IEEE Trans Neural Syst Rehabil Eng. 2021;29:587-596. doi: 10.1109/TNSRE.2021.3056685. Epub 2021 Mar 8.
Successful epilepsy surgeries depend highly on pre-operative localization of epileptogenic zones. Stereoelectroencephalography (SEEG) records interictal and ictal activities of the epilepsy in order to precisely find and localize epileptogenic zones in clinical practice. While it is difficult to find distinct ictal onset patterns generated the seizure onset zone from SEEG recordings in a confined region, high frequency oscillations are commonly considered as putative biomarkers for the identification of epileptogenic zones. Therefore, automatic and accurate detection of high frequency oscillations in SEEG signals is crucial for timely clinical evaluation. This work formulates the detection of high frequency oscillations as a signal segment classification problem and develops a hypergraph-based detector to automatically detect high frequency oscillations such that human experts can visually review SEEG signals. We evaluated our method on 4,000 signal segments from clinical SEEG recordings that contain both ictal and interictal data obtained from 19 patients who suffer from refractory focal epilepsy. The experimental results demonstrate the effectiveness of the proposed detector that can successfully localize interictal high frequency oscillations and outperforms multiple peer machine learning methods. In particular, the proposed detector achieved 90.7% in accuracy, 80.9% in sensitivity, and 96.9% in specificity.
癫痫手术的成功高度依赖于术前致痫区的定位。立体脑电图(SEEG)记录癫痫的发作间期和发作期活动,以便在临床实践中准确地找到并定位致痫区。虽然在一个受限区域内从 SEEG 记录中找到引起癫痫发作的起始模式很困难,但高频振荡通常被认为是识别致痫区的潜在生物标志物。因此,自动且准确地检测 SEEG 信号中的高频振荡对于及时的临床评估至关重要。这项工作将高频振荡的检测表述为信号段分类问题,并开发了基于超图的检测器,以自动检测高频振荡,以便人类专家可以直观地审查 SEEG 信号。我们在 4000 个来自临床 SEEG 记录的信号段上评估了我们的方法,这些信号段包含了来自 19 名患有难治性局灶性癫痫的患者的发作期和发作间期数据。实验结果表明,所提出的检测器能够成功定位发作间期高频振荡,并且优于多种机器学习方法。特别是,所提出的检测器的准确率达到 90.7%,灵敏度达到 80.9%,特异性达到 96.9%。