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Inferring Macroscale Brain Dynamics via Fusion of Simultaneous EEG-fMRI
Annual Review of Neuroscience ( IF 12.1 ) Pub Date : 2021-07-08 , DOI: 10.1146/annurev-neuro-100220-093239
Marios G Philiastides 1 , Tao Tu 2 , Paul Sajda 3
Affiliation  

Advances in the instrumentation and signal processing for simultaneously acquired electroencephalography and functional magnetic resonance imaging (EEG-fMRI) have enabled new ways to observe the spatiotemporal neural dynamics of the human brain. Central to the utility of EEG-fMRI neuroimaging systems are the methods for fusing the two data streams, with machine learning playing a key role. These methods can be dichotomized into those that are symmetric and asymmetric in terms of how the two modalities inform the fusion. Studies using these methods have shown that fusion yields new insights into brain function that are not possible when each modality is acquired separately. As technology improves and methods for fusion become more sophisticated, the future of EEG-fMRI for noninvasive measurement of brain dynamics includes mesoscale mapping at ultrahigh magnetic resonance fields, targeted perturbation-based neuroimaging, and using deep learning to uncover nonlinear representations that link the electrophysiological and hemodynamic measurements.

中文翻译:


通过同步 EEG-fMRI 的融合推断宏观大脑动力学

用于同时采集脑电图和功能磁共振成像 (EEG-fMRI) 的仪器和信号处理的进步为观察人脑时空神经动力学提供了新的方法。EEG-fMRI 神经影像系统实用性的核心是融合两个数据流的方法,其中机器学习起着关键作用。就这两种方式如何告知融合而言,这些方法可以分为对称和不对称的方法。使用这些方法的研究表明,融合产生了对大脑功能的新见解,这在单独获得每种模式时是不可能的。随着技术的进步和融合方法变得更加复杂,

更新日期:2021-07-09
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