College of Information Science and Electronic Engineering, Zhejiang University, Hangzhou, 310027, China.
School of Medicine, Second Affiliated Hospital, Zhejiang University, Hangzhou, 310009, China.
Neurosci Bull. 2021 Jun;37(6):777-788. doi: 10.1007/s12264-021-00659-y. Epub 2021 Mar 25.
As an important promising biomarker, high frequency oscillations (HFOs) can be used to track epileptic activity and localize epileptogenic zones. However, visual marking of HFOs from a large amount of intracranial electroencephalogram (iEEG) data requires a great deal of time and effort from researchers, and is also very dependent on visual features and easily influenced by subjective factors. Therefore, we proposed an automatic epileptic HFO detection method based on visual features and non-intuitive multi-domain features. To eliminate the interference of continuous oscillatory activity in detected sporadic short HFO events, the iEEG signals adjacent to the detected events were set as the neighboring environmental range while the number of oscillations and the peak-valley differences were calculated as the environmental reference features. The proposed method was developed as a MatLab-based HFO detector to automatically detect HFOs in multi-channel, long-distance iEEG signals. The performance of our detector was evaluated on iEEG recordings from epileptic mice and patients with intractable epilepsy. More than 90% of the HFO events detected by this method were confirmed by experts, while the average missed-detection rate was < 10%. Compared with recent related research, the proposed method achieved a synchronous improvement of sensitivity and specificity, and a balance between low false-alarm rate and high detection rate. Detection results demonstrated that the proposed method performs well in sensitivity, specificity, and precision. As an auxiliary tool, our detector can greatly improve the efficiency of clinical experts in inspecting HFO events during the diagnosis and treatment of epilepsy.
作为一种有前途的重要生物标志物,高频振荡(HFOs)可用于跟踪癫痫活动并定位致痫区。然而,从大量颅内脑电图(iEEG)数据中手动标记 HFO 需要研究人员付出大量的时间和精力,并且非常依赖于视觉特征,容易受到主观因素的影响。因此,我们提出了一种基于视觉特征和非直观多域特征的自动癫痫 HFO 检测方法。为了消除检测到的偶发性短 HFO 事件中连续振荡活动的干扰,将检测到的事件相邻的 iEEG 信号设置为相邻的环境范围,同时计算振荡次数和峰谷差值作为环境参考特征。该方法是作为一个基于 MatLab 的 HFO 检测器开发的,用于自动检测多通道、远距离 iEEG 信号中的 HFO。我们的检测器在癫痫小鼠和耐药性癫痫患者的 iEEG 记录上进行了性能评估。该方法检测到的 HFO 事件中,有 90%以上得到了专家的确认,而平均漏检率<10%。与最近的相关研究相比,该方法在灵敏度、特异性和精度方面均取得了同步提高,实现了低误报率和高检测率之间的平衡。检测结果表明,该方法在灵敏度、特异性和精确性方面表现良好。作为一种辅助工具,我们的检测器可以大大提高临床专家在癫痫诊断和治疗过程中检查 HFO 事件的效率。