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首页> 外文期刊>Medical and Biological Engineering and Computing: Journal of the International Federation for Medical and Biological Engineering >Tracking and detection of epileptiform activity in multichannel ictal EEG using signal subspace correlation of seizure source scalp topographies.
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Tracking and detection of epileptiform activity in multichannel ictal EEG using signal subspace correlation of seizure source scalp topographies.

机译:使用癫痫发作源头皮地形图的信号子空间相关性跟踪和检测多通道发作性脑电图中的癫痫样活动。

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Conventional methods for monitoring clinical (epileptiform) multichannel electroencephalogram (EEG) signals often involve morphological, spectral or time-frequency analysis on individual channels to determine waveform features for detecting and classifying ictal events (seizures) and inter-ictal spikes. Blind source separation (BSS) methods, such as independent component analysis (ICA), are increasingly being used in biomedical signal processing and EEG analysis for extracting a set of underlying source waveforms and sensor projections from multivariate time-series data, some of which reflect clinically relevant neurophysiological (epileptiform) activity. The work presents an alternative spatial approach to source tracking and detection in multichannel EEG that exploits prior knowledge of the spatial topographies of the sensor projections associated with the target sources. The target source sensor projections are obtained by ICA decomposition of data segments containing representative examples of target source activity, e.g. a seizure or ocular artifact. Source tracking and detection are then based on the subspace correlation between individual target sensor projections and the signal subspace over a moving window. Different window lengths and subspace correlation threshold criteria reflect transient or sustained target source activity. To study the behaviour and potential application of this spatial source tracking and detection approach, the method was used to detect (transient) ocular artifacts and (sustained) seizure activity in two segments of 25-channel EEG data recorded from one epilepsy patient on two separate occasions, with promising and intuitive results.
机译:监视临床(癫痫状)多通道脑电图(EEG)信号的常规方法通常涉及对单个通道进行形态,频谱或时频分析,以确定用于检测和分类发作事件(发作)和发作间尖峰的波形特征。盲源分离(BSS)方法,例如独立成分分析(ICA),正越来越多地用于生物医学信号处理和EEG分析中,以从多元时间序列数据中提取一组基础源波形和传感器投影,其中一些反射临床相关的神经生理(癫痫样)活动。这项工作提出了一种在多通道EEG中进行源跟踪和检测的替代空间方法,该方法利用了与目标源相关的传感器投影的空间拓扑的先验知识。目标源传感器投影是通过对包含目标源活动代表性示例(例如目标)的数据段进行ICA分解而获得的。癫痫发作或眼神器。然后,基于单个目标传感器投影与移动窗口上的信号子空间之间的子空间相关性,进行源跟踪和检测。不同的窗口长度和子空间相关性阈值标准反映了瞬时或持续的目标源活动。为了研究这种空间源跟踪和检测方法的行为和潜在应用,该方法用于检测(瞬态)眼部伪影和(持续)癫痫发作活动,该发作是在两名癫痫患者分别记录的25通道EEG数据的两部分中场合,具有令人鼓舞和直观的结果。

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