基于长期数据预测癫痫发作的心电图特征的可行性

A. Leal, Maria da Graça Ruano, J. Henriques, P. de Carvalho, C. Teixeira
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引用次数: 0

摘要

除了脑电图(EEG)中明显的脑状态改变外,癫痫发作还与心血管状态的改变有关。特别是心率(HR)已成为预测癫痫发作的重要自主神经生物标志物。在此基础上,本文提出了一项初步研究,以检查癫痫发作前一段时间内心电图(ECG)衍生特征的行为。该研究使用了从癫痫siae数据库中收集的167例患者中收集的1275例癫痫发作数据。分析考虑了三个不同的变量:发作类型、发作时间和警戒状态。结果没有显示出三个变量中的任何一个的明显影响,单独评估,在整个癫痫发作集。然而,一些证据已经发现,对于某些癫痫发作,有可能在发作前检测到特征幅度的增加/减少的一致模式。这些模式是通过RR间隔的平均值和每分钟心跳次数的平均值来揭示的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
On the viability of ECG features for seizure anticipation on long-term data
Besides the evident brain state alterations present in electroencephalogram (EEG), epileptic seizures are also associated with changes in the cardiovascular status. In particular, heart rate (HR) has become an important autonomic biomarker in seizure prediction. Based on that, a preliminary study is here proposed in order to inspect the behaviour of electrocardiogram (ECG) derived features in the period preceding epileptic seizures. The study took place using data from 1275 seizures collected from a set of 167 patients available in EPILEPSIAE database. The analysis was conducted considering three different variables: seizure type, seizure hour onset and vigilance state. The results did not reveal a clear effect of any of the three variables, assessed individually, in entire seizure set. Nevertheless, some evidence has been found that, for some seizures, it was possible to detected a consistent pattern of increase/decrease in feature magnitude before the onset. These patterns were revealed using the mean of RR intervals and the mean of the number of beats per minute.
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