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Brain network alterations in Alzheimer's disease measured by Eigenvector centrality in fMRI are related to cognition and CSF biomarkers

机译:通过特征向量中心性在fMRI中测得的阿尔茨海默病脑网络变化与认知和CSF生物标志物有关

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Recent imaging studies have demonstrated functional brain network changes in patients with Alzheimer's disease (AD). Eigenvector centrality (EC) is a graph analytical measure that identifies prominent regions in the brain network hierarchy and detects localized differences between patient populations. This study used voxel-wise EC mapping (ECM) to analyze individual whole-brain resting-state functional magnetic resonance imaging (MRI) scans in 39 AD patients (age 67 ± 8) and 43 healthy controls (age 69 ± 7). Between-group differences were assessed by a permutation-based method. Associations of EC with biomarkers for AD pathology in cerebrospinal fluid (CSF) and Mini Mental State Examination (MMSE) scores were assessed using Spearman correlation analysis. Decreased EC was found bilaterally in the occipital cortex in AD patients compared to controls. Regions of increased EC were identified in the anterior cingulate and paracingulate gyrus. Across groups, frontal and occipital EC changes were associated with pathological concentrations of CSF biomarkers and with cognition. In controls, decreased EC values in the occipital regions were related to lower MMSE scores. Our main finding is that ECM, a hypothesis-free and computationally efficient analysis method of functional MRI (fMRI) data, identifies changes in brain network organization in AD patients that are related to cognition and underlying AD pathology. The relation between AD-like EC changes and cognitive performance suggests that resting-state fMRI measured EC is a potential marker of disease severity for AD.
机译:最近的影像学研究表明,阿尔茨海默氏病(AD)患者的功能性脑网络发生了变化。特征向量中心度(EC)是一种图形分析度量,可识别大脑网络层次结构中的突出区域并检测患者人群之间的局部差异。这项研究使用体素智能EC映射(ECM)分析了39名AD患者(67±8岁)和43名健康对照(69±7岁)的单个全脑静止状态功能磁共振成像(MRI)扫描。组间差异通过基于排列的方法进行评估。使用Spearman相关分析评估EC与脑脊液(CSF)和迷你精神状态检查(MMSE)评分中AD病理学生物标志物的关联。与对照组相比,AD患者双侧枕叶皮质的EC降低。在前扣带回和扣带回中鉴定出EC增加的区域。跨组,额叶和枕叶EC变化与脑脊液生物标志物的病理学浓度和认知有关。在对照组中,枕区的EC值降低与MMSE分数降低有关。我们的主要发现是,ECM是一种无假设且计算有效的功能性MRI(fMRI)数据分析方法,可识别与认知和基础AD病理相关的AD患者大脑网络组织的变化。 AD样EC变化与认知能力之间的关系表明,静息状态fMRI测量的EC是AD疾病严重程度的潜在标志。

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