Energy landscape analysis of brain network dynamics in Alzheimer’s disease

Le Xing, Zhitao Guo, Zhiying Long
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Abstract

Alzheimer’s disease (AD) is a common neurodegenerative dementia, characterized by abnormal dynamic functional connectivity (DFC). Traditional DFC analysis, assuming linear brain dynamics, may neglect the complexity of the brain’s nonlinear interactions. Energy landscape analysis offers a holistic, nonlinear perspective to investigate brain network attractor dynamics, which was applied to resting-state fMRI data for AD in this study.This study utilized resting-state fMRI data from 60 individuals, comparing 30 Alzheimer’s patients with 30 controls, from the Alzheimer’s Disease Neuroimaging Initiative. Energy landscape analysis was applied to the data to characterize the aberrant brain network dynamics of AD patients.The AD group stayed in the co-activation state for less time than the healthy control (HC) group, and a positive correlation was identified between the transition frequency of the co-activation state and behavior performance. Furthermore, the AD group showed a higher occurrence frequency and transition frequency of the cognitive control state and sensory integration state than the HC group. The transition between the two states was positively correlated with behavior performance.The results suggest that the co-activation state could be important to cognitive processing and that the AD group possibly raised cognitive ability by increasing the occurrence and transition between the impaired cognitive control and sensory integration states.
阿尔茨海默病大脑网络动力学的能量景观分析
阿尔茨海默病(AD)是一种常见的神经退行性痴呆症,以动态功能连接(DFC)异常为特征。传统的 DFC 分析假定大脑是线性动态的,可能会忽略大脑非线性相互作用的复杂性。能量景观分析为研究大脑网络吸引子动力学提供了一个整体的、非线性的视角,本研究将其应用于注意力缺失症的静息态 fMRI 数据。与健康对照(HC)组相比,AD 组在共激活状态下停留的时间更短,共激活状态的转换频率与行为表现之间存在正相关。此外,AD 组认知控制状态和感觉统合状态的发生频率和过渡频率均高于 HC 组。结果表明,共同激活状态可能对认知处理很重要,而注意力缺失症组可能通过增加认知控制受损状态和感觉统合状态之间的发生率和转换率来提高认知能力。
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