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Classification Analysis of Chronological Age Using Brief Resting Electroencephalographic (EEG) Recordings

机译:使用简短的静息脑电图(EEG)记录对年代年龄进行分类分析

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The present study aims to build a classification model that discriminates between chronological ages of subjects based on resting-state electroence-phalography (EEG) data collected from a community sample of 269 children aged 7 to 11. Specifically, spectral power densities in four classical frequency bands: Delta (0.5-3 Hz), Theta (4-7 Hz), Alpha (8-12 Hz) and Beta (14-25 Hz) were extracted for each electrode as features, and fed to three classification algorithms including logistic regression (LR), support vector machine (SVM), and least absolute shrinkage and selection operator (Lasso). In addition, principal component analysis (PCA) was used to reduce the dimensions of the feature space. The results demonstrated that SVM and Lasso evidenced better performance (maximal accuracy = 80.68 ± 2.01% by SVM and 77.82 ± 2.11% by Lasso) when applied to original feature space, but LR yielded the best performance with PCA (80.72 ± 1.73%). The accuracy of binary classification exhibited a decreasing trend with diminishing chronological gaps between the groups.
机译:本研究旨在建立一个分类模型,该模型基于从269位7至11岁儿童的社区样本中收集的静息态电声法(EEG)数据来区分受试者的年代年龄。具体来说,四个经典频率的频谱功率密度频带:为每个电极提取Delta(0.5-3 Hz),Theta(4-7 Hz),Alpha(8-12 Hz)和Beta(14-25 Hz)作为特征,并馈入三种分类算法,包括逻辑回归(LR),支持向量机(SVM)和最小绝对收缩和选择运算符(Lasso)。此外,主成分分析(PCA)用于减小特征空间的尺寸。结果表明,当应用于原始特征空间时,SVM和Lasso表现出更好的性能(SVM的最大准确度= 80.68±2.01%,Lasso的最大准确度= 77.82±2.11%),但是LR在PCA上表现出最佳性能(80.72±1.73%)。二元分类的准确性随着组间时间间隔的减小而呈现出下降的趋势。

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