Mohammadian Fatemeh, Noroozian Maryam, Sadeghi Arash Zare, Malekian Vahid, Saffar Azam, Talebi Mahsa, Hashemi Hasan, Mobarak Salari Hanieh, Samadi Fardin, Sodaei Forough, Rad Hamidreza Saligheh
Department of Medical Physics and Biomedical Engineering, Tehran University of Medical Sciences, Tehran 1417613151, Iran.
Department of Psychiatry, Roozbeh Hospital, Tehran University of Medical Sciences, Tehran 13185/1741, Iran.
Brain Sci. 2023 Feb 4;13(2):265. doi: 10.3390/brainsci13020265.
(1) Background: Alzheimer's disease (AD) is a neurodegenerative disease with a high prevalence. Despite the cognitive tests to diagnose AD, there are pitfalls in early diagnosis. Brain deposition of pathological markers of AD can affect the direction and intensity of the signaling. The study of effective connectivity allows the evaluation of intensity flow and signaling pathways in functional regions, even in the early stage, known as amnestic mild cognitive impairment (aMCI). (2) Methods: 16 aMCI, 13 AD, and 14 normal subjects were scanned using resting-state fMRI and T1-weighted protocols. After data pre-processing, the signal of the predefined nodes was extracted, and spectral dynamic causal modeling analysis (spDCM) was constructed. Afterward, the mean and standard deviation of the Jacobin matrix of each subject describing effective connectivity was calculated and compared. (3) Results: The maps of effective connectivity in the brain networks of the three groups were different, and the direction and strength of the causal effect with the progression of the disease showed substantial changes. (4) Conclusions: Impaired information flow in the resting-state networks of the aMCI and AD groups was found versus normal groups. Effective connectivity can serve as a potential marker of Alzheimer's pathophysiology, even in the early stages of the disease.
(1) 背景:阿尔茨海默病(AD)是一种高患病率的神经退行性疾病。尽管有认知测试用于诊断AD,但早期诊断仍存在缺陷。AD病理标志物在大脑中的沉积会影响信号传导的方向和强度。有效连接性研究能够评估功能区域内的强度流和信号传导途径,即使在早期阶段,即遗忘型轻度认知障碍(aMCI)阶段。(2) 方法:对16名aMCI患者、13名AD患者和14名正常受试者采用静息态功能磁共振成像(fMRI)和T1加权成像协议进行扫描。数据预处理后,提取预定义节点的信号,并构建频谱动态因果模型分析(spDCM)。随后,计算并比较描述每个受试者有效连接性的雅可比矩阵的均值和标准差。(3) 结果:三组大脑网络的有效连接性图谱不同,且随着疾病进展,因果效应的方向和强度呈现出显著变化。(4) 结论:与正常组相比,发现aMCI组和AD组静息态网络中的信息流受损。即使在疾病早期阶段,有效连接性也可作为阿尔茨海默病病理生理学的潜在标志物。