一种基于小波的缺席癫痫峰波检测新算法

P. Xanthopoulos, Steffen Rebennack, Chang-Chia Liu, Jicong Zhang, G. Holmes, B. Uthman, P. Pardalos
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引用次数: 33

摘要

失神发作的特征是突然失去意识和正在进行的运动活动在短时间内中断,持续几秒到几秒,最长可达半分钟。由于其短暂和微妙的临床表现,缺席癫痫发作很容易被缺乏经验的观察者错过。即使对经验丰富的观察者来说,准确评估其高复发频率也是一项挑战。我们提出了一种从失神发作患者的脑电图记录中检测和分析失神发作的新方法。本研究包括6例患者,其中2例无发作,总记录时间为26小时,4例在总记录时间14.5小时内发作超过100次。我们的算法在第一次无癫痫发作的患者中仅检测到1个假阳性发现,在其余患者的186个连续不间断3Hz尖峰和波放电(SWD)时期中检测到148个假阳性发现。在总共38个错过的社会福利时期中,28个是
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Novel Wavelet Based Algorithm for Spike and Wave Detection in Absence Epilepsy
Absence seizures are characterized by sudden loss of consciousness and interruption of ongoing motor activities for a brief period of time lasting few to several seconds and up to half a minute. Due to their brevity and subtle clinical manifestations absence seizures are easily missed by inexperienced observers. Accurate evaluation of their high frequency of recurrence can be a challenge even for experienced observers. We present a novel method for detecting and analyzing absence seizures acquired from electroencephalogram (EEG) recordings in patients with absence seizures. Six patients were included in this study, two seizure free, of a total recording time of 26 hours, and four experiencing over 100 seizures within 14.5 hours of total recordings. Our algorithm detected only one false positive finding in the first seizure free patients and 148 of 186 continuous uninterrupted 3Hz spike and wave discharge (SWD) epochs in the rest of the patients. Out of the total 38 missed SWD epochs 28 were
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