首页> 外文期刊>Physical review, E. Statistical physics, plasmas, fluids, and related interdisciplinary topics >Automated detection of a preseizure state based on a decrease in synchronization in intracranial electroencephalogram recordings from epilepsy patients - art. no. 021912
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Automated detection of a preseizure state based on a decrease in synchronization in intracranial electroencephalogram recordings from epilepsy patients - art. no. 021912

机译:基于癫痫患者颅内脑电图记录同步性降低,自动检测癫痫发作前状态-art。没有。 021912

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摘要

The question whether information extracted from the electroencephalogram (EEG) of epilepsy patients can be used for the prediction of seizures has recently attracted much attention. Several studies have reported evidence for the existence of a preseizure state that can be detected using different measures derived from the theory of dynamical systems. Most of these studies, however, have neglected to sufficiently investigate the specificity of the observed effects or suffer from other methodological shortcomings. In this paper we present an automated technique for the detection of a preseizure state from EEG recordings using two different measures for synchronization between recording sites, namely, the mean phase coherence as a measure for phase synchronization and the maximum linear cross correlation as a measure for lag synchronization. Based on the observation of characteristic drops in synchronization prior to seizure onset, we used this phenomenon for the characterization of a preseizure state and its distinction from the remaining seizure-free interval. After optimizing our technique on a group of 10 patients with temporal lobe epilepsy we obtained a successful detection of a preseizure state prior to 12 out of 14 analyzed seizures for both measures at a very high specificity as tested on recordings from the seizure-free interval. After checking for in-sample overtraining via cross validation, we applied a surrogate test to validate the observed predictability. Based on our results, we discuss the differences of the two synchronization measures in terms of the dynamics underlying seizure generation in focal epilepsies. [References: 54]
机译:从癫痫患者的脑电图(EEG)中提取的信息是否可以用于癫痫发作的预测问题最近引起了广泛的关注。几项研究报告了存在癫痫发作前状态的证据,可以使用从动力学系统理论中得出的不同方法来检测出癫痫前状态。但是,这些研究大多数都忽略了充分研究所观察到的效果的特异性或遭受其他方法学缺陷的困扰。在本文中,我们提出了一种自动技术,该技术使用两种不同的记录位置之间同步措施来从EEG记录中检测癫痫发作前状态,即平均相位相干性作为相位同步的度量,而最大线性互相关性作为EEG的度量。滞后同步。基于观察到癫痫发作之前同步性下降的特征,我们将此现象用于表征癫痫发作前的状态及其与其余无癫痫发作间隔的区别。在对10例颞叶癫痫患者进行技术优化后,我们成功地检测到了14种分析性癫痫发作中的12种之前的癫痫发作前状态,这两种措施均具有很高的特异性,如无癫痫发作间隔的记录所测试的。通过交叉验证检查样本中的过度训练后,我们应用了替代测试来验证观察到的可预测性。根据我们的结果,我们就局灶性癫痫发作的潜在动力学讨论了两种同步措施的差异。 [参考:54]

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