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EEG and Cognitive Biomarkers Based Mild Cognitive Impairment Diagnosis

机译:基于脑电图和认知生物标志物的轻度认知障碍诊断

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Objective: Recently, Electroencephalogram (EEG) shows potential in the diagnosis of Alzheimer's disease and other dementia. We aim to investigate whether EEG and selected cognitive biomarkers can classify mild cognitive impairment (MCI), dementia and healthy subjects using support vector machine classifier in Indian cohort.Methods: Eight EEG biomarkers, power spectral density, skewness, kurtosis, spectral skewness, spectral kurtosis, spectral crest factor, spectral entropy (SE), fractal dimension (FD) were analyzed from 44 subjects in four conditions; eye-open, eye-close, finger tapping test (FTT) and continuous performance test (CPT). FFT and CPT are used to measure motor speed and sustained attention as these cognitive biomarkers are free from the educational barrier.Results: We achieved very good accuracy for each event from 73.4% to 89.8% for three binary classes. We investigated that FTT (84% accuracy), CPT (88% accuracy) were the most efficient events to diagnose MCI from dementia. MCI from control successfully diagnosed with 89.8% accuracy in FTT, 73.4% accuracy in CPT and 84.1% accuracy in eye open resting state. Even though cognitive biomarkers were also adequately diagnosed MCI from other groups.Conclusions: Our classifier findings are consistent with the utmost evidence. Yet, our results are promising and especially newfangled in the case of FTT and CPT from the prior studies. We developed an experimental protocol and proposed a novel technique to classify MCI with efficient biomarkers. (C) 2018 AGBM. Published by Elsevier Masson SAS. All rights reserved.
机译:目的:最近,脑电图(EEG)在诊断阿尔茨海默氏病和其他痴呆症方面显示出潜力。我们旨在研究印度人群中使用支持向量机分类器对脑电图和选定的认知生物标记物是否可以对轻度认知障碍(MCI),痴呆和健康受试者进行分类。方法:八个脑电图生物标记物,功率谱密度,偏度,峰度,光谱偏度,光谱在四个条件下分析了44名受试者的峰度,波峰因数,光谱熵(SE),分形维数(FD)。睁眼,闭眼,轻拍测试(FTT)和连续性能测试(CPT)。 FFT和CPT用于测量运动速度和持续注意力,因为这些认知生物标志物不受教育障碍的影响。结果:对于每个事件,我们在三个二元类中都取得了非常好的准确性,从73.4%到89.8%。我们调查了FTT(准确度为84%),CPT(准确度为88%)是诊断痴呆MCI最有效的事件。来自对照的MCI成功诊断为FTT的准确度为89.8%,CPT的准确度为73.4%,睁眼休息状态的准确度为84.1%。即使认知生物标志物也已被其他组的MCI充分诊断。结论:我们的分类器发现与最大的证据一致。然而,我们的结果是有前途的,特别是对于先前研究中的FTT和CPT而言,是全新的。我们开发了一个实验协议,并提出了一种新颖的技术来对具有有效生物标志物的MCI分类。 (C)2018年AGBM。由Elsevier Masson SAS发布。版权所有。

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