基于隐马尔可夫模型的老年抑郁症的转变与动态重构。

Hairong Xiao, Caili Kang, Wei Zhao, Shuixia Guo
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引用次数: 0

摘要

老年抑郁症的特征是持续的情绪困扰和认知功能障碍,但对其具体的脑动力学和分子机制的了解仍然有限。本文采用隐马尔可夫模型分析了154例晚期抑郁症患者和147名健康对照者的静息状态功能磁共振成像数据。该分析揭示了具有不同时空模式的12种反复出现的大脑状态,并确定了几个网络中的非典型动态特征。值得注意的是,患者进入、退出和维持默认模式网络正激活状态的转移概率明显更高,与该状态相关的基因主要富集于神经元突触可塑性和认知过程的调节。分层聚类进一步发现了两种具有相反激活模式的高级元状态之间的关键入口和出口点,通过对大脑状态的解码,突出了大规模网络功能障碍和与晚年抑郁相关的潜在分子机制。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transition and dynamic reconfiguration in late-life depression based on hidden Markov model.

Late-life depression is characterized by persistent emotional distress and cognitive dysfunction, yet understanding the specific brain dynamics and molecular mechanisms involved remains limited. Here, we employed a hidden Markov model to analyze resting-state functional magnetic resonance imaging data from 154 patients with late-life depression and 147 healthy controls. This analysis revealed 12 recurring brain states with distinct spatiotemporal patterns and identified atypical dynamic features across several networks. Notably, patients exhibited significantly higher transition probabilities for entering, exiting, and maintaining in the positive activation state of the default mode network, with genes linked to this state mainly enriched in regulation of neuronal synaptic plasticity and cognitive processes. Hierarchical clustering further found a critical entry and exit point between two high-level meta-states with opposing activation patterns, highlighting large-scale network dysfunction and potential molecular mechanisms associated with late-life depression through the decoding of brain states.

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