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首页> 外文期刊>Current Organic Synthesis >Resting-state EEG signal classification of amnestic mild cognitive impairment with type 2 diabetes mellitus based on multispectral image and convolutional neural network
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Resting-state EEG signal classification of amnestic mild cognitive impairment with type 2 diabetes mellitus based on multispectral image and convolutional neural network

机译:基于多光谱图像和卷积神经网络的2型糖尿病,休息状态EEG信号分类Amnestic Mive认知障碍

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摘要

Objective. The purpose of this study is to judge whether this combination method of multispectral image and convolutional neural network (CNN) method can be used to distinguish amnestic mild cognitive impairment (aMCI) with Type 2 diabetes mellitus (T2DM) and normal controls (NC) with T2DM effectively. Approach. In this study, the authors first combined EEG signals from aMCI patients with T2DM and NC with T2DM on five different frequency bands, including Theta, Alpha1, Alpha2, Beta1, and Beta2. Then, the authors converted these time series into a series of multispectral images. Finally, the images data were classified with the CNN method. Main results. The classification effects of up to 89%, 91%, and 92% are obtained on the three combinations of frequency bands: Theta, Alpha1, and Alpha2; Alpha1, Alpha2, and Beta1; and Alpha2, Beta1, and Beta2. The spatial properties of EEG signals are highlighted, and its classification performance is found to be better than all the previous methods in the field of aMCI and T2DM diagnosis. The combination of multispectral images and CNN can be used as an effective biomarker for distinguishing the EEG signals in patients with aMCI and T2DM and in patients with NC with T2DM. Significance. The combined approach used in this paper provides a new perspective for the analysis of EEG signals in patients with aMCI and T2DM.
机译:客观的。本研究的目的是判断多光谱图像和卷积神经网络(CNN)方法的这种组合方法可用于将Amnestic温和认知障碍(AMCI)与2型糖尿病(T2DM)和正常对照(NC)区分开T2DM有效。方法。在本研究中,作者首先将来自AMCI患者的EEG信号与T2DM的AMCI患者组合在五个不同的频带上,包括θ,α1,α2,beta1和beta2。然后,作者将这些时间序列转换为一系列多光谱图像。最后,使用CNN方法分类图像数据。主要结果。在频带的三种组合上获得高达89%,91%和92%的分类效果:Theta,alpha1和alpha2; alpha1,alpha2和beta1;和alpha2,beta1和beta2。 EEG信号的空间属性被突出显示,并发现其分类性能比AMCI和T2DM诊断领域的所有先前方法更好。多光谱图像和CNN的组合可以用作有效的生物标志物,用于区分AMCI和T2DM和T2DM患者患者中的脑电图信号。意义。本文所用的组合方法为AMCI和T2DM患者的脑电图分析了一种新的视角。

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