Centre for Systems Modelling and Quantitative Biomedicine, University of Birmingham, Birmingham, United Kingdom.
EPSRC Centre for Predictive Modelling in Healthcare, University of Exeter, Exeter, United Kingdom.
PLoS Comput Biol. 2023 Oct 5;19(10):e1010508. doi: 10.1371/journal.pcbi.1010508. eCollection 2023 Oct.
Epilepsy is a serious neurological disorder characterised by a tendency to have recurrent, spontaneous, seizures. Classically, seizures are assumed to occur at random. However, recent research has uncovered underlying rhythms both in seizures and in key signatures of epilepsy-so-called interictal epileptiform activity-with timescales that vary from hours and days through to months. Understanding the physiological mechanisms that determine these rhythmic patterns of epileptiform discharges remains an open question. Many people with epilepsy identify precipitants of their seizures, the most common of which include stress, sleep deprivation and fatigue. To quantify the impact of these physiological factors, we analysed 24-hour EEG recordings from a cohort of 107 people with idiopathic generalized epilepsy. We found two subgroups with distinct distributions of epileptiform discharges: one with highest incidence during sleep and the other during day-time. We interrogated these data using a mathematical model that describes the transitions between background and epileptiform activity in large-scale brain networks. This model was extended to include a time-dependent forcing term, where the excitability of nodes within the network could be modulated by other factors. We calibrated this forcing term using independently-collected human cortisol (the primary stress-responsive hormone characterised by circadian and ultradian patterns of secretion) data and sleep-staged EEG from healthy human participants. We found that either the dynamics of cortisol or sleep stage transition, or a combination of both, could explain most of the observed distributions of epileptiform discharges. Our findings provide conceptual evidence for the existence of underlying physiological drivers of rhythms of epileptiform discharges. These findings should motivate future research to explore these mechanisms in carefully designed experiments using animal models or people with epilepsy.
癫痫是一种严重的神经系统疾病,其特征是有反复发作、自发性癫痫的倾向。经典地,癫痫发作被认为是随机发生的。然而,最近的研究揭示了癫痫发作和所谓的发作间期癫痫样活动的关键特征中的潜在节律,其时间尺度从小时、天到月不等。理解决定这些癫痫样放电节律模式的生理机制仍然是一个悬而未决的问题。许多癫痫患者会识别出癫痫发作的诱因,其中最常见的包括压力、睡眠剥夺和疲劳。为了量化这些生理因素的影响,我们分析了 107 名特发性全面性癫痫患者的 24 小时脑电图记录。我们发现了具有不同癫痫样放电分布的两个亚组:一个在睡眠期间发生率最高,另一个在白天发生率最高。我们使用描述大尺度脑网络中背景和癫痫样活动之间转换的数学模型来研究这些数据。该模型扩展到包括一个时变的强制项,其中网络中节点的兴奋性可以被其他因素调节。我们使用独立收集的人类皮质醇(以昼夜和超昼夜分泌模式为特征的主要应激反应激素)数据和来自健康人类参与者的睡眠分期脑电图来校准这个强制项。我们发现皮质醇的动力学或睡眠阶段的转变,或者两者的结合,都可以解释大部分观察到的癫痫样放电分布。我们的研究结果为癫痫样放电节律的潜在生理驱动因素的存在提供了概念证据。这些发现应该促使未来的研究在使用动物模型或癫痫患者的精心设计的实验中探索这些机制。