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首页> 外文期刊>Clinical neurophysiology >Application of a multivariate seizure detection and prediction method to non-invasive and intracranial long-term EEG recordings.
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Application of a multivariate seizure detection and prediction method to non-invasive and intracranial long-term EEG recordings.

机译:多元癫痫发作检测和预测方法在无创和颅内长期脑电图记录中的应用。

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OBJECTIVE: Retrospective evaluation and comparison of performances of a multivariate method for seizure detection and prediction on simultaneous long-term EEG recordings from scalp and intracranial electrodes. METHODS: Two multivariate techniques based on simulated leaky integrate-and-fire neurons were investigated in order to detect and predict seizures. Both methods were applied and assessed on 423h of EEG and 26 seizures in total, recorded simultaneously from the scalp and intracranially continuously over several days from six patients with pharmacorefractory epilepsy. RESULTS: Features generated from simultaneous scalp and intracranial EEG data showed a similar dynamical behavior. Significant performances with sensitivities of up to 73%/62% for scalp/invasive EEG recordings given an upper limit of 0.15 false detections per hour were obtained. Up to 59%/50% of all seizures could be predicted from scalp/invasive EEG, given a maximum number of 0.15 false predictions per hour. A tendency to better performances for scalp EEG was obtained for the detection algorithm. CONCLUSIONS: The investigated methods originally developed for non-invasive EEG were successfully applied to intracranial EEG. Especially, concerning seizure detection the method shows a promising performance which is appropriate for practical applications in EEG monitoring. Concerning seizure prediction a significant prediction performance is indicated and a modification of the method is suggested. SIGNIFICANCE: This study evaluates simultaneously recorded non-invasive and intracranial continuous long-term EEG data with respect to seizure detection and seizure prediction for the first time.
机译:目的:回顾性评估和比较癫痫发作检测和预测头皮和颅内电极同时长期脑电记录的多变量方法的性能。方法:研究了两种基于模拟泄漏积分和发射神经元的多元技术,以检测和预测癫痫发作。两种方法均在423h的脑电图和总共26次癫痫发作中应用和评估,共记录了6例患有药敏性癫痫的患者的头皮和颅内连续几天。结果:从同时头皮和颅内脑电图数据生成的功能显示出类似的动力学行为。给定每小时0.15次错误检测的上限,对于头皮/侵入性EEG记录,灵敏度可达到73%/ 62%的显着性能。假设每小时最多可有0.15次错误预测,那么从头皮/侵入性脑电图可预测出所有癫痫发作的59%/ 50%。对于检测算法,获得了头皮脑电图具有更好性能的趋势。结论:最初为无创性脑电图开发的研究方法已成功地应用于颅内脑电图。特别地,关于癫痫发作检测,该方法显示出有希望的性能,其适合于EEG监测中的实际应用。关于癫痫发作的预测,表明了显着的预测性能,并建议对该方法进行修改。重要性:这项研究首次评估了同时记录的非侵入性和颅内连续长期EEG数据,用于癫痫发作检测和癫痫发作预测。

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