临床高危精神病患者的大脑动态变化异常

J. Kindler, Ishida Takuya, Chantal Michel, A. Klaassen, Miriam Stüble, Nadja Zimmermann, Roland Wiest, Michael Kaess, Yosuke Morishima
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摘要

静息态网络(RSN)功能连接分析深刻地影响了我们对精神病及其临床高危(CHR)状态的病理生理学的理解。然而,传统的 RSN 分析针对的是大规模大脑网络的静态性质。相比之下,新颖的方法旨在评估大脑网络互动的动力状态和时间动态。 50 名 CHR 患者和 33 名健康对照者(HC)完成了静息态功能磁共振成像扫描。我们进行了能量景观分析,这是一种使用成对最大熵模型的数据驱动方法,用于描述大规模大脑网络动态,如不同大脑状态的持续时间和频率以及不同大脑状态之间的转换。我们比较了慢性阻塞性脑损伤患者和慢性阻塞性脑损伤患者的这些测量指标,并研究了慢性阻塞性脑损伤患者的神经心理测量指标与神经动态之间的关联。 我们的主要发现是,与高危人群相比,高危人群的大脑状态持续时间和频率明显增加,而且大脑状态的过渡率也更高,突出、边缘、缺省模式和躯体运动 RSN 都会共同激活。从这种大脑状态过渡的大脑动态与 CHR 的处理速度显著相关。 在慢性阻塞性脑损伤中,时间大脑动力学被吸引到一种不常见的大脑状态,这反映了默认模式、显著性和边缘网络的异常相互作用发生得更频繁、更持久。同时,大脑状态出现的频率更高、时间更长与核心认知功能障碍有关,而核心认知功能障碍是未来全面精神病发病的预测因素。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Aberrant brain dynamics in individuals with clinical high risk of psychosis
Resting-state network (RSN) functional connectivity analyses have profoundly influenced our understanding of the pathophysiology of psychoses and their clinical high risk (CHR) states. However, conventional RSN analyses address the static nature of large-scale brain networks. In contrast, novel methodological approaches aim to assess the momentum state and temporal dynamics of brain network interactions. Fifty CHR individuals and 33 healthy controls (HC) completed a resting-state functional MRI scan. We performed an Energy Landscape analysis, a data-driven method using the pairwise maximum entropy model, to describe large-scale brain network dynamics such as duration and frequency of, and transition between, different brain states. We compared those measures between CHR and HC, and examined the association between neuropsychological measures and neural dynamics in CHR. Our main finding is a significantly increased duration, frequency, and higher transition rates to an infrequent brain state with coactivation of the salience, limbic, default mode and somatomotor RSNs in CHR as compared to HC. Transition of brain dynamics from this brain state was significantly correlated with processing speed in CHR. In CHR, temporal brain dynamics are attracted to an infrequent brain state, reflecting more frequent and longer occurrence of aberrant interactions of default mode, salience, and limbic netowrks. Concurrently, more frequent and longer occurrence of the brain state is associated with core cognitive dysfunctions, predictors of future onset of full-blown psychosis.
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