Comparison of frequency bands using spectral entropy for epileptic seizure prediction.

ISRN Neurology Pub Date : 2013-05-25 Print Date: 2013-01-01 DOI:10.1155/2013/287327
Susana Blanco, Arturo Garay, Diego Coulombie
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引用次数: 46

Abstract

Introduction. Under the hypothesis that the uncontrolled neuronal synchronization propagates recruiting more and more neurons, the aim is to detect its onset as early as possible by signal analysis. This synchronization is not noticeable just by looking at the EEG, so mathematical tools are needed for its identification. Objective. The aim of this study is to compare the results of spectral entropies calculated in different frequency bands of the EEG signals to decide which band may be a better tool to predict an epileptic seizure. Materials and Methods. Invasive ictal records were used. We measured the Fourier spectrum entropy of the electroencephalographic signals 4 to 32 minutes before the attack in low, medium and high frequencies. Results. The high-frequency band shows a markedly rate of increase of the entropy, with positive slopes and low correlation coefficient. The entropy rate of growth in the low-frequency band is practically zero, with a correlation around 0.2 and mostly positive slopes. The mid-frequency band showed both positive and negative slopes with low correlation. Conclusions. The entropy in the high frequencies could be predictor, because it shows changes in the previous moments of the attack. Its main problem is the variability, which makes it difficult to set the threshold that ensures an adequate prediction.

Abstract Image

Abstract Image

频谱熵用于癫痫发作预测的频带比较。
介绍。在不受控制的神经元同步传播并招募越来越多的神经元的假设下,目的是通过信号分析尽早发现其发生。这种同步并不仅仅是通过观察脑电图来发现的,因此需要数学工具来识别它。目标。本研究的目的是比较脑电图信号不同频带的频谱熵计算结果,以确定哪个频带可能是预测癫痫发作的更好工具。材料与方法。采用有创心电图。在发作前4 ~ 32分钟测量脑电图信号的低、中、高频傅立叶谱熵。结果。高频波段的熵增加速率显著,呈正斜率,相关系数较低。低频段的熵增长率几乎为零,相关系数约为0.2,且斜率大多为正。中频波段均呈现正、负斜率,相关性较低。结论。高频的熵可以作为预测因子,因为它显示了攻击前一刻的变化。它的主要问题是可变性,这使得难以设置确保充分预测的阈值。
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