification (RAP-MUSIC) algorithm. When using this hybrid algorithm, a four times faster solution is obtained.
机译:癫痫病是由大脑中强烈的电活动引起的神经系统疾病。可以通过叠加几个电偶极子来建模的电活动可以通过分析脑电图以无创方式确定。这种源定位需要解决反问题。局部收敛的优化算法可能会陷入局部解决方案中,并且当使用全局优化技术时,计算工作可能会变得昂贵。这样快速恢复电源变得困难。因此,需要以准确而快速的方式解决反问题。本文使用全局-局部混合算法对多个偶极子进行定位。通过使用空间映射技术和以计算有效的方式进行独立的组件分析,可以确保全局收敛。通过使用递归应用和投影多信号分类(RAP-MUSIC)算法可局部获得精度。使用此混合算法时,可获得四倍的解决方案。

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