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一种基于源域高密度脑电图张量分解的耳鸣动态脑连接分析新方法。

A New Method for Dynamic Brain Connectivity Analysis Based on Tensor Decomposition in Tinnitus Using High-density Electroencephalogram in Source Domain.

作者信息

Bahman Moein, Sajadi Seyed Saman, Toostani Iman Ghodrati, MakkiAbadi Bahador

机构信息

Department of Medical Physics and Biomedical Engineering, School of Medicine, Tehran University of Medical Sciences, Tehran, Iran.

Research Centre for Biomedical Technologies and Robotics, Tehran University of Medical Sciences, Tehran, Iran.

出版信息

J Med Signals Sens. 2025 Aug 6;15:23. doi: 10.4103/jmss.jmss_75_24. eCollection 2025.

Abstract

BACKGROUND

Functional connectivity (FC), defined as the statistical reliance among different brain regions, has been an effective tool for studying cognitive brain functions. The majority of existing FC-based research has relied on the premise that networks are temporally stationary. However, there exist few research that support nonstationarity of FC which can be due to cognitive functioning. However, still there is a gap in tracking the dynamics of FC to gain a deeper understanding of how brain networks form and adapt in response to therapeutic interventions by identifying the change points that signify substantial shifts in network connectivity across the participants.

METHODS

The proposed approach in this study is based on tensor representation of FC networks of the source signals of electroencephalogram (EEG) activities yielding a multi-mode tensor. Then analysis of variance has been used to investigate changing points in connectivity of brain activity in sources domain in different conditions of tasks, frequency bands, and among subjects in time. High-density EEG signals (256 channels) were acquired from 30 tinnitus patients under visual (positive emotion induction) and transcranial direct current stimulation (tDCS) stimuli.

RESULTS

The proposed method of this study could effectively identify the significant brain connectivity change points, indicating enhanced effectiveness in capturing connectivity shifts comparing to conventional methods. Findings in tinnitus patients suggest that visual stimulation alone may not significantly alter brain connectivity networks.

CONCLUSION

Based on the results, a combination of visual stimulation with simultaneous High-Definition tDCS is recommended, potentially informing optimal intervention strategies to enhance tinnitus treatment effectiveness.

摘要

背景

功能连接性(FC)被定义为不同脑区之间的统计相关性,一直是研究认知脑功能的有效工具。大多数现有的基于FC的研究都基于网络在时间上是静止的这一前提。然而,很少有研究支持FC的非平稳性,而这种非平稳性可能是由于认知功能引起的。然而,在追踪FC的动态变化以更深入地了解脑网络如何形成以及如何通过识别表示参与者之间网络连接性显著变化的变化点来响应治疗干预方面,仍然存在差距。

方法

本研究中提出的方法基于脑电图(EEG)活动源信号的FC网络的张量表示,产生一个多模式张量。然后使用方差分析来研究在不同任务条件、频段以及不同受试者之间的时间上,源域中脑活动连接性的变化点。从30名耳鸣患者在视觉(积极情绪诱导)和经颅直流电刺激(tDCS)刺激下采集高密度EEG信号(256通道)。

结果

本研究提出的方法能够有效地识别出显著的脑连接性变化点,表明与传统方法相比,在捕捉连接性变化方面具有更高的有效性。耳鸣患者的研究结果表明,单独的视觉刺激可能不会显著改变脑连接网络。

结论

基于这些结果,建议将视觉刺激与同步高清tDCS相结合,这可能为提高耳鸣治疗效果提供最佳干预策略。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/da24/12373379/2ac6636c6d85/JMSS-15-23-g001.jpg

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