Vo Tuan, Ibrahim Ali K, Zhuang Hanqi
EECS Department, Florida Atlantic University, Boca Raton, FL 33431, USA.
Neurol Int. 2025 Jun 13;17(6):91. doi: 10.3390/neurolint17060091.
Alzheimer's disease (AD) is a progressively debilitating neurodegenerative disorder characterized by the accumulation of abnormal proteins, such as amyloid-beta plaques and tau tangles, leading to disruptions in memory storage and neuronal degeneration. Despite its portability, non-invasiveness, and cost-effectiveness, electroencephalography (EEG) as a diagnostic tool for AD faces challenges due to its susceptibility to noise and the complexity involved in the analysis. This study introduces a novel methodology employing three distinct stages for data-driven AD diagnosis: signal pre-processing, frame-level classification, and subject-level classification. At the frame level, convolutional neural networks (CNNs) are employed to extract features from spectrograms, scalograms, and Hilbert spectra. These features undergo fusion and are then fed into another CNN for feature selection and subsequent frame-level classification. After each frame for a subject is classified, a procedure is devised to determine if the subject has AD or not. The proposed model demonstrates commendable performance, achieving over 80% accuracy, 82.5% sensitivity, and 81.3% specificity in distinguishing AD patients from healthy individuals at the subject level. This performance enables early and accurate diagnosis with significant clinical implications, offering substantial benefits over the existing methods through reduced misdiagnosis rates and improved patient outcomes, potentially revolutionizing AD screening and diagnostic practices. However, the model's efficacy diminishes when presented with data from frontotemporal dementia (FTD) patients, emphasizing the need for further model refinement to address the intricate nuances associated with the simultaneous detection of various neurodegenerative disorders alongside AD.
阿尔茨海默病(AD)是一种逐渐使人衰弱的神经退行性疾病,其特征是异常蛋白质的积累,如β-淀粉样蛋白斑块和tau缠结,导致记忆存储中断和神经元退化。尽管脑电图(EEG)具有便携性、非侵入性和成本效益,但作为AD的诊断工具,由于其易受噪声影响以及分析过程的复杂性,面临着挑战。本研究引入了一种新颖的方法,采用三个不同阶段进行数据驱动的AD诊断:信号预处理、帧级分类和受试者级分类。在帧级,卷积神经网络(CNN)用于从频谱图、尺度图和希尔伯特谱中提取特征。这些特征进行融合,然后输入另一个CNN进行特征选择和随后的帧级分类。在对受试者的每一帧进行分类后,设计了一个程序来确定该受试者是否患有AD。所提出的模型表现出了值得称赞的性能,在受试者水平上区分AD患者和健康个体时,准确率超过80%,灵敏度为82.5%,特异性为81.3%。这种性能能够实现早期准确诊断,具有重大的临床意义,通过降低误诊率和改善患者预后,相对于现有方法具有显著优势,可能会彻底改变AD的筛查和诊断实践。然而,当面对额颞叶痴呆(FTD)患者的数据时,该模型的有效性会降低,这强调了需要进一步改进模型,以解决与同时检测AD以及各种神经退行性疾病相关的复杂细微差别。