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Prediction of Temporal Lobe Seizures Using the Singular Spectrum Analysis

机译:基于奇异谱分析的颞叶癫痫发作预测

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At present, one goal of the seizure predictions is to use the linear methods to make the prediction simple. In the paper, a linear method called the singular spectrum analysis (SSA) is employed to the prediction of the seizures onset based on the scalp EEG recordings from the epilepsy patients whose focus are in the temporal lobe as well as from the healthy humans. Different from other prediction methods, it doesn't need large scale data and complex algorithm to make it beneficial to the clinical practice. According to the computing experience, about 4 seconds data is enough to make the prediction more efficient and more convenient. In order to evaluate the method, a radial basis function (RBF) neural network model is used to the classification effectively. It is concluded that the healthy people's SSA decreases rapidly and has a 'platform' in the end, but the epileptic patient's SSA decreases gradually, no obvious 'platform' occurs in the end. It is possible for the phenomenon to be available in the temporal lobe seizure predictions.
机译:目前,癫痫发作预测的一个目标是使用线性方法使预测变得简单。在本文中,一种线性方法被称为奇异频谱分析(SSA),用于根据癫痫患者的头皮脑电图记录来预测癫痫发作,这些癫痫患者的病灶主要是颞叶以及健康人。与其他预测方法不同,它不需要大规模的数据和复杂的算法即可使其对临床有益。根据计算经验,大约4秒钟的数据足以使预测更加有效和便捷。为了评估该方法,将径向基函数(RBF)神经网络模型有效地用于分类。可以得出结论,健康人的SSA迅速下降并最终具有“平台”,但癫痫患者的SSA逐渐下降,最终没有出现明显的“平台”。该现象可能在颞叶癫痫发作预测中可用。

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