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ARMA modeling for the diagnosis of controlled epileptic activity in young children

机译:arma模型,用于诊断幼儿对照癫痫活动的诊断

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Parametric models are widely used for EEG data analysis. In this experimental study an autoregressive moving average (ARMA) model was used to extract spectral features within defined frequency bands which were then used to discriminate a group of children with controlled mild epilepsy from an age- and sex- matched control group. This study differs from other published works in that it shows that this technique can be used as a biomarker to distinguish the epileptic subjects specifically when the EEG recordings of these subjects are clinically diagnosed as normal. Using the spectral features and a linear discriminant classifier a global classification score of up to 85% was achieved on our clinical data. Furthermore the results showed that epileptic children have significantly higher spectral power in frequency bands up to 45Hz, with the largest difference occurring within the alpha band.
机译:参数模型广泛用于EEG数据分析。在该实验研究中,使用自回归移动平均(ARMA)模型来提取限定的频段内的光谱特征,然后用于区分一组来自年龄和性别匹配的对照组的受控轻度癫痫患儿。该研究与其他公开的作品不同,因为它表明该技术可以用作生物标志物,以便在临床上被视为正常临床诊断的脑电图记录时特别是当这些受试者的脑电图记录中的癫痫毒物。使用光谱特征和线性判别分类器在我们的临床数据中实现了高达85%的全局分类得分。此外,结果表明,癫痫患儿在频带中具有明显高达45Hz的频谱功率,具有最大的差异在α条带内。

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