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Seizure prediction model based on method of common spatial patterns and support vector machine

机译:基于常见空间格局和支持向量机的癫痫发作预测模型

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Records of brain electrical activity from intracranial and scalp EEG of seven patients with different types of epilepsy are analyzed to predict the epileptic seizure onset. A method based on the CSP and SVM is introduced. This is an efficient method to predict epileptic seizures: from 52 pre-seizure signals, the seizure onsets in 23 of those are predicted. Through this method, we propose a seizure prediction model which gets an accuracy rate represented by predictions / seizures of 5/20–5/5 and a pseudo-prediction rate of 1.6–10.9 per hour.
机译:分析了七名不同类型癫痫患者的颅内和头皮脑电图的脑电活动记录,以预测癫痫发作的发生。介绍了一种基于CSP和SVM的方法。这是预测癫痫发作的一种有效方法:从52种癫痫发作前信号中,预测23种癫痫发作的发作。通过这种方法,我们提出了癫痫发作预测模型,其预测/癫痫发作的准确率为5 / 20-5 / 5/5,伪预测率为每小时1.6-10.9。

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