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Threshold based MEG data classification for healthy and epileptic subjects

机译:针对健康和癫痫患者的基于阈值的MEG数据分类

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The most commonly used clinical tool for initial diagnosis of epilepsy is electroencephalogram (EEG). Recent advances in magnetoencephalography (MEG) technology provide a new source of information to analyze brain activities. In order to determine whether or not particular subjects' brain signals exhibit epileptic activities, epileptologists often spend considerable amount of time to review MEG recordings. This paper proposes a new algorithm for automatic classification of MEG data into two classes: data that belongs to healthy subjects and data that belongs to epileptic subjects. The classifier makes use of energy values of Delta and Theta bands. The effectiveness of proposed classifier has been tested using real MEG data obtained from 35 healthy subjects and 35 epileptic patients. Results obtained from the classifier show that the proposed classifier can be used as a tool in the initial diagnosis phase of epilepsy.
机译:最初诊断癫痫最常用的临床工具是脑电图(EEG)。脑磁图(MEG)技术的最新进展为分析大脑活动提供了新的信息来源。为了确定特定受试者的脑信号是否表现出癫痫活动,癫痫学家经常花费大量时间来检查MEG记录。本文提出了一种新的算法,可将MEG数据自动分类为两类:属于健康受试者的数据和属于癫痫受试者的数据。分类器利用Δ和θ带的能量值。已使用从35位健康受试者和35位癫痫患者获得的真实MEG数据测试了建议分类器的有效性。从分类器获得的结果表明,所提出的分类器可用作癫痫的初始诊断阶段的工具。

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