Hata Masahiro, Miyazaki Yuki, Mori Kohji, Yoshiyama Kenji, Akamine Shoshin, Kanemoto Hideki, Gotoh Shiho, Omori Hisaki, Hirashima Atsuya, Satake Yuto, Suehiro Takashi, Takahashi Shun, Ikeda Manabu
Department of Psychiatry, Osaka University Graduate School of Medicine, 2-2 Yamadaoka, Suita, 565-0871, Osaka, Japan.
Health and Counseling Center, Osaka University, Osaka, Japan.
Sci Rep. 2025 Jan 15;15(1):2067. doi: 10.1038/s41598-025-86449-2.
Diagnosing Alzheimer's disease (AD) through pathological markers is typically costly and invasive. This study aims to find a noninvasive, cost-effective method using portable electroencephalography (EEG) to detect changes in AD-related biomarkers in cerebrospinal fluid (CSF). A total of 102 patients, both with and without AD-related biomarker changes (amyloid beta and phosphorylated tau), were recorded using a 2-minute resting-state portable EEG. A machine-learning algorithm then analyzed the EEG data to identify these biomarker changes. The results showed that the machine learning model could distinguish patients with AD-related biomarker changes, achieving 68.1% accuracy (AUROC 0.75) for amyloid beta and 71.2% accuracy (AUROC 0.77) for phosphorylated tau, with gamma activities being key features. When excluding cases with idiopathic normal pressure hydrocephalus, accuracy improved to 74.1% (AUROC 0.80) for amyloid beta and 73.1% (AUROC 0.80) for phosphorylated tau. This study suggests that portable EEG combined with machine learning is a promising noninvasive and cost-effective tool for early AD-related pathological marker screening, which could enhance neurophysiological understanding and diagnostic accessibility.
通过病理标志物诊断阿尔茨海默病(AD)通常成本高昂且具有侵入性。本研究旨在找到一种使用便携式脑电图(EEG)检测脑脊液(CSF)中AD相关生物标志物变化的非侵入性、经济高效的方法。共有102名患者,包括有和没有AD相关生物标志物变化(淀粉样蛋白β和磷酸化tau蛋白)的患者,使用2分钟静息状态便携式脑电图进行记录。然后,一种机器学习算法分析脑电图数据以识别这些生物标志物变化。结果表明,机器学习模型能够区分有AD相关生物标志物变化的患者,对于淀粉样蛋白β的准确率达到68.1%(曲线下面积0.75),对于磷酸化tau蛋白的准确率达到71.2%(曲线下面积0.77),其中γ活动是关键特征。当排除特发性正常压力脑积水病例时,淀粉样蛋白β的准确率提高到74.1%(曲线下面积0.80),磷酸化tau蛋白的准确率提高到73.1%(曲线下面积0.80)。本研究表明,便携式脑电图结合机器学习是一种用于早期AD相关病理标志物筛查的有前景的非侵入性且经济高效的工具,这可以增强神经生理学理解和诊断可及性。