Stable EEG Spatiospectral Patterns Estimated in Individuals by Group Information Guided NMF.

IF 2.3 3区 医学 Q3 CLINICAL NEUROLOGY
Tianyi Zhou, Xuan Li, Juan Wang, Zheng Li, Liyong Yin, Bowen Yin, Xinling Geng, Xiaoli Li
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引用次数: 0

Abstract

Electroencephalographic (EEG) oscillations occur across a wide range of spatial and spectral scales, and analysis of neural rhythmic variability have attracted recent attention as markers of development, intelligence, cognitive states and neural disorders. Nonnegative matrix factorization (NMF) has been successfully applied to multi-subject electroencephalography (EEG) spectral analysis. However, existing group NMF methods have not explicitly optimized the individual-level EEG components derived from group-level components. To preserve EEG characteristics at the individual level while establishing correspondence of patterns across participants, we present a novel framework for obtaining subject-specific EEG components, which we term group-information guided NMF (GIGNMF). In this framework, group information captured by standard NMF at the group level is utilized as guidance to compute individual subject-specific components through a multi-objective optimization strategy. Specifically, we propose a three-stage framework: first, group-level consensus EEG patterns are derived using standard group NMF tools; second, an optimal procedure is implemented to determine the number of components; and finally, the group-level EEG patterns serve as references in a new one-unit NMF employing a multi-objective optimization solver. We test the performance of the algorithm on both synthetic signals and real EEG recordings obtained from Alzheimer's disease data. Our results highlight the feasibility of using GIGNMF to identify EEG spatiotemporal patterns and present novel individual electrophysiological characteristics that enhance our understanding of cognitive function and contribute to clinical neuropathological diagnosis.

群体信息引导下NMF估计个体稳定脑电空间谱模式。
脑电图(EEG)振荡发生在广泛的空间和频谱尺度上,神经节律变异性的分析作为发育、智力、认知状态和神经障碍的标志近年来引起了人们的关注。非负矩阵分解(NMF)已成功地应用于多主体脑电图(EEG)频谱分析。然而,现有的群体NMF方法并没有明确优化从群体层面成分衍生出来的个体层面脑电成分。为了在个体水平上保留脑电图特征,同时建立参与者之间的模式对应关系,我们提出了一个新的框架来获取受试者特定的脑电图成分,我们称之为群体信息引导的NMF (GIGNMF)。在该框架中,通过多目标优化策略,利用标准NMF在群体层面捕获的群体信息作为指导,计算个体特定主题组件。具体来说,我们提出了一个三阶段框架:首先,使用标准的群体NMF工具推导群体层面的共识脑电图模式;其次,实施最优程序来确定组件的数量;最后,利用多目标优化求解器构建了一种新的单单元神经网络。我们在合成信号和从阿尔茨海默病数据中获得的真实脑电图记录上测试了算法的性能。我们的研究结果强调了使用GIGNMF识别脑电图时空模式的可行性,并呈现出新的个体电生理特征,增强了我们对认知功能的理解,有助于临床神经病理诊断。
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来源期刊
Brain Topography
Brain Topography 医学-临床神经学
CiteScore
4.70
自引率
7.40%
发文量
41
审稿时长
3 months
期刊介绍: Brain Topography publishes clinical and basic research on cognitive neuroscience and functional neurophysiology using the full range of imaging techniques including EEG, MEG, fMRI, TMS, diffusion imaging, spectroscopy, intracranial recordings, lesion studies, and related methods. Submissions combining multiple techniques are particularly encouraged, as well as reports of new and innovative methodologies.
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