Faculty of Psychology, University of Akureyri, Akureyri, Iceland.
Department of Neurology, Franz Tappeiner Hospital, Merano, Italy; Spinal Cord Injury and Tissue Regeneration Center, Salzburg, Austria; Department of Neurology, Christian Doppler Klinik, Paracelsus Medical University, Salzburg, Austria.
Adv Clin Chem. 2021;102:271-336. doi: 10.1016/bs.acc.2020.08.004. Epub 2020 Oct 3.
The electroencephalogram (EEG) is the most important method to diagnose epilepsy. In clinical settings, it is evaluated by experts who identify patterns visually. Quantitative EEG is the application of digital signal processing to clinical recordings in order to automatize diagnostic procedures, and to make patterns visible that are hidden to the human eye. The EEG is related to chemical biomarkers, as electrical activity is based on chemical signals. The most well-known chemical biomarkers are blood laboratory tests to identify seizures after they have happened. However, research on chemical biomarkers is much less extensive than research on quantitative EEG, and combined studies are rarely published, but highly warranted. Quantitative EEG is as old as the EEG itself, but still, the methods are not yet standard in clinical practice. The most evident application is an automation of manual work, but also a quantitative description and localization of interictal epileptiform events as well as seizures can reveal important hints for diagnosis and contribute to presurgical evaluation. In addition, the assessment of network characteristics and entropy measures were found to reveal important insights into epileptic brain activity. Application scenarios of quantitative EEG in epilepsy include seizure prediction, pharmaco-EEG, treatment monitoring, evaluation of cognition, and neurofeedback. The main challenges to quantitative EEG are poor reliability and poor generalizability of measures, as well as the need for individualization of procedures. A main hindrance for quantitative EEG to enter clinical routine is also that training is not yet part of standard curricula for clinical neurophysiologists.
脑电图(EEG)是诊断癫痫的最重要方法。在临床环境中,由专家通过视觉识别模式来进行评估。定量脑电图是将数字信号处理应用于临床记录,以自动化诊断程序,并使肉眼看不见的模式变得可见。脑电图与化学生物标志物有关,因为电活动基于化学信号。最著名的化学生物标志物是血液实验室测试,用于识别已经发生的癫痫发作。然而,与定量脑电图相比,化学生物标志物的研究要少得多,而且很少有联合研究发表,但这是非常有必要的。定量脑电图和脑电图本身一样古老,但在临床实践中,方法还没有标准化。最明显的应用是手动工作的自动化,但也可以对发作间期癫痫样事件和发作进行定量描述和定位,这可以为诊断提供重要线索,并有助于术前评估。此外,评估网络特征和熵测量被发现可以揭示癫痫脑活动的重要见解。定量脑电图在癫痫中的应用场景包括癫痫发作预测、药物-脑电图、治疗监测、认知评估和神经反馈。定量脑电图的主要挑战是测量的可靠性和通用性差,以及程序需要个体化。定量脑电图进入临床常规的主要障碍之一是,培训还不是临床神经生理学家标准课程的一部分。