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Early Diagnoses of Alzheimer using EEG data and Deep Neural Networks classification

机译:使用EEG数据和深神经网络分类的早期诊断Alzheimer

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Alzheimer's disease has always been a challenge to be detected at early stages as it has always been mistaken as normal aging. It can be recognized when the patient starts to have Mild Cognitive Impairment (MCI) and by that stage, only little can be done as no treatment can reverse its effect but only to delay its progression. In this work, we present a method for early diagnoses of AD by creating a low-cost EEG device along with using a deep neural network that can classify the suspected patients into three classes: MCI patients, AD patients, and healthy patients. This is done using collecting brain wave signals using Electroencephalography (EEG) device during a 3 level N-Back working memory test. This is called event-related potential (ERP), later the data will be cut into small frames, FFT transformed to extract brainwave subbands (theta, alpha, and beta) and then projected to 2D images where it will be used in training convolution neural network for classification. Early detection of Alzheimer will reduce the progression of AD at early stages. We implement and evaluate our hardware and classification with an accuracy of 90.36% for MCI and 92.52% for Alzheimer's disease detection.
机译:阿尔茨海默病的疾病始终是在早期阶段被检测到的挑战,因为它一直被误认为是正常的老化。当患者开始具有轻度认知障碍(MCI)和该阶段时,可以识别它,只有很少可以做,因为没有治疗可以逆转其效果,而只是延迟其进展。在这项工作中,我们通过使用深神经网络创建可疑患者将疑似患者分为三类:MCI患者,AD患者和健康患者来提前诊断AD的早期诊断方法。这是在3级N背部工作存储器测试期间使用使用脑电图(EEG)设备收集脑波信号。这称为与事件相关的潜在(ERP),后来数据将被切割成小帧,FFT转换为提取脑波子带(θ,alpha和beta),然后投影到2D图像,在其中它将用于训练卷积神经网络分类网络。早期检测阿尔茨海默氏症将在早期阶段降低广告的进展。我们实施并评估我们的硬件和分类,精度为MCI 90.36%,对于阿尔茨海默病检测,92.52%。

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