Javed Ehtasham, Suárez-Méndez Isabel, Susi Gianluca, Román Juan Verdejo, Palva J Matias, Maestú Fernando, Palva Satu
Neuroscience Center, HiLIFE-Helsinki Institute of Life Science, University of Helsinki, Helsinki FI-00014, Finland
Center for Cognitive and Computational Neuroscience, Complutense University of Madrid, Madrid 28015, Spain.
J Neurosci. 2025 Feb 26;45(9):e0688242024. doi: 10.1523/JNEUROSCI.0688-24.2024.
Alzheimer's disease (AD) is the most common form of dementia with continuum of disease progression of increasing severity from subjective cognitive decline (SCD) to mild cognitive impairment (MCI) and lastly to AD. The transition from MCI to AD has been linked to brain hypersynchronization, but the underlying mechanisms leading to this are unknown. Here, we hypothesized that excessive excitation in AD disease progression would shift brain dynamics toward supercriticality across an extended regime of critical-like dynamics. In this framework, healthy brain activity during aging preserves operation at near the critical phase transition at balanced excitation-inhibition (E/I). To test this hypothesis, we used source-reconstructed resting-state MEG data from a cross-sectional cohort ( = 343) of individuals with SCD, MCI, and healthy controls (HC) as well as from a longitudinal cohort ( = 45) of MCI patients. We then assessed brain criticality by quantifying long-range temporal correlations (LRTCs) and functional EI (fE/I) of neuronal oscillations. LRTCs were attenuated in SCD in spectrally and anatomically constrained regions while this breakdown was progressively more widespread in MC. In parallel, fE/I was increased in the MCI but not in the SC cohort. Both observations also predicted the disease progression in the longitudinal cohort. Finally, using machine learning trained on functional (LRTCs, fE/I) and structural (MTL volumes) features, we show that LRTCs and f/EI are the most informative features for accurate classification of individuals with SCD while structural changes accurate classify the individuals with MCI. These findings establish that a shift toward supercritical brain dynamics reflects early AD disease progression.
阿尔茨海默病(AD)是最常见的痴呆形式,其疾病进展呈连续性,从主观认知衰退(SCD)到轻度认知障碍(MCI),最后发展为AD,严重程度不断增加。从MCI到AD的转变与大脑超同步化有关,但其潜在机制尚不清楚。在此,我们假设在AD疾病进展过程中,过度兴奋会使大脑动力学在类似临界动力学的扩展范围内向超临界状态转变。在此框架下,衰老过程中的健康大脑活动在平衡兴奋-抑制(E/I)状态下保持接近临界相变的运行状态。为了验证这一假设,我们使用了来自SCD、MCI个体及健康对照(HC)的横断面队列(n = 343)以及MCI患者的纵向队列(n = 45)的源重建静息态脑磁图(MEG)数据。然后,我们通过量化神经元振荡的长程时间相关性(LRTCs)和功能E/I(fE/I)来评估大脑临界性。在SCD中,频谱和解剖学受限区域的LRTCs减弱,而这种破坏在MCI中逐渐更为广泛。同时,MCI队列中的fE/I增加,而SCD队列中未增加。这两个观察结果也预测了纵向队列中的疾病进展。最后,使用基于功能(LRTCs、fE/I)和结构(内侧颞叶体积)特征训练的机器学习方法,我们表明LRTCs和f/EI是准确分类SCD个体的最具信息性的特征,而结构变化可准确分类MCI个体。这些发现表明,向超临界大脑动力学的转变反映了AD疾病的早期进展。