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Intra-patient and inter-patient seizure prediction from spatial-temporal EEG features

机译:从时空脑电图特征预测患者内和患者间惊厥

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In this paper, an algorithm for both intra-patient and inter-patient seizure prediction from invasive electroencephalography (EEG) is proposed and tested. Multi-channel EEG signal are pre-processed, windowed and built into spatial-temporal covariance matrices. Multivariate features are extracted from these matrices, then reduced in dimensionality by principle component analysis (PCA). A support vector machine (SVM) system is trained with the features of classified segments of data to predict the un-classified segments. The cross-validation test shows that the proposed algorithm achieves significantly better performance than that achieved in existing literatures, with the area under receiver operating characteristic (ROC) curve of 0.977 for intra-patient and 0.822 for inter-patient prediction. The significance test further proves that the result is statistically reliable for intra-patient prediction with p-value of 0.00, and well considerable for inter-patient prediction with p-value of 0.08.
机译:在本文中,提出并测试了一种用于从侵入性脑电图(EEG)进行的患者内和患者间癫痫发作预测的算法。对多通道EEG信号进行预处理,加窗并建立到时空协方差矩阵中。从这些矩阵中提取多元特征,然后通过主成分分析(PCA)降低维数。支持向量机(SVM)系统通过分类数据段的特征进行训练,以预测未分类段。交叉验证测试表明,与现有文献相比,该算法具有更好的性能,患者内接收者操作特征(ROC)曲线下面积为患者内0.997,患者间预测0.822。显着性检验进一步证明,该结果对于p值为0.00的患者内部预测在统计上是可靠的,对于p值为0.08的患者之间预测是相当可观的。

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