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健康衰老和轻度认知障碍中静息态功能脑网络的任务后效应重组

Task aftereffect reorganization of resting state functional brain networks in healthy aging and mild cognitive impairment.

作者信息

Požar Rok, Kero Katherine, Martin Tim, Giordani Bruno, Kavcic Voyko

机构信息

Faculty of Mathematics, Natural Sciences and Information Technologies, University of Primorska, Koper, Slovenia.

Andrej Marušič Institute, University of Primorska, Koper, Slovenia.

出版信息

Front Aging Neurosci. 2023 Jan 11;14:1061254. doi: 10.3389/fnagi.2022.1061254. eCollection 2022.

Abstract

The view of the human brain as a complex network has led to considerable advances in understanding the brain's network organization during rest and task, in both health and disease. Here, we propose that examining brain networks within the task aftereffect model, in which we compare resting-state networks immediately before and after a cognitive engagement task, may enhance differentiation between those with normal cognition and those with increased risk for cognitive decline. We validated this model by comparing the pre- and post-task resting-state functional network organization of neurologically intact elderly and those with mild cognitive impairment (MCI) derived from electroencephalography recordings. We have demonstrated that a cognitive task among MCI patients induced, compared to healthy controls, a significantly higher increment in global network integration with an increased number of vertices taking a more central role within the network from the pre- to post-task resting state. Such modified network organization may aid cognitive performance by increasing the flow of information through the most central vertices among MCI patients who seem to require more communication and recruitment across brain areas to maintain or improve task performance. This could indicate that MCI patients are engaged in compensatory activation, especially as both groups did not differ in their task performance. In addition, no significant group differences were observed in network topology during the pre-task resting state. Our findings thus emphasize that the task aftereffect model is relevant for enhancing the identification of network topology abnormalities related to cognitive decline, and also for improving our understanding of inherent differences in brain network organization for MCI patients, and could therefore represent a valid marker of cortical capacity and/or cortical health.

摘要

将人类大脑视为一个复杂网络的观点,在理解大脑在休息和任务期间(包括健康和疾病状态下)的网络组织方面取得了显著进展。在此,我们提出,在任务后效应模型中检查大脑网络,即比较认知参与任务前后的静息态网络,可能会增强对正常认知者和认知衰退风险增加者的区分。我们通过比较神经功能正常的老年人和轻度认知障碍(MCI)患者任务前后的静息态功能网络组织,对该模型进行了验证,这些数据来自脑电图记录。我们已经证明,与健康对照组相比,MCI患者中的一项认知任务在从任务前到任务后的静息状态下,诱导出了显著更高的全局网络整合增量,网络中更多处于中心位置的顶点数量增加。这种改变的网络组织可能通过增加信息在最中心顶点之间的流动来辅助认知表现,对于似乎需要更多跨脑区交流和协同来维持或改善任务表现的MCI患者来说尤为如此。这可能表明MCI患者正在进行代偿性激活,特别是因为两组在任务表现上没有差异。此外,在任务前的静息状态下,未观察到网络拓扑结构存在显著的组间差异。因此,我们的研究结果强调,任务后效应模型对于增强与认知衰退相关的网络拓扑异常的识别具有重要意义,同时也有助于我们更好地理解MCI患者大脑网络组织的内在差异,因此可能代表了一种有效的皮质能力和/或皮质健康标志物。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/1cce/9876535/ecefbd53652a/fnagi-14-1061254-g001.jpg

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