Department of Biomedical Engineering, University of North Texas, Texas, USA.
Department of Neurology, University of California Los Angeles, Los Angeles, California, USA.
Epilepsia Open. 2022 Dec;7(4):674-686. doi: 10.1002/epi4.12647. Epub 2022 Sep 14.
Aiming to improve the feasibility and reliability of using high-frequency oscillations (HFOs) for translational studies of epilepsy, we present a pipeline with features specifically designed to reject false positives for HFOs to improve the automatic HFO detector.
We presented an integrated, multi-layered procedure capable of automatically rejecting HFOs from a variety of common false positives, such as motion, background signals, and sharp transients. This method utilizes a time-frequency contour approach that embeds three different layers including peak constraints, power thresholds, and morphological identification to discard false positives. Four experts were involved in rating detected HFO events that were randomly selected from different posttraumatic epilepsy (PTE) animals for a comprehensive evaluation.
The algorithm was run on 768-h recordings of intracranial electrodes in 48 PTE animals. A total of 453 917 HFOs were identified by initial HFO detection, of which 450 917 were implemented for HFO refinement and 203 531 events were retained. Random sampling was used to evaluate the performance of the detector. The HFO detection yielded an overall accuracy of , with precision, recall, and F1 scores of , , and , respectively. For the HFO classification, our algorithm obtained an accuracy of . For the inter-rater reliability of algorithm evaluation, the agreement among four experts was for HFO detection and for HFO classification.
Our approach shows that a segregated pipeline design with a focus on false-positive rejection can improve the detection efficiency and provide reliable results. This pipeline does not require customization and uses fixed parameters, making it highly feasible and translatable for basic and clinical applications of epilepsy.
为提高高频振荡(HFOs)在癫痫转化研究中应用的可行性和可靠性,我们提出了一个具有专门设计特征的流水线,旨在拒绝 HFO 的假阳性以改进自动 HFO 检测器。
我们提出了一种集成的、多层次的程序,能够自动拒绝各种常见假阳性的 HFO,如运动、背景信号和锐变瞬态。该方法利用时频轮廓方法,嵌入三个不同的层,包括峰值限制、功率阈值和形态识别,以剔除假阳性。四名专家参与了对随机选自不同创伤后癫痫(PTE)动物的检测到的 HFO 事件的评分,以进行全面评估。
该算法在 48 只 PTE 动物的颅内电极 768 小时记录上运行。通过初始 HFO 检测共识别到 453917 个 HFO,其中 450917 个用于 HFO 细化,保留了 203531 个事件。随机抽样用于评估检测器的性能。HFO 检测的总体准确率为 ,精度、召回率和 F1 分数分别为 、 、 。对于 HFO 分类,我们的算法获得了 的准确率。对于算法评估的四位专家间的组内一致性,HFO 检测的一致性为 ,HFO 分类的一致性为 。
我们的方法表明,具有假阳性拒绝功能的分离流水线设计可以提高检测效率并提供可靠的结果。该流水线不需要定制,使用固定参数,非常适合癫痫的基础和临床应用。