构造(python库)
公制(单位)
认知障碍
图层(电子)
数学
特征向量
疾病
逻辑回归
阿尔茨海默病
计算机科学
代数数
多项式logistic回归
模式识别(心理学)
认知
统计
心理学
人工智能
医学
神经科学
内科学
物理
计算机网络
数学分析
经济
有机化学
化学
量子力学
运营管理
作者
Ignacio Echegoyen,David López‐Sanz,Fernando Maestú,Javier M. Buldú
标识
DOI:10.1088/2632-072x/ac3ddd
摘要
Abstract We investigate the alterations of functional networks of patients suffering from mild cognitive impairment and Alzheimer’s disease (AD) when compared to healthy individuals. Departing from the magnetoencephalographic recordings of these three groups, we construct and analyse the corresponding single layer functional networks at different frequency bands, both at the sensors and the regions of interest (ROI) levels. Different network parameters show statistically significant differences, with global efficiency being the one having the most pronounced differences between groups. Next, we extend the analyses to the frequency-band multilayer networks (MN) of the same dataset. Using the mutual information as a metric to evaluate the coordination between brain regions, we construct the αβ MN and analyse their algebraic connectivity at baseline λ 2− BSL (i.e., the second smallest eigenvalue of the corresponding Laplacian matrices). We report statistically significant differences at the sensor level, despite the fact that these differences are not clearly observed when networks are obtained at the ROIs level (i.e., after a source reconstruction procedure). Next, we modify the weights of the inter-links of the multilayer network to identify the value of the algebraic connectivity λ 2− T leading to a transition where layers can be considered to be fully merged. However, differences between the values of λ 2− T of the three groups are not statistically significant. Finally, we developed nested multinomial logistic regression models (MNR models), with the aim of predicting group labels with the parameters extracted from the MN ( λ 2− BSL and λ 2− T ). Using these models, we are able to quantify how age influences the risk of suffering AD and how the algebraic connectivity of frequency-based multilayer functional networks could be used as a biomarker of AD in clinical contexts.
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