Recent studies have shown that multi-modeling methods can provide new insights into the analysis of brain components that are not possible when each modality is acquired separately. The joint representations of different modalities is a robust model to analyze simultaneously acquired electroencephalography and functional magnetic resonance imaging (EEG-fMRI). Advances in precision instruments have given us the ability to observe the spatiotemporal neural dynamics of the human brain through non-invasive neuroimaging techniques such as EEG & fMRI. Nonlinear fusion methods of streams can extract effective brain components in different dimensions of temporal and spatial. Graph-based analyzes, which have many similarities to brain structure, can overcome the complexities of brain mapping analysis. Throughout, we outline the correlations of several different media in time shifts from one source with graph-based and deep learning methods. Determining overlaps can provide a new perspective for diagnosing functional changes in neuroplasticity studies.
翻译:最近的研究显示,多模型方法可以提供新的洞察力,分析每个模式单独获得时都不可能实现的大脑元件分析。不同模式的联合表述是一个强有力的模型,可以同时分析获得的电子脑摄影和功能磁共振成像(EEG-fMRI)。精确仪器的进步使我们有能力通过非侵入性神经成像技术,如EEG & FMRI等,观察人类大脑的脑神经神经波体动态。非线性流集法可以在时间和空间的不同方面提取有效的大脑元件。基于图表的分析与大脑结构有许多相似之处,可以克服大脑绘图分析的复杂性。我们从整体上概述了从一个来源以图形为基础和深层学习方法进行时间变化的若干不同介质。确定重叠可以为神经致病性研究的功能变化诊断提供新的视角。