Critical dynamics and interictal epileptiform discharge: a comparative analysis with respect to tracking seizure risk cycles

Amrit Kashyap, P. Müller, Gadi Miron, Christian Meisel
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Abstract

Epilepsy is characterized by recurrent, unprovoked seizures. Accurate prediction of seizure occurrence has long been a clinical goal since this would allow to optimize patient treatment, prevent injuries due to seizures, and alleviate the patient burden of unpredictability. Advances in implantable electroencephalographic (EEG) devices, allowing for long-term interictal EEG recordings, have facilitated major progress in this field. Recently, it has been discovered that interictal brain activity demonstrates circadian and multi-dien cycles that are strongly aligned, or phase locked, with seizure risk. Thus, cyclical brain activity patterns have been used to forecast seizures. However, in the effort to develop a clinically useful EEG based seizure forecasting system, challenges remain. Firstly, multiple EEG features demonstrate cyclical patterns, but it remains unclear which feature is best suited for predicting seizures. Secondly, the technology for long-term EEG recording is currently limited in both spatial and temporal sampling resolution. In this study, we compare five established EEG metrics:synchrony, spatial correlation, temporal correlation, signal variance which have been motivated from critical dynamics theory, and interictal epileptiform discharge (IED) which are a traditional marker of seizure propensity. We assess their effectiveness in detecting 24-h and seizure cycles as well as their robustness under spatial and temporal subsampling. Analyzing intracranial EEG data from 23 patients, we report that all examined features exhibit 24-h cycles. Spatial correlation, signal variance, and synchrony showed the highest phase locking with seizures, while IED rates were the lowest. Notably, spatial and temporal correlation were also found to be highly correlated to each other, as were signal variance and IED—suggesting some features may reflect similar aspects of cortical dynamics, whereas others provide complementary information. All features proved robust under subsampling, indicating that the dynamic properties of interictal activity evolve slowly and are not confined to specific brain regions. Our results may aid future translational research by assisting in design and testing of EEG based seizure forecasting systems.
临界动力学和发作间期癫痫样放电:追踪癫痫发作风险周期的比较分析
癫痫的特点是无诱因的反复发作。长期以来,准确预测癫痫发作一直是临床治疗的目标,因为这样可以优化对患者的治疗,防止因癫痫发作而造成的伤害,并减轻患者因无法预测而造成的负担。可长期记录发作间期脑电图的植入式脑电图(EEG)设备的进步促进了这一领域的重大进展。最近,人们发现发作间期的大脑活动表现出昼夜节律和多昼夜周期,这些周期与癫痫发作风险高度一致或相位锁定。因此,周期性大脑活动模式已被用于预测癫痫发作。然而,在开发临床有用的基于脑电图的癫痫发作预测系统的过程中,挑战依然存在。首先,多种脑电图特征显示出周期性模式,但哪种特征最适合预测癫痫发作仍不清楚。其次,长期脑电图记录技术目前在空间和时间采样分辨率方面都受到限制。在本研究中,我们比较了五种已确立的脑电图指标:同步性、空间相关性、时间相关性、临界动力学理论提出的信号方差,以及作为癫痫发作倾向传统标志的发作间期癫痫样放电(IED)。我们评估了它们在检测 24 小时和癫痫发作周期方面的有效性,以及它们在空间和时间子采样情况下的稳健性。通过分析 23 名患者的颅内脑电图数据,我们发现所有检测特征都表现出 24 小时周期。空间相关性、信号方差和同步性与癫痫发作的相位锁定最高,而 IED 率最低。值得注意的是,空间相关性和时间相关性以及信号方差和 IED 也是高度相关的,这表明某些特征可能反映了皮层动力学的相似方面,而其他特征则提供了补充信息。所有特征在子采样下都证明是稳健的,这表明发作间期活动的动态特性演变缓慢,并不局限于特定的脑区。我们的研究结果可能有助于未来的转化研究,帮助设计和测试基于脑电图的癫痫发作预测系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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