1 School of Life and Health Sciences, Aston Brain Centre, Aston University, Birmingham, B4 7ET, UK.
2 Centro per la Chirurgia dell'Epilessia "Claudio Munari", Ospedale Ca' Granda-Niguarda, 20162 Milan, Italy.
Int J Neural Syst. 2018 Sep;28(7):1850001. doi: 10.1142/S0129065718500016. Epub 2018 Jan 15.
Pathological High-Frequency Oscillations (HFOs) have been recently proposed as potential biomarker of the seizure onset zone (SOZ) and have shown superior accuracy to interictal epileptiform discharges in delineating its anatomical boundaries. Characterization of HFOs is still in its infancy and this is reflected in the heterogeneity of analysis and reporting methods across studies and in clinical practice. The clinical approach to HFOs identification and quantification usually still relies on visual inspection of EEG data. In this study, we developed a pipeline for the detection and analysis of HFOs. This includes preliminary selection of the most informative channels exploiting statistical properties of the pre-ictal and ictal intracranial EEG (iEEG) time series based on spectral kurtosis, followed by wavelet-based characterization of the time-frequency properties of the signal. We performed a preliminary validation analyzing EEG data in the ripple frequency band (80-250 Hz) from six patients with drug-resistant epilepsy who underwent pre-surgical evaluation with stereo-EEG (SEEG) followed by surgical resection of pathologic brain areas, who had at least two-year positive post-surgical outcome. In this series, kurtosis-driven selection and wavelet-based detection of HFOs had average sensitivity of 81.94% and average specificity of 96.03% in identifying the HFO area which overlapped with the SOZ as defined by clinical presurgical workup. Furthermore, the kurtosis-based channel selection resulted in an average reduction in computational time of 66.60%.
病理性高频振荡(HFOs)最近被提出作为致痫区(SOZ)的潜在生物标志物,在描绘其解剖边界方面,其准确性优于发作间期癫痫样放电。HFOs 的特征描述仍处于起步阶段,这反映在研究和临床实践中分析和报告方法的异质性上。HFOs 的识别和量化的临床方法通常仍然依赖于对 EEG 数据的视觉检查。在这项研究中,我们开发了一种用于检测和分析 HFOs 的管道。这包括利用基于频谱峭度的预发作和发作期颅内 EEG(iEEG)时间序列的统计特性,对最具信息量的通道进行初步选择,然后对信号的时频特性进行基于小波的特征描述。我们对六名药物难治性癫痫患者的 EEG 数据进行了初步验证,这些患者在接受立体脑电图(SEEG)术前评估后,进行了病理性脑区的手术切除,术后至少有两年的积极结果。在该系列中,基于峭度的选择和基于小波的 HFOs 检测在识别与临床术前评估定义的 SOZ 重叠的 HFO 区域方面的平均灵敏度为 81.94%,平均特异性为 96.03%。此外,基于峭度的通道选择平均减少了 66.60%的计算时间。