一种利用青少年能量检测脑电图癫痫发作的新方法

C. Kamath
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引用次数: 12

摘要

提出了一种基于青少年能量(TE)的方法来区分非癫痫发作(睁眼、闭眼或间歇)和癫痫发作(间歇)间隔的脑电图信号。尽管在癫痫检测方面已经做出了很多贡献,但不平衡数据(非癫痫和癫痫事件)和系统计算效率的挑战仍然是一个挑战。文献报道癫痫发作的特点是脑内异常突然放电,在脑电图记录中表现为频率变化和幅度增加。Teager能量(TE)能够在时域内跟踪如此快速的频率和幅度变化。本研究的一个重要发现是,平均TE量词在很大程度上独立于窗口长度,并且在用作比较的相对度量时表现出相对一致性。我们将TE量词与Higuchi分形维数和样本熵的诊断能力在区分脑电图的非发作和发作状态方面进行了比较,发现TE量词优于其他两种非线性量词。结果表明,该方法在性能上优于传统的分类方法,适合于癫痫发作的实时自动检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Approach to Detect Epileptic Seizures in Electroencephalograms Using Teager Energy
A Teager energy (TE) based approach to discriminate electroencephalogram signals corresponding to nonseizure (eyes open, eyes closed, or interictal) and seizure (ictal) intervals is proposed. Though a good number of contributions have been made for seizure detection, the challenges of unbalanced data (nonseizure and seizure events) and system computational efficiency still remain a challenge. It is reported in the literature that the seizures are characterized by abnormal sudden discharges in the brain which get manifested in the EEG recordings by frequency changes and increased amplitudes. Teager energy (TE) is capable of tracking such rapid changes in frequency as well as amplitude in the time domain. An important finding of this study is that the mean TE quantifier is largely independent of the window length and exhibits relative consistency when used as a relative measure for comparison. We compared the diagnostic capability of TE quantifier with those of Higuchi’s fractal dimension and sample entropy in discriminating nonseizure and seizure states in the EEGs and found that TE outperforms the other two nonlinear quantifiers. The result shows that the application of this method compares favorably with conventional classification methods in terms of performance and is well suited for real-time automatic epileptic seizure detection.
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