基于匹配追踪特征的脑电信号缺失发作自动检测

Katerina Giannakaki, Giorgos Giannakakis, P. Vorgia, M. Klados, M. Zervakis
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引用次数: 3

摘要

本文评价了匹配追踪特征与分类技术在癫痫缺失自动检测中的应用。失神性癫痫发作是一种神经系统疾病,表现为脑电图异常。匹配跟踪算法能够将信号分解成具有特定时频特性的分量。它是一种鲁棒性很强的技术,特别是当存在复杂的多分量信号时。在本研究中,我们对40例儿童癫痫患者(年龄6.0±2.9岁)长期脑电图记录中注明的失神发作的临床数据进行分析。提取的MP特征用于自动分类模式,基于时间窗的识别准确率达到98.5%。研究结果表明,所提出的特征和分析方法可以成为自动缺席发作检测领域的一个有希望的补充。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Absence Seizure Detection Evaluating Matching Pursuit Features of EEG Signals
This paper evaluates the usage of matching pursuit (MP) features of electroencephalographic (EEG) signals and classification techniques on automatic absence seizure detection. Absence epileptic seizures are neurological disorders which are manifested as abnormal EEG patterns. Matching pursuit algorithm is able to decompose a signal into components with specific time-frequency characteristics. It is a robust technique especially when there is complex, multicomponent signal. In the present study, a clinical dataset containing 40 annotated absence seizures in long-term EEG recordings from pediatric epileptic patients (with age 6.0±2.9 years) was analyzed. The extracted MP features fed an automatic classification schema which achieved a time window based discrimination accuracy of 98.5%. As indicated by the study's results, the proposed features and analysis methods can be a promising addition to the area of automatic absence seizures detection.
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