首页> 外文期刊>Epilepsia: Journal of the International League against Epilepsy >Do false predictions of seizures depend on the state of vigilance? A report from two seizure-prediction methods and proposed remedies.
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Do false predictions of seizures depend on the state of vigilance? A report from two seizure-prediction methods and proposed remedies.

机译:对癫痫发作的错误预测是否取决于警惕状态?两种癫痫发作预测方法的报告和建议的补救措施。

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PURPOSE: Available seizure-prediction algorithms are accompanied by high numbers of false predictions to achieve high sensitivity. Little is known about the extent to which changes in EEG dynamics contribute to false predictions. This study addresses potential causes and the circadian distribution of false predictions as well as their relation to the sleep-wake cycle. METHODS: In 21 patients, each with 24 h of interictal invasive EEG recordings, two methods, the dynamic similarity index and the mean phase coherence, were assessed with respect to time points of false predictions. Visual inspection of the invasive EEG data and additional scalp electroencephalogram data was performed at times of false predictions to identify possible correlates of changes in the EEG dynamics. RESULTS: A dependency of false predictions on the time of day is shown. Renormalized to the duration of the period patients are asleep and awake, 86% of all false predictions occurred during sleep for the dynamic similarity index and68% for the mean phase coherence, respectively. Combining two reference intervals, one during sleep and one in an awake state, the dynamic similarity index increases its performance by reducing the number of false predictions by almost 50% without major changes in sensitivity. No obvious dependence of false predictions was noted on visible epileptic activity, such as spikes, sharp waves, or subclinical ictal patterns. CONCLUSIONS: Changes in the EEG dynamics related to the sleep-wake cycle contribute to limits of specificity of both seizure-prediction methods investigated. This may provide a clue for improving prediction methods in general. The combination of reference states yields promising results and may offer opportunities to increase further the performance of prediction methods.
机译:目的:可用的癫痫发作预测算法伴随着大量的错误预测,以实现高灵敏度。关于脑电动力学变化在多大程度上导致错误的预测知之甚少。这项研究解决了错误预测的潜在原因和昼夜节律分布及其与睡眠-觉醒周期的关系。方法:在21位患者中,每位患者都有24 h的间期浸润性脑电图记录,就错误预测的时间点评估了动态相似性指数和平均相干性这两种方法。在错误预测时对有创脑电数据和其他头皮脑电图数据进行目视检查,以识别脑电动力学变化的可能相关性。结果:显示了错误预测对一天中时间的依赖性。重新标准化为患者入睡和清醒的时间,动态相似性指数发生的所有错误预测中有86%发生在睡眠期间,平均相干性发生的所有虚假预测中分别发生了68%。动态相似性指数结合了两个参考间隔,一个在睡眠中,一个在清醒状态,通过将错误预测的数量减少了几乎50%,而灵敏度没有重大变化,从而提高了其性能。没有明显的错误预测依赖于可见的癫痫活动,例如尖峰,尖波或亚临床发作模式。结论:与睡眠-觉醒周期有关的脑电图动力学变化会影响所研究的两种癫痫发作预测方法的特异性。这通常可以为改进预测方法提供线索。参考状态的组合产生了可喜的结果,并可能提供进一步提高预测方法性能的机会。

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