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Evaluations of Sparse Source Imaging and Minimum Norm Estimate Methods in both Simulation and Clinical MEG Data*

机译:两种仿真和临床MEG数据中稀疏源成像和最小规范估计方法的评估*

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The aim of the present study is to evaluate the capability of a recently proposed l1-norm based regularization method, named as variation-based sparse cortical current density (VB-SCCD) algorithm, in estimating location and spatial coverage of extensive brain sources. Its performance was compared to the conventional minimum norm estimate (MNE) using both simulations and clinical interictal spike MEG data from epilepsy patients. Four metrics were adopted to evaluate two regularization methods for EEG/MEG inverse problems from different aspects in simulation study. Both methods were further compared in reconstructing epileptic sources and validated using results from clinical diagnosis. Both simulation and experimental results suggest VB-SCCD has better performance in localization and estimation of source extents, as well as less spurious sources than MNE, which makes it a promising noninvasive tool to assist presurgical evaluation for surgical treatment in epilepsy patients.
机译:本研究的目的是评估最近提出的L1-NARM总规范化方法,以基于变化的稀疏皮质电流密度(VB-SCCD)算法,估计广泛脑源的位置和空间覆盖范围。将其性能与来自癫痫患者的模拟和临床嵌入刺激性MEG数据进行了比较的常规最小常态估计(MNE)。采用四项指标来评估两种正规化方法,用于仿真研究中不同方面的EEG / MEG逆问题。在重建癫痫源并使用临床诊断结果进行验证,进一步比较了两种方法。仿真和实验结果都提出了VB-SCCD在源区的本地化和估算中具有更好的性能,以及比MNE的估算较少,这使其成为有前途的非侵入性工具,可以帮助癫痫患者的外科治疗前的预设评估。

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