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A novel automated seizure detection system from EMD-MSPCA denoised EEG: Refined composite multiscale sample, fuzzy and permutation entropies based scheme

机译:来自EMD-MSPCA Denoised EEG的新型自动癫痫发作检测系统:基于精制复合多尺度样本,模糊和排列熵的方案

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This paper investigates three complexity measures namely, refined composite multiscale sample entropy (RCMSE), refined composite multiscale fuzzy entropy (RCMFE), and refined composite multiscale permutation entropy (RCMPE) as features for the automated detection of epileptic seizures from electroencephalograms (EEGs). Generally, the EEG signals contain unwanted frequency components and superimposed trends that may influence their complexity evaluation. Therefore, we propose a denoising technique based on empirical mode decomposition (EMD) and multiscale principal component analysis (MSPCA) called EMD-MSPCA, and explore its impact on the performance of RCMSE, RCMFE, and RCMPE features for seizure diagnosis. Additionally, we put forward a novel automated seizure detection methodology based on EMD-MSPCA denoised EEG and combined RCMSE, RCMFE, and RCMPE features to characterize healthy, seizure-free, and seizure EEG signals. The experimental results demonstrate that all the three entropy features can successfully characterize the abnormal dynamics related to epileptic EEG signals with RCMPE being the best feature; applying the proposed EMDMSPCA denoising technique prior to feature extraction using RCMSE, RCMFE and, RCMPE not only improved the performances of various classifiers but also reduced the computational time of these three entropy features significantly; and the proposed seizure detection scheme yielded good classification accuracies on two widely used EEG databases as compared to state-of-the-art works, hence emerges as a robust model for automated detection of epileptic seizures.
机译:本文调查了三种复杂度措施即精制复合多尺度样本熵(RCMSE),精制复合多尺度模糊熵(RCMFE),以及精制复合多尺寸置换熵(RCMPE),作为来自脑电图(EEG)的癫痫发作的自动检测的特征。通常,EEG信号包含不需要的频率分量和可能影响其复杂性评估的叠加趋势。因此,我们提出了一种基于经验模式分解(EMD)和多尺度主成分分析(MSPCA)的去噪技术,称为EMD-MSPCA,并探讨了对癫痫发作诊断的RCMSE,RCMFE和RCMPE功能的影响。此外,我们提出了一种基于EMD-MSPCA的新型自动癫痫发作检测方法,基于EMD-MSPCA Denoised EEG和组合RCMSE,RCMFE和RCMPE功能,以表征健康,癫痫发作和癫痫发作。实验结果表明,所有三种熵特征都可以成功地表征与癫痫脑电图信号相关的异常动态,RCMPE是最佳特征;在使用RCMSE,RCMFE的特征提取之前应用提出的EMDMSPCA去噪技术,RCMPE不仅改善了各种分类器的性能,而且还显着降低了这三个熵特征的计算时间;与最先进的工程相比,所提出的癫痫发作检测方案在两个广泛使用的EEG数据库上产生了良好的分类精度,因此作为自动检测癫痫发作的鲁棒模型出现。

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