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A Convolutional Neural Network based self-learning approach for classifying neurodegenerative states from EEG signals in dementia

机译:基于卷积神经网络的自学习方法,用于从痴呆症的脑电信号中对神经退行性状态进行分类

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In this paper, a novel deep learning based approach is proposed for the automatic classification of Electroencephalographic (EEG) signals of subjects diagnosed with the dementia of Alzheimer's disease (AD), Mild Cognitive Impairment (MCI) and Healthy Control (HC). Specifically, a custom Convolutional Neural Network (CNN) is designed to receive as input AD/MCI/HC EEG segments (epochs) of the same temporal width, and perform 2-way classification tasks: AD vs. HC, AD vs. MCI, MCI vs. HC. Our proposed architecture, termed EEG-CNN, is shown to exhibit remarkable abilities to self-learn relevant features directly from the EEG traces, avoiding the need for hand-crafted feature extraction engineering. Comparative experimental results demonstrate the promising performance of EEG-CNN, which is based on an analysis of the EEG time series only, reporting accuracies of 85.78 ± 2.18%, 69.03 ± 1.33%, 85.34 ± 1.86% in AD vs. HC, AD vs. MCI and MCI vs. HC classifications, respectively.
机译:本文采用了一种新的基于深度学习的方法,用于自动分类诊断患有阿尔茨海默病(AD),轻度认知障碍(MCI)和健康对照(HC)的痴呆症的脑电图(EEG)信号的自动分类。具体地,定制卷积神经网络(CNN)被设计为接收与相同时间宽度的输入AD / MCI / HC EEG段(时代),并执行2路分类任务:AD与HC,AD与MCI, MCI与HC。我们所提出的架构EEG-CNN的架构被证明可以直接从脑电图迹线进行自学学习相关特征,避免需要手工制作的特征提取工程。比较实验结果表明EEG-CNN的有希望的性能,基于EEG时间序列的分析,报告准确性为85.78±2.18%,69.03±1.33%,85.34±1.86%,AD与HC,AD vs 。MCI和MCI与HC分类分别。

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