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Source Localization of Subtopographies Decomposed by Radial Basis Functions

机译:按径向基函数分解的细纹的源定位

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Functional neuroimaging methods give the opportunity of investigating human brain functioning. Mostly used functional neuroimaging techniques include Electroencephalogram (EEG), functional magnetic resonance imaging (fMRI), positron emission tomography (PET) and optical imaging. Among these techniques EEG has the best time resolution, while fMRI has the best spatial resolution. High temporal resolution of EEG is an attractive property for neuroimaging studies. EEG inverse problem is needed to be solved in order to identify the locations and the strength of the electrical sources forming EEG/ERP topographies. Low spatial resolution of the scalp topography causes this localization problem more complicated. In this paper, a spatial preprocessing method, which separates a topography into two or more subtopographies is proposed. The decomposition procedure is based on defining a spatial map with radial basis functions which forms the subtopographies. A simulated data is used to exhibit the advantage of using this decomposition technique prior to EEG source localization. It is shown that the accuracy of the source localization problem is improved by using the subtopographies instead of using the raw topography.
机译:功能性神经模化方法赋予研究人脑功能的机会。主要使用的功能神经影像学技术包括脑电图(EEG),功能磁共振成像(FMRI),正电子发射断层扫描(PET)和光学成像。在这些技术中,EEG具有最佳的时间分辨率,而FMRI具有最佳的空间分辨率。 EEG的高颞分辨率是神经影像学研究的有吸引力的性质。需要解决EEG逆问题,以便识别形成EEG / ERP地形的电源的位置和电源的强度。 SPARP地形的低空间分辨率导致该本地化问题更加复杂。在本文中,提出了一种空间预处理方法,其将地形分离成两个或多个对图中的。分解过程基于用径向基函数定义空间图,该径向基本函数形成对象。模拟数据用于表现出在EEG源定位之前使用该分解技术的优点。结果表明,通过使用对图表而不是使用原始地形来改善源定位问题的准确性。

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