Masahiro Hata, Yuki Miyazaki, Kohji Mori, K. Yoshiyama, S. Akamine, Hideki Kanemoto, S. Gotoh, Hisaki Omori, Atsuya Hirashima, Y. Satake, Takashi Suehiro, Shun Takahashi, Manabu Ikeda
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引用次数: 0
摘要
目前,由生物标志物支持的阿尔茨海默病(AD)诊断因侵入性和成本问题而受到阻碍。本研究旨在利用便携式脑电图(EEG)来应对这些挑战。我们提出了一种新颖、无创且经济有效的方法,利用生物标记物证实的 AD 患者样本来识别 AD,以促进早期和方便的疾病筛查。这项研究包括 35 名经脑脊液采样证实的生物标记物 AD 患者,以及 35 名年龄和性别平衡的健康志愿者(HVs)。所有参与者都接受了便携式脑电图记录,重点是闭眼状态下 2 分钟的静息态脑电图。脑电图记录被转换为脑电图图像,并使用尖端深度学习模型 "视觉转换器(ViT)"对其进行分析,以区分患者和健康志愿者。我们的研究结果凸显了便携式脑电图与先进的深度学习技术相结合作为生物标志物验证型 AD 筛查变革性工具的潜力。这项研究不仅有助于从神经生理学角度理解注意力缺失症,还为开发无创诊断方法开辟了新途径。所提出的方法为未来的临床应用铺平了道路,为解决痴呆症先进诊断方法的局限性提供了一个前景广阔的解决方案。
Utilizing portable electroencephalography to screen for pathology of Alzheimer’s disease: a methodological advancement in diagnosis of neurodegenerative diseases
The current biomarker-supported diagnosis of Alzheimer’s disease (AD) is hindered by invasiveness and cost issues. This study aimed to address these challenges by utilizing portable electroencephalography (EEG). We propose a novel, non-invasive, and cost-effective method for identifying AD, using a sample of patients with biomarker-verified AD, to facilitate early and accessible disease screening.This study included 35 patients with biomarker-verified AD, confirmed via cerebrospinal fluid sampling, and 35 age- and sex-balanced healthy volunteers (HVs). All participants underwent portable EEG recordings, focusing on 2-minute resting-state EEG epochs with closed eyes state. EEG recordings were transformed into scalogram images, which were analyzed using “vision Transformer(ViT),” a cutting-edge deep learning model, to differentiate patients from HVs.The application of ViT to the scalogram images derived from portable EEG data demonstrated a significant capability to distinguish between patients with biomarker-verified AD and HVs. The method achieved an accuracy of 73%, with an area under the receiver operating characteristic curve of 0.80, indicating robust performance in identifying AD pathology using neurophysiological measures.Our findings highlight the potential of portable EEG combined with advanced deep learning techniques as a transformative tool for screening of biomarker-verified AD. This study not only contributes to the neurophysiological understanding of AD but also opens new avenues for the development of accessible and non-invasive diagnostic methods. The proposed approach paves the way for future clinical applications, offering a promising solution to the limitations of advanced diagnostic practices for dementia.