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Electrocortical source imaging of intracranial EEG data in epilepsy

机译:癫痫患者的颅内EEG数据的脑电皮质成像

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Here we report first results of numerical methods for modeling the dynamic structure and evolution of epileptic seizure activity in an intracranial subdural electrode recording from a patient with partial refractory epilepsy. A 16-min dataset containing two seizures was decomposed using up to five competing adaptive mixture independent component analysis (AMICA) models. Multiple models modeled early or late ictal, or pre- or post-ictal periods in the data, respectively. To localize sources, a realistic Boundary Element Method (BEM) head model was constructed for the patient with custom open skull and plastic (non-conductive) electrode holder features. Source localization was performed using Sparse Bayesian Learning (SBL) on a dictionary of overlapping multi-scale cortical patches constructed from 80,130 dipoles in gray matter perpendicular to the cortical surface. Remaining mutual information among seizure-model AMICA components was dominated by two dependent component subspaces with largely contiguous source domains localized to superior frontal gyrus and precen-tral gyrus; these accounted for most of the ictal activity. Similar though much weaker dependent subspaces were also revealed in pre-ictal data by the associated AMICA model. Electrocortical source imaging appears promising both for clinical epilepsy research and for basic cognitive neuroscience research using volunteer patients who must undergo invasive monitoring for medical purposes.
机译:在这里,我们报告数值方法的第一个结果,该方法用于对部分难治性癫痫患者的颅内硬膜下电极记录的癫痫发作活动的动态结构和演变进行建模。使用多达五个竞争性自适应混合物独立成分分析(AMICA)模型分解了包含两次癫痫发作的16分钟数据集。多个模型分别对数据中的早期或晚期发作或发作前或发作后阶段建模。为了对源进行定位,针对具有定制的开放式颅骨和塑料(非导电)电极固定器功能的患者构建了逼真的边界元方法(BEM)头部模型。使用稀疏贝叶斯学习(SBL)在重叠的多尺度皮质斑块字典上执行源定位,该字典由垂直于皮质表面的80,130偶极子在灰质中构造而成。癫痫发作模型AMICA组件之间剩余的相互信息由两个从属组件子空间控制,两个子组件子空间具有大量连续的源域,这些源域位于上额额回和前额回。这些占了大多数发作的活动。类似的,尽管弱得多的依存子空间也被关联的AMICA模型在pre-tal数据中揭示出来。对于使用癫痫病患者必须进行侵入性监测以进行医学目的的临床癫痫研究和基础认知神经科学研究,电皮质源成像似乎很有希望。

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