Zandbagleh Ahmad, Miltiadous Andreas, Sanei Saeid, Azami Hamed
School of Electrical Engineering (AZ), Iran University of Science and Technology, Tehran, Iran.
Department of Informatics and Telecommunications (AM), University of Ioannina, Arta, Greece.
Am J Geriatr Psychiatry. 2024 Nov;32(11):1361-1382. doi: 10.1016/j.jagp.2024.06.009. Epub 2024 Jul 4.
Aging, frontotemporal dementia (FTD), and Alzheimer's dementia (AD) manifest electroencephalography (EEG) alterations, particularly in the beta-to-theta power ratio derived from linear power spectral density (PSD). Given the brain's nonlinear nature, the EEG nonlinear features could provide valuable physiological indicators of aging and cognitive impairment. Multiscale dispersion entropy (MDE) serves as a sensitive nonlinear metric for assessing the information content in EEGs across biologically relevant time scales.
To compare the MDE-derived beta-to-theta entropy ratio with its PSD-based counterpart to detect differences between healthy young and elderly individuals and between different dementia subtypes.
Scalp EEG recordings were obtained from two datasets: 1) Aging dataset: 133 healthy young and 65 healthy older adult individuals; and 2) Dementia dataset: 29 age-matched healthy controls (HC), 23 FTD, and 36 AD participants. The beta-to-theta ratios based on MDE vs. PSD were analyzed for both datasets. Finally, the relationships between cognitive performance and the beta-to-theta ratios were explored in HC, FTD, and AD.
In the Aging dataset, older adults had significantly higher beta-to-theta entropy ratios than young individuals. In the Dementia dataset, this ratio outperformed the beta-to-theta PSD approach in distinguishing between HC, FTD, and AD. The AD participants had a significantly lower beta-to-theta entropy ratio than FTD, especially in the temporal region, unlike its corresponding PSD-based ratio. The beta-to-theta entropy ratio correlated significantly with cognitive performance.
Our study introduces the beta-to-theta entropy ratio using nonlinear MDE for EEG analysis, highlighting its potential as a sensitive biomarker for aging and cognitive impairment.
衰老、额颞叶痴呆(FTD)和阿尔茨海默病性痴呆(AD)均表现出脑电图(EEG)改变,尤其是在线性功率谱密度(PSD)得出的β与θ功率比方面。鉴于大脑的非线性特性,EEG非线性特征可为衰老和认知障碍提供有价值的生理指标。多尺度分散熵(MDE)是一种敏感的非线性指标,用于评估跨生物相关时间尺度的EEG中的信息含量。
比较基于MDE得出的β与θ熵比及其基于PSD的对应比值,以检测健康年轻人与老年人之间以及不同痴呆亚型之间的差异。
从两个数据集获取头皮EEG记录:1)衰老数据集:133名健康年轻人和65名健康老年人;2)痴呆数据集:29名年龄匹配的健康对照(HC)、23名FTD患者和36名AD患者。对两个数据集分析基于MDE与PSD的β与θ比值。最后,在HC、FTD和AD中探讨认知表现与β与θ比值之间的关系。
在衰老数据集中,老年人的β与θ熵比显著高于年轻人。在痴呆数据集中,该比值在区分HC、FTD和AD方面优于基于PSD的β与θ方法。与基于PSD的相应比值不同,AD患者的β与θ熵比显著低于FTD患者,尤其是在颞叶区域。β与θ熵比与认知表现显著相关。
我们的研究引入了使用非线性MDE进行EEG分析的β与θ熵比,突出了其作为衰老和认知障碍敏感生物标志物的潜力。