Department of Electrical and Electronics Engineering, Dicle University, Diyarbakir, Turkey.
J Neurosci Methods. 2024 Mar;403:110057. doi: 10.1016/j.jneumeth.2024.110057. Epub 2024 Jan 10.
Individuals in the early stages of Alzheimer's Disease (AD) are typically diagnosed with Mild Cognitive Impairment (MCI). MCI represents a transitional phase between normal cognitive function and AD. Electroencephalography (EEG) records carry valuable insights into cerebral cortex brain activities to analyze neuronal degeneration. To enhance the precision of dementia diagnosis, automatic and intelligent methods are required for the analysis and processing of EEG signals.
This paper aims to address the challenges associated with MCI diagnosis by leveraging EEG signals and deep learning techniques. The analysis in this study focuses on processing the information embedded within the sequence of raw EEG time series data. EEG recordings are collected from 10 Healthy Controls (HC) and 10 MCI participants using 19 electrodes during a 30 min eyes-closed session. EEG time series are transformed into 2 separate formats of input tensors and applied to deep neural network architectures. Convolutional Neural Network (CNN) and ResNet from scratch are performed with 2D time series with different segment lengths. Furthermore, EEGNet and DeepConvNet architectures are utilized for 1D time series.
ResNet demonstrates superior effectiveness in detecting MCI when compared to CNN architecture. Complete discrimination is achieved using EEGNet and DeepConvNet for noisy segments.
ResNet has yielded a 3 % higher accuracy rate compared to CNN. None of the architectures in the literature have achieved 100 % accuracy except proposed EEGNet and DeepConvnet.
Deep learning architectures hold great promise in enhancing the accuracy of early MCI detection.
阿尔茨海默病(AD)早期的个体通常被诊断为轻度认知障碍(MCI)。MCI 代表了正常认知功能和 AD 之间的过渡阶段。脑电图(EEG)记录提供了对大脑皮层脑活动的有价值的见解,以分析神经元退化。为了提高痴呆症诊断的准确性,需要对 EEG 信号进行自动和智能分析与处理。
本文旨在通过利用 EEG 信号和深度学习技术来解决与 MCI 诊断相关的挑战。本研究的分析重点是处理原始 EEG 时间序列数据序列中嵌入的信息。使用 19 个电极,从 10 名健康对照(HC)和 10 名 MCI 参与者在 30 分钟闭眼期间收集 EEG 记录。EEG 时间序列转换为 2 种单独格式的输入张量,并应用于深度神经网络架构。使用不同段长的 2D 时间序列对卷积神经网络(CNN)和从头开始的 ResNet 进行了卷积。此外,还对 1D 时间序列使用了 EEGNet 和 DeepConvNet 架构。
ResNet 在检测 MCI 方面比 CNN 架构更有效。使用 EEGNet 和 DeepConvNet 可以完全区分噪声段。
ResNet 的准确率比 CNN 高 3%。除了提出的 EEGNet 和 DeepConvnet 之外,文献中的任何架构都没有达到 100%的准确率。
深度学习架构在提高早期 MCI 检测的准确性方面具有很大的潜力。