首页> 外文会议>2012 Second International Workshop on Pattern Recognition in NeuroImaging >ICA Component Selection Based on Sparse Activelet Reconstruction for fMRI Analysis in Refractory Focal Epilepsy
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ICA Component Selection Based on Sparse Activelet Reconstruction for fMRI Analysis in Refractory Focal Epilepsy

机译:基于稀疏Activelet重构的ICA成分选择用于难治性局灶性癫痫的fMRI分析

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EEG-fMRI is a recently emerging tool that can be used in the presurgical evaluation of focal epilepsy patients. Standard analysis techniques rely on the principle that fMRI can provide accurate localization of hemodynamic changes corresponding to events observed on EEG. However, its applicability is limited as EEG does not always provide sufficient and reliable information on the timing of the epileptic activity. Therefore, there is an increasing demand for techniques capable of localizing the epileptic activity based solely on the fMRI time series. Independent component analysis (ICA) has been shown to separate epileptic activity in the fMRI from other neural sources, artifacts and noise. We propose here to automatically detect the epileptic component based on sparse reconstruction in the activelet basis. The algorithm was evaluated on a dataset of 10 patients. It is shown that the largest activation cluster of the identified component overlapped with the ictal onset zone (IOZ) in all 3 patients with sparse interictal spike timing. In the 7 other patients, the selected component either overlapped with the IOZ and/or the ictal hyperperfusion, or correlated with the EEG-derived time course of the interictal activity. We conclude that the proposed technique might be able to identify epileptic components without using EEG.
机译:EEG-fMRI是一种新兴的工具,可用于局灶性癫痫患者的术前评估。标准分析技术基于以下原理:fMRI可以准确定位与脑电图上观察到的事件相对应的血液动力学变化。但是,它的适用性受到限制,因为EEG不能始终提供有关癫痫发作时间的充分而可靠的信息。因此,对能够仅基于fMRI时间序列来定位癫痫活动的技术的需求日益增长。已显示独立成分分析(ICA)可以将fMRI中的癫痫活动与其他神经源,伪影和噪声分开。我们建议在此基于Activelet的稀疏重建来自动检测癫痫成分。该算法在10位患者的数据集上进行了评估。结果表明,在所有3例稀疏的发作期患者中,所识别成分的最大激活簇与发作发作区(IOZ)重叠。在其他7名患者中,所选成分与IOZ和/或发作过度灌注重叠,或与EEG引起的发作间隔时间过程相关。我们得出的结论是,所提出的技术可能能够在不使用EEG的情况下识别癫痫成分。

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