Biomedical Engineering, UC Irvine, Irvine, California, USA.
Neurology, UCLA, Los Angeles, California, USA.
Epilepsia. 2020 Aug;61(8):1553-1569. doi: 10.1111/epi.16622. Epub 2020 Jul 30.
High-frequency oscillations (HFOs) in intracranial electroencephalography (EEG) are a promising biomarker of the epileptogenic zone and tool for surgical planning. Many studies have shown that a high rate of HFOs (number per minute) is correlated with the seizure-onset zone, and complete removal of HFO-generating brain regions has been associated with seizure-free outcome after surgery. In order to use HFOs as a biomarker, these transient events must first be detected in electrophysiological data. Because visual detection of HFOs is time-consuming and subject to low interrater reliability, many automated algorithms have been developed, and they are being used increasingly for such studies. However, there is little guidance on how to select an algorithm, implement it in a clinical setting, and validate the performance. Therefore, we aim to review automated HFO detection algorithms, focusing on conceptual similarities and differences between them. We summarize the standard steps for data pre-processing, as well as post-processing strategies for rejection of false-positive detections. We also detail four methods for algorithm testing and validation, and we describe the specific goal achieved by each one. We briefly review direct comparisons of automated algorithms applied to the same data set, emphasizing the importance of optimizing detection parameters. Then, to assess trends in the use of automated algorithms and their potential for use in clinical studies, we review evidence for the relationship between automatically detected HFOs and surgical outcome. We conclude with practical recommendations and propose standards for the selection, implementation, and validation of automated HFO-detection algorithms.
颅内脑电图(EEG)中的高频振荡(HFOs)是致痫区的有前途的生物标志物,也是手术计划的工具。许多研究表明,HFOs 的高发生率(每分钟的数量)与发作起始区相关,并且 HFO 产生的脑区的完全切除与手术后无癫痫发作的结果相关。为了将 HFOs 用作生物标志物,必须首先在电生理数据中检测到这些瞬态事件。由于 HFO 的视觉检测既耗时又受低评分者间可靠性的影响,因此已经开发出许多自动化算法,并且越来越多地将它们用于此类研究。但是,关于如何选择算法、在临床环境中实施以及验证性能的指导很少。因此,我们旨在回顾自动化 HFO 检测算法,重点关注它们之间的概念相似性和差异。我们总结了数据预处理的标准步骤,以及用于拒绝假阳性检测的后处理策略。我们还详细描述了算法测试和验证的四种方法,并描述了每种方法所达到的具体目标。我们简要回顾了应用于同一数据集的自动化算法的直接比较,强调了优化检测参数的重要性。然后,为了评估自动化算法的使用趋势及其在临床研究中的潜在用途,我们回顾了自动检测到的 HFO 与手术结果之间的关系的证据。最后,我们提出了实际建议,并提出了用于选择、实施和验证自动化 HFO 检测算法的标准。