MEG成像的ICA方法。

J E Moran, C L Drake, N Tepley
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引用次数: 0

摘要

当MEG数据是多个皮质源的复杂空间模式序列时,单个皮质源的活动不能被唯一地成像。需要将辅助约束集成到成像方程中以消除数学模糊性。因此,将源分离技术应用于MEG成像具有重要意义。对孤立的脑电源的场模式进行精确成像要容易得多。我们演示了如何结合二阶和四阶独立分量分析(ICA)方法来去除噪声和隔离源活动,以提高MEG成像精度。二阶ICA技术利用皮层源和伪影之间随时间的互相关差异提取呼吸和眼动伪影。对于脑电源分离,采用量化源同时活动概率的四阶ICA技术分离以振荡回路活动爆发为特征的脑电源。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ICA methods for MEG imaging.

Activity of individual cortical sources cannot be uniquely imaged when MEG data is a sequence of complex spatial patterns of multiple cortical sources. Auxiliary constraints integrated into the imaging equations are required to remove the mathematical ambiguity. Therefore, it is important to adapt source separation techniques to MEG imaging. It is much easier to accurately image field patterns of isolated brain electric sources. We demonstrate how a combination of second and fourth order Independent Component Analysis (ICA) methods can be used to remove noise and isolate source activity for improved MEG imaging accuracy. A second order ICA technique was used to extract respiratory and eye movement artifact by exploiting cross-correlation differences over time between cortical sources and artifact. For brain electric source separation, a fourth order ICA technique that quantified probabilities of simultaneous source activity was used to separate brain electric sources characterized by bursts of oscillatory circuit activity.

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