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Detection of epileptic seizures in EEG signals during longterm monitoring of patients after traumatic brain injury

机译:在创伤性脑损伤后患者脑卒中期间癫痫发作期间的癫痫发作

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Long-term (several days) monitoring of epileptiform activity in scalp EEG of posttraumatic brain injury patients is an important task. EEG signals contain epileptiform seizures and similar signals of myographic activity associated with chewing. Both epileptiform activity and chewing artifacts appear in the same frequency range, which complicates their differentiation. To distinguish epileptiform activity from chewing artifacts, a method based on the wavelet spectrogram analysis of EEG is proposed. EEG wavelet spectrogram contains broadband peaks at times corresponding to peak-wave epileptiform activity on the one hand, and peaks of myographic activity at chewing on the other hand. The periodicity of these peaks is investigated. The difference in the period dispersion of epileptiform peaks and chewing peaks are found.
机译:长期(数天)监测Proseatic脑损伤患者的头皮EEG中的癫痫型活性是一项重要任务。 EEG信号含有与咀嚼相关的癫痫癫痫发作和类似信号的癫痫发作。 癫痫型活性和咀嚼伪像出现在相同的频率范围内,这使其分化复杂化。 为了区分癫痫型活性来咀嚼伪影,提出了一种基于EEG小波谱图分析的方法。 EEG小波谱图含有宽带峰,其一方面对应于峰波癫痫型活性,另一方面咀嚼的峰值峰值。 研究了这些峰的周期性。 发现癫痫峰和咀嚼峰的周期分散的差异。

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