Centre for Biomedical Engineering, Department of Mechanical Engineering Sciences, Faculty of Engineering and Physical Sciences, University of Surrey, Guildford, United Kingdom.
School of Engineering, Institute for Digital Communications, University of Edinburgh, Edinburgh, United Kingdom.
J Neural Eng. 2021 Jun 17;18(4). doi: 10.1088/1741-2552/ac05d8.
This study aimed to produce a novel deep learning (DL) model for the classification of subjects with Alzheimer's disease (AD), mild cognitive impairment (MCI) subjects and healthy ageing (HA) subjects using resting-state scalp electroencephalogram (EEG) signals.The raw EEG data were pre-processed to remove unwanted artefacts and sources of noise. The data were then processed with the continuous wavelet transform, using the Morse mother wavelet, to create time-frequency graphs with a wavelet coefficient scale range of 0-600. The graphs were combined into tiled topographical maps governed by the 10-20 system orientation for scalp electrodes. The application of this processing pipeline was used on a data set of resting-state EEG samples from age-matched groups of 52 AD subjects (82.3 ± 4.7 years of age), 37 MCI subjects (78.4 ± 5.1 years of age) and 52 HA subjects (79.6 ± 6.0 years of age). This resulted in the formation of a data set of 16197 topographical images. This image data set was then split into training, validation and test images and used as input to an AlexNet DL model. This model was comprised of five hidden convolutional layers and optimised for various parameters such as learning rate, learning rate schedule, optimiser, and batch size.The performance was assessed by a tenfold cross-validation strategy, which produced an average accuracy result of 98.9 ± 0.4% for the three-class classification of AD vs MCI vs HA. The results showed minimal overfitting and bias between classes, further indicating the strength of the model produced.These results provide significant improvement for this classification task compared to previous studies in this field and suggest that DL could contribute to the diagnosis of AD from EEG recordings.
本研究旨在利用静息态头皮脑电图(EEG)信号,为阿尔茨海默病(AD)、轻度认知障碍(MCI)患者和健康老年人(HA)患者的分类建立一种新的深度学习(DL)模型。原始 EEG 数据经过预处理以去除不需要的伪影和噪声源。然后,使用 Morse 母波对数据进行连续小波变换,以创建具有 0-600 范围内的小波系数尺度的时频图。将这些图形组合成受头皮电极 10-20 系统取向控制的平铺地形图。该处理管道的应用程序用于来自年龄匹配的 AD 患者(82.3±4.7 岁)、37 名 MCI 患者(78.4±5.1 岁)和 52 名 HA 患者(79.6±6.0 岁)的静息态 EEG 样本数据集。这导致形成了一个包含 16197 个地形图的数据集。然后,将该图像数据集分为训练、验证和测试图像,并将其用作 AlexNet DL 模型的输入。该模型由五个隐藏的卷积层组成,并针对各种参数(如学习率、学习率计划、优化器和批量大小)进行了优化。通过十折交叉验证策略评估性能,该策略对 AD 与 MCI 与 HA 的三分类产生了 98.9±0.4%的平均准确率结果。结果表明,类间的过拟合和偏差最小,进一步表明了所产生模型的强大性。与该领域的先前研究相比,这些结果为该分类任务提供了显著的改进,并表明 DL 可以为 EEG 记录的 AD 诊断做出贡献。