Frontiers in Neuroscience (May 2023)

Triple-network analysis of Alzheimer’s disease based on the energy landscape

  • Youjun Li,
  • Youjun Li,
  • Simeng An,
  • Simeng An,
  • Tianlin Zhou,
  • Tianlin Zhou,
  • Chunwang Su,
  • Chunwang Su,
  • Siping Zhang,
  • Siping Zhang,
  • Chenxi Li,
  • Junjie Jiang,
  • Junjie Jiang,
  • Yunfeng Mu,
  • Nan Yao,
  • Nan Yao,
  • Zi-Gang Huang,
  • Zi-Gang Huang,
  • Zi-Gang Huang,
  • Alzheimer’s Disease Neuroimaging Initiative

DOI
https://doi.org/10.3389/fnins.2023.1171549
Journal volume & issue
Vol. 17

Abstract

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IntroductionResearch on the brain activity during resting state has found that brain activation is centered around three networks, including the default mode network (DMN), the salient network (SN), and the central executive network (CEN), and switches between multiple modes. As a common disease in the elderly, Alzheimer’s disease (AD) affects the state transitions of functional networks in the resting state.MethodsEnergy landscape, as a new method, can intuitively and quickly grasp the statistical distribution of system states and information related to state transition mechanisms. Therefore, this study mainly uses the energy landscape method to study the changes of the triple-network brain dynamics in AD patients in the resting state.ResultsAD brain activity patterns are in an abnormal state, and the dynamics of patients with AD tend to be unstable, with an unusually high flexibility in switching between states. Also , the subjects’ dynamic features are correlated with clinical index.DiscussionThe atypical balance of large-scale brain systems in patients with AD is associated with abnormally active brain dynamics. Our study are helpful for further understanding the intrinsic dynamic characteristics and pathological mechanism of the resting-state brain in AD patients.

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