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Semi-automated EEG Enhancement Improves Localization of Ictal Onset Zone With EEG-Correlated fMRI

机译:半自动脑电图增强通过与脑电图相关的功能磁共振成像改善局部发作区的定位

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>Objective: To improve the accuracy of detecting the ictal onset zone, we propose to enhance the epilepsy-related activity present in the EEG signals, before mapping their BOLD correlates through EEG-correlated fMRI analysis.>Methods: Based solely on a segmentation of interictal epileptic discharges (IEDs) on the EEG, we train multi-channel Wiener filters (MWF) which enhance IED-like waveforms, and suppress background activity and noisy influences. Subsequently, we use EEG-correlated fMRI to find the brain regions in which the BOLD signal fluctuation corresponds to the filtered signals' time-varying power (after convolving with the hemodynamic response function), and validate the identified regions by quantitatively comparing them to ground-truth maps of the (resected or hypothesized) ictal onset zone. We validate the performance of this novel predictor vs. that of commonly used unitary or power-weighted predictors and a recently introduced connectivity-based metric, on a cohort of 12 patients with refractory epilepsy.>Results: The novel predictor, derived from the filtered EEG signals, allowed the detection of the ictal onset zone in a larger percentage of epileptic patients (92% vs. at most 83% for the other predictors), and with higher statistical significance, compared to existing predictors. At the same time, the new method maintains maximal specificity by not producing false positive activations in healthy controls.>Significance: The findings of this study advocate for the use of the MWF to maximize the signal-to-noise ratio of IED-like events in the interictal EEG, and subsequently use time-varying power as a sensitive predictor of the BOLD signal, to localize the ictal onset zone.
机译:>目的:为了提高检测发作期区域的准确性,我们建议增强EEG信号中存在的癫痫相关活动,然后通过EEG相关的功能磁共振成像分析绘制其BOLD相关性。>方法:仅基于脑电图上发作间期癫痫放电(IED)的分割,我们训练了多通道维纳滤波器(MWF),该滤波器增强了类似于IED的波形,并抑制了背景活动和噪声影响。随后,我们使用脑电图相关的功能磁共振成像来找到脑区域,其中大胆信号波动对应于滤波后信号的时变能力(与血液动力学响应函数卷积后),并通过将其与地面定量比较来验证识别出的区域(切除或假想的)发作期区域的真相图。我们在12例难治性癫痫患者中验证了该新型预测变量与常用的单一或幂加权预测变量以及最近引入的基于连通性的度量指标的性能。>结果:从过滤的EEG信号中得出的预测因子允许在更大比例的癫痫患者中检出发作期区域(92%相比其他预测因子最高为83%),并且与现有预测因子相比具有更高的统计学意义。同时,该新方法通过在健康对照中不产生假阳性激活来维持最大的特异性。>意义:该研究的发现主张使用MWF来最大化信噪比。在发作期脑电图中发现IED样事件的比率,然后使用时变功率作为BOLD信号的敏感预测因子,以定位发作发作区。

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