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High-resolution EEG source imaging of one-year-old children

机译:一岁儿童的高分辨率脑电图源成像

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Recently we described an iterative skull conductivity and source location estimation (SCALE) algorithm for simultaneously estimating head tissue conductivities and brain source locations. SCALE uses a realistic FEM forward problem head model and scalp maps of 10 or more near-dipolar sources identified by independent component analysis (ICA) decomposition of sufficient high-density EEG data. In this study, we applied SCALE to 20 minutes of 64-channel EEG data and magnetic resonance (MR) head images from four twelve-months-of-age infants. For each child, we selected 15-16 near-dipolar independent components from multiple-model adaptive mixture ICA (AMICA) decomposition of their EEG data. SCALE converged to brain-to-skull conductivity ratio (BSCR) estimates in the 10-12 range and mostly compact gyral or sulcal cortical distributions for the IC sources.
机译:最近,我们描述了用于同时估计头部组织电导率和脑源位置的迭代颅骨电导率和源位置估计(SCALE)算法。 SCALE使用现实的FEM正向问题头部模型和10个或更多近偶极子源的头皮图,这些源由足够的高密度EEG数据的独立成分分析(ICA)分解确定。在这项研究中,我们将SCALE应用于来自四个12个月大婴儿的20分钟的64通道EEG数据和磁共振(MR)头部图像。对于每个孩子,我们从他们的EEG数据的多模型自适应混合ICA(AMICA)分解中选择了15-16个接近偶极的独立分量。 SCALE收敛于10-12范围内的脑-颅电导率比(BSCR)估计值,并且对于IC源来说,大多数为紧凑的回旋或龈皮质分布。

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