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首页> 外文期刊>Clinical neurophysiology >An automatic warning system for epileptic seizures recorded on intracerebral EEGs.
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An automatic warning system for epileptic seizures recorded on intracerebral EEGs.

机译:大脑脑电图上记录的癫痫发作自动预警系统。

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OBJECTIVE: A new clinical seizure waning system for intracerebral EEG is proposed. It is aimed at a better performance than existing systems and at user tuneability. METHODS: The system employs data filtering in multiple bands, spectral feature extraction, Bayes' theorem, and spatio-temporal analysis. The a priori information in Bayes' theorem was provided by 407 h of EEG from 19 patients having 152 seizures. RESULTS: The testing data (19 patients, 389 h, 100 seizures, independent of the training data) yielded a sensitivity of 89.4%, a false detection rate of 0.22/h, and median delay time of 17.1 s when tuning was used, and 86%, 0.47/h and 16.2 s without tuning. Missed seizures were of short duration or had subtle seizure activity. False detections were caused by technical artefacts, non-epileptic large amplitude rhythmic bursts or very low amplitude activity. It was established that performance could easily be tuned. Results were also compared to the clinical system of . CONCLUSIONS: The system offersa performance that is acceptable for clinical use. User tuneability allows for reduction in false detection with minimal loss to sensitivity. SIGNIFICANCE: Epilepsy monitoring generates large amounts of recordings and requires intense observation. Automatic seizure detection and warning systems reduce review time and facilitate observation. We propose a method with high sensitivity and few false alarms.
机译:目的:提出一种新的脑电图检查方法。它的目的是要比现有系统更好的性能以及用户的可调整性。方法:该系统采用多频带数据过滤,频谱特征提取,贝叶斯定理和时空分析。 19例152次发作的患者的407小时脑电图提供了贝叶斯定理的先验信息。结果:测试数据(19例患者,389小时,发作100次,与训练数据无关)灵敏度为89.4%,误检率为0.22 / h,使用调整时的中位延迟时间为17.1 s,并且86%,0.47 / h和16.2 s无需调整。错过的癫痫发作持续时间短或有轻微的癫痫发作活动。错误的检测是由技术伪像,非癫痫性大幅度有节奏的爆发或非常低幅度的活动引起的。已确定可以轻松调整性能。结果也进行了比较与临床系统。结论:该系统提供的性能可被临床使用。用户可调性可以减少错误检测,同时降低灵敏度。重要性:癫痫监测会产生大量录音,需要认真观察。自动的癫痫发作检测和预警系统减少了检查时间并便于观察。我们提出了一种灵敏度高,误报少的方法。

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