Sibilano Elena, Brunetti Antonio, Buongiorno Domenico, Lassi Michael, Grippo Antonello, Bessi Valentina, Micera Silvestro, Mazzoni Alberto, Bevilacqua Vitoantonio
Department of Electrical and Information Engineering, Polytechnic University of Bari, Via Orabona 4, 70125 Bari, Italy.
The BioRobotics Institute, Scuola Superiore Sant'Anna, 56025 Pisa, Italy.
J Neural Eng. 2023 Feb 17;20(1). doi: 10.1088/1741-2552/acb96e.
. This study aims to design and implement the first deep learning (DL) model to classify subjects in the prodromic states of Alzheimer's disease (AD) based on resting-state electroencephalographic (EEG) signals.. EEG recordings of 17 healthy controls (HCs), 56 subjective cognitive decline (SCD) and 45 mild cognitive impairment (MCI) subjects were acquired at resting state. After preprocessing, we selected sections corresponding to eyes-closed condition. Five different datasets were created by extracting delta, theta, alpha, beta and delta-to-theta frequency bands using bandpass filters. To classify SCDMCI and HCSCDMCI, we propose a framework based on the transformer architecture, which uses multi-head attention to focus on the most relevant parts of the input signals. We trained and validated the model on each dataset with a leave-one-subject-out cross-validation approach, splitting the signals into 10 s epochs. Subjects were assigned to the same class as the majority of their epochs. Classification performances of the transformer were assessed for both epochs and subjects and compared with other DL models.. Results showed that the delta dataset allowed our model to achieve the best performances for the discrimination of SCD and MCI, reaching an Area Under the ROC Curve (AUC) of 0.807, while the highest results for the HCSCDMCI classification were obtained on alpha and theta with a micro-AUC higher than 0.74.. We demonstrated that DL approaches can support the adoption of non-invasive and economic techniques as EEG to stratify patients in the clinical population at risk for AD. This result was achieved since the attention mechanism was able to learn temporal dependencies of the signal, focusing on the most discriminative patterns, achieving state-of-the-art results by using a deep model of reduced complexity. Our results were consistent with clinical evidence that changes in brain activity are progressive when considering early stages of AD.
本研究旨在设计并实现首个基于静息态脑电图(EEG)信号对处于阿尔茨海默病(AD)前驱期的受试者进行分类的深度学习(DL)模型。在静息状态下采集了17名健康对照(HC)、56名主观认知下降(SCD)和45名轻度认知障碍(MCI)受试者的EEG记录。预处理后,我们选择了对应闭眼状态的片段。通过使用带通滤波器提取δ、θ、α、β和δ到θ频段,创建了五个不同的数据集。为了对SCD/MCI和HC/SCD-MCI进行分类,我们提出了一个基于Transformer架构的框架,该框架使用多头注意力来聚焦输入信号中最相关的部分。我们采用留一受试者交叉验证方法在每个数据集上训练和验证模型,将信号分割为10秒的时段。受试者被分配到与其大多数时段相同的类别。评估了Transformer在时段和受试者方面的分类性能,并与其他DL模型进行了比较。结果表明,δ数据集使我们的模型在区分SCD和MCI方面取得了最佳性能,受试者工作特征曲线下面积(AUC)达到0.807,而在α和θ频段上获得了HC/SCD-MCI分类的最高结果,微AUC高于0.74。我们证明了DL方法可以支持采用EEG这种非侵入性且经济的技术对临床中有AD风险的人群进行分层。之所以能取得这一结果,是因为注意力机制能够学习信号的时间依赖性,聚焦于最具判别力的模式,通过使用复杂度降低的深度模型取得了领先的结果。我们的结果与临床证据一致,即考虑AD早期阶段时大脑活动的变化是渐进的。