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首页> 外文期刊>Journal of medical systems >The Effect of Multiscale PCA De-noising in Epileptic Seizure Detection
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The Effect of Multiscale PCA De-noising in Epileptic Seizure Detection

机译:多尺度PCA去噪在癫痫发作检测中的作用

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摘要

In this paper we describe the effect of Multiscale Principal Component Analysis (MSPCA) de-noising method in terms of epileptic seizure detection. In addition, we developed a patient-independent seizure detection algorithm using Freiburg EEG database. Each patient contains datasets called "ictal" and "interictal". Window length of 16 s was applied to extract EEG segments from datasets of each patient. Furthermore, Power Spectral Density (PSD) of each EEG segment was estimated using different spectral analysis methods. Afterwards, these values were fed as input to different machine learning methods that were responsible for seizure detection. We also applied MSPCA de-noising method to EEG segments prior to PSD estimation to determine if MSPCA can further enhance the classifiers' performance. The MSPCA drastically improved both the sensitivity and the specificity, increasing the overall accuracy of all three classifiers up to 20 %. The best overall detection accuracy (99.59 %) was achieved when Eigenvector analysis was used for frequency estimation, and C4.5 as a classifier. The experiment results show that MSPCA is an effective de-noising method for improving the classification performance in epileptic seizure detection.
机译:在本文中,我们从癫痫发作检测的角度描述了多尺度主成分分析(MSPCA)去噪方法的效果。此外,我们使用弗莱堡EEG数据库开发了患者独立的癫痫发作检测算法。每个患者包含称为“ ictal”和“ interictal”的数据集。应用16 s的窗口长度从每个患者的数据集中提取脑电图片段。此外,使用不同的频谱分析方法估算每个EEG段的功率谱密度(PSD)。然后,将这些值作为负责癫痫发作检测的不同机器学习方法的输入。在PSD估计之前,我们还将MSPCA去噪方法应用于脑电图段,以确定MSPCA是否可以进一步增强分类器的性能。 MSPCA大大提高了灵敏度和特异性,将所有三个分类器的整体准确性提高了20%。当使用特征向量分析进行频率估计并使用C4.5作为分类器时,可获得最佳的整体检测精度(99.59%)。实验结果表明,MSPCA是提高癫痫发作检测分类性能的有效降噪方法。

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