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Unsupervised detection of epileptic seizures from EEG signals: A channel-specific analysis of long-term recordings

机译:从EEG信号中癫痫发作的无监督检测:长期记录的通道特定分析

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As long-term EEG recordings are becoming more and more frequent in clinical practice, the volume of EEG data that require annotation by clinical experts is growing exponentially, highlighting the need for automated epileptic seizure detection systems. Supervised methodologies based on machine learning techniques have been proposed as a solution, but they require annotated EEG data from multiple patients for training, while unsupervised methodologies, which do not have such limitations, are scarce in the literature. Thus, an unsupervised seizure detection methodology is developed to offer high seizure detection performance with substantial reduction in the time and effort required to inspect large volumes of EEG signals. The ictal rhythmical activity is detected by analyzing the spectral information of each EEG channel independently in order to find intensive accumulation of signal energy over the fundamental delta, theta and alpha frequency bands. The ictal rhythmical activity that is expressed during a seizure is detected using a set of four simple seizure detection conditions. The proposed methodology is validated using the public CHB-MIT EEG database, and the results suggest that an average sensitivity of 95.1% can be obtained with a false detection rate of 10.13 FP/h, while 95% of the each patient's EEG recordings is automatically rejected as non-ictal.
机译:由于长期EEG录音在临床实践中越来越频繁,因此需要临床专家注释的EEG数据的数量是指数增长的,突出了对自动癫痫癫痫发作检测系统的需求。已经提出了基于机器学习技术的监督方法作为解决方案,但它们需要来自多名患者进行培训的注释脑电图数据,而无监督的方法没有这样的限制,则在文献中稀缺。因此,开发了一种无监督的癫痫发作检测方法,以提供高癫痫发作检测性能,在检查大量脑电图所需的时间和精力的时间和精力下进行大幅减少。通过独立地分析每个EEG通道的光谱信息来检测ICTAL节奏活动,以便在基本Δ,θ和α频带上找到信号能量的强化累积。使用一组四种简单的癫痫发作检测条件检测在癫痫发作期间表达的偶联节律活性。使用公共CHB-MIT EEG数据库验证所提出的方法,结果表明,95.1 %的平均灵敏度可以通过10.13 fp / h的假检测率获得,而每位患者的eeg记录的95 %被自动被拒绝为非ICTAL。

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