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Multi-parameter analysis of electroencephalogram (EEG): A diagnostic measure for epilepsy

机译:脑电图(EEG)的多参数分析:癫痫病的诊断方法

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摘要

Epilepsy is one of the most common neurological disorders and affects almost 60 million people worldwide. Epileptic seizures, which are characterized by a recurrent and sudden malfunction of the brain, reflect the clinical sign of an excessive and hyper-synchronous activity of neurons in the brain. EEG is the most economical one with high temporal resolution. The visual inspection of EEG data is prohibitively time-consuming and inefficient, even if the expert clinician reads the data ten times faster than the recording speed. The visual inspection lacks quantitative analysis which can uncover hidden characters of the data. We demonstrate in this paper with interictal scalp EEG data, which is much easier to collect than the ictal data, to automatically diagnose whether a person is epileptic or not. By using multi-parameter quantification and signal analysis such as power spectrum, frequency, amplitude, signal to noise ratio, entropy etc., it is possible to detect the epilepsy with affected lobe for localization. The results are promising with 100% sensitivity and accuracy of 91 % is achieved.
机译:癫痫病是最常见的神经系统疾病之一,全世界有近6000万人受其影响。癫痫性发作的特征是大脑反复发作和突然失灵,反映出大脑中神经元过度和超同步活动的临床征象。脑电图是最经济的,具有高时间分辨率。即使专家临床医生读取数据的速度比记录速度快十倍,对EEG数据的视觉检查也非常耗时且效率低下。视觉检查缺乏定量分析,该定量分析可以发现数据的隐藏特征。我们在本文中证明了具有发作性头皮脑电图数据,该数据比发作性头皮数据要容易得多,可以自动诊断一个人是否患有癫痫。通过使用多参数量化和信号分析(例如功率谱,频率,幅度,信噪比,熵等),可以检测出具有受影响波瓣的癫痫病,以便进行定位。结果令人鼓舞,灵敏度为100%,准确度达到91%。

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