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脑卒中风患者大脑功能网络的动态重构。

Dynamic Reconfiguration of Brain Functional Network in Stroke.

出版信息

IEEE J Biomed Health Inform. 2024 Jun;28(6):3649-3659. doi: 10.1109/JBHI.2024.3371097. Epub 2024 Jun 6.

Abstract

The brain continually reorganizes its functional network to adapt to post-stroke functional impairments. Previous studies using static modularity analysis have presented global-level behavior patterns of this network reorganization. However, it is far from understood how the brain reconfigures its functional network dynamically following a stroke. This study collected resting-state functional MRI data from 15 stroke patients, with mild (n = 6) and severe (n = 9) two subgroups based on their clinical symptoms. Additionally, 15 age-matched healthy subjects were considered as controls. By applying a multilayer temporal network method, a dynamic modular structure was recognized based on a time-resolved function network. The dynamic network measurements (recruitment, integration, and flexibility) were calculated to characterize the dynamic reconfiguration of post-stroke brain functional networks, hence, revealing the neural functional rebuilding process. It was found from this investigation that severe patients tended to have reduced recruitment and increased between-network integration, while mild patients exhibited low network flexibility and less network integration. It's also noted that previous studies using static methods could not reveal this severity-dependent alteration in network interaction. Clinically, the obtained knowledge of the diverse patterns of dynamic adjustment in brain functional networks observed from the brain neuronal images could help understand the underlying mechanism of the motor, speech, and cognitive functional impairments caused by stroke attacks. The present method not only could be used to evaluate patients' current brain status but also has the potential to provide insights into prognosis analysis and prediction.

摘要

大脑不断地重新组织其功能网络以适应中风后的功能障碍。先前使用静态模块性分析的研究已经提出了这种网络重组的全局水平行为模式。然而,对于大脑在中风后如何动态地重新配置其功能网络,我们还远未了解。本研究从 15 名中风患者中收集了静息态功能磁共振成像数据,根据他们的临床症状,将其分为轻度(n=6)和重度(n=9)两个亚组。此外,还考虑了 15 名年龄匹配的健康受试者作为对照组。通过应用多层时间网络方法,基于时变功能网络识别了动态模块结构。计算了动态网络测量(招募、整合和灵活性),以描述中风后大脑功能网络的动态重构,从而揭示神经功能重建过程。从这项研究中发现,严重患者的招募减少,网络间整合增加,而轻度患者的网络灵活性低,网络整合少。还注意到,先前使用静态方法的研究无法揭示网络相互作用中这种依赖于严重程度的改变。临床上,从脑神经元图像中观察到的大脑功能网络动态调整的不同模式的相关知识,可以帮助理解中风引起的运动、言语和认知功能障碍的潜在机制。该方法不仅可以用于评估患者当前的大脑状态,还具有用于预后分析和预测的潜力。

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