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A unified multi-level spectral-temporal feature learning framework for patient-specific seizure onset detection in EEG signals

机译:eEG信号中患者特定癫痫发作生效检测的统一多级光谱 - 时间特征学习框架

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Epileptic seizure onset detection in electroencephalography (EEG) signals is a challenging task due to the severe variation of seizures. Recently, automatic seizure onset detection frameworks fail to fully consider both nonstationary and stochastic characteristics of EEGs in nature, which may lead to information default and further produce suboptimal recognition performance consequently. In this work, we propose a patient-specific seizure onset detection method based on fully exploration of auxiliary supplementary spectral-temporal information in EEG signals. Specifically, prior to feature extraction procedure, EEG signals are firstly decomposed into 5 groups of coefficients at different levels based on the clinical interest. Representative feature in temporal-domain, which is a translation of the nonlinear property of EEG signals, is then extracted by a combination of principal component analysis and common spatial pattern (PCA-CSP) and multivariate multiscale sample entropy (MMSE) in parallel and dimensionally reduced by a tree-based feature selection algorithm. Supplementary information in spectral-domain is further explored by the proposed unified maximum mean discrepancy autoencoder (uMMD-AE). Finally, an optimal combination of features above is identified and fed into a series of support vector machine classifiers with a decision fusion module for the intelligent recognition of epileptic EEGs. The proposed method achieves an average sensitivity, latency and false detection rate of 97.2%, 1.10s and 0.64/h respectively on Children Hospital Boston-Massachusetts Institute of Technology (CHB-MIT) Scalp EEG Database. Competitive experimental results demonstrate the efficacy of the proposed unified multi-level spectral-temporal feature learning framework in epileptic EEG recognition, validating its effectiveness in the automatic patient-specific seizure onset detection. (C) 2020 Published by Elsevier B.V.
机译:由于癫痫发作的严重变化,脑电图(EEG)信号中的癫痫癫痫发作出现检测是一个具有挑战性的任务。最近,自动癫痫发作检测框架未能充分考虑IEG的非间断和随机特征,这可能导致信息默认,并因此进一步产生次优识别性能。在这项工作中,我们提出了一种基于EEG信号中的辅助补充谱时间信息的完全探索的患者特异性癫痫发作检测方法。具体地,在特征提取过程之前,基于临床兴趣,首先将EEG信号分解成不同水平的5组系数。时间域中的代表性特征是EEG信号的非线性特性的转换,然后通过主成分分析和公共空间模式(PCA-CSP)和多变量多体样品熵(MMSE)并行和尺寸的组合来提取由基于树的特征选择算法减少。通过拟议的统一最大均值差异自动化器(UMMD-AE)进一步探索光谱域中的补充信息。最后,识别出上面的特征的最佳组合,并将其馈送到一系列支持向量机分类器中,其中具有决策融合模块,用于智能识别癫痫脑电图。该方法在儿童医院Boston-Massachusetts技术研究所(CHB-MIT)Scalp EEG数据库中,所提出的方法分别达到97.2%,1.10s和0.64 / h的平均灵敏度,延迟和假检出率。竞争实验结果表明,统一的多级光谱 - 颞型特征学习框架在癫痫症识别中的效果,验证其在自动患者特异性癫痫发作发作检测中的有效性。 (c)2020由elsevier b.v发布。

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