Shayegh Farzaneh, Fattahi Rasoul Amir, Sadri Saeid, Ansari-Asl Karim
Medical Image and Signal Processing Research Center, Isfahan University of Medical Sciences.
J Med Signals Sens. 2011 Jan;1(1):62-72.
In recent decades, seizure prediction has caused a lot of research in both signal processing and the neuroscience field. The researches have tried to enhance the conventional seizure prediction algorithms such that the rate of the false alarms be appropriately small, so that seizures can be predicted according to clinical standards. To date, none of the proposed algorithms have been sufficiently adequate. In this article we show that in considering the mechanism of the generation of seizures, the prediction results may be improved. For this purpose, an algorithm based on the identification of the parameters of a physiological model of seizures is introduced. Some models of electroencephalographic (EEG) signals that can also be potentially considered as models of seizure and some developed seizure models are reviewed. As an example the model of depth-EEG signals, proposed by Wendling, is studied and is shown to be a suitable model.
近几十年来,癫痫发作预测在信号处理和神经科学领域引发了大量研究。这些研究试图改进传统的癫痫发作预测算法,以使误报率适当降低,从而能够根据临床标准预测癫痫发作。迄今为止,所提出的算法都还不够完善。在本文中,我们表明,考虑癫痫发作的产生机制可能会改善预测结果。为此,引入了一种基于识别癫痫生理模型参数的算法。本文回顾了一些也可能被视为癫痫模型的脑电图(EEG)信号模型以及一些已开发的癫痫模型。例如,研究了Wendling提出的深度脑电图信号模型,并表明它是一个合适的模型。