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Robustness of time frequency distribution based features for automated neonatal EEG seizure detection

机译:基于时频分布的功能强大,可自动检测新生儿脑电图

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In this paper we examined the robustness of a feature-set based on time-frequency distributions (TFDs) for neonatal EEG seizure detection. This feature-set was originally proposed in literature for neonatal seizure detection using a support vector machine (SVM). We tested the performance of this feature-set with a smoothed Wigner-Ville distribution and modified B distribution as the underlying TFDs. The seizure detection system using time-frequency signal and image processing features from the TFD of the EEG signal using modified B distribution was able to achieve a median receiver operator characteristic area of 0.96 (IQR 0.91–0.98) tested on a large clinical dataset of 826 h of EEG data from 18 full-term newborns with 1389 seizures. The mean AUC was 0.93.
机译:在本文中,我们研究了基于时频分布(TFD)的特征集对新生儿脑电图癫痫发作检测的鲁棒性。该功能集最初是在文献中提出的,用于使用支持向量机(SVM)进行新生儿癫痫发作检测。我们使用平滑的Wigner-Ville分布和修改的B分布作为基本TFD来测试此功能集的性能。癫痫发作检测系统使用时频信号和来自脑电图信号TFD的图像处理功能,并采用改进的B分布,能够在826个大型临床数据集上测试到的接收器操作员特征区域中位数为0.96(IQR 0.91-0.98)。来自18例癫痫发作的18个足月新生儿的hEEG数据。平均AUC为0.93。

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