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Moving Beyond ERP Components: A Selective Review of Approaches to Integrate EEG and Behavior

期刊

FRONTIERS IN HUMAN NEUROSCIENCE
卷 12, 期 -, 页码 -

出版社

FRONTIERS MEDIA SA
DOI: 10.3389/fnhum.2018.00106

关键词

EEG; ERP; blind source separation; partial least squares; canonical correlations analysis; representational similarity analysis; deep learning; hierarchical Bayesian model

资金

  1. National Institutes of Health [2R01EB005846, R01REB020407, P20GM103472]
  2. National Science Foundation [1539067, 1658303]
  3. Direct For Social, Behav & Economic Scie [1658303] Funding Source: National Science Foundation
  4. Division Of Behavioral and Cognitive Sci [1658303] Funding Source: National Science Foundation

向作者/读者索取更多资源

Relationships between neuroimaging measures and behavior provide important clues about brain function and cognition in healthy and clinical populations. While electroencephalography (EEG) provides a portable, low cost measure of brain dynamics, it has been somewhat underrepresented in the emerging field of model-based inference. We seek to address this gap in this article by highlighting the utility of linking EEG and behavior, with an emphasis on approaches for EEG analysis that move beyond focusing on peaks or components derived from averaging EEG responses across trials and subjects (generating the event-related potential, ERP). First, we review methods for deriving features from EEG in order to enhance the signal within single-trials. These methods include filtering based on user-defined features (i.e., frequency decomposition, time-frequency decomposition), filtering based on data-driven properties (i.e., blind source separation, BSS), and generating more abstract representations of data (e.g., using deep learning). We then review cognitive models which extract latent variables from experimental tasks, including the drift diffusion model (DDM) and reinforcement learning (RL) approaches. Next, we discuss ways to access associations among these measures, including statistical models, data-driven joint models and cognitive joint modeling using hierarchical Bayesian models (HBMs). We think that these methodological tools are likely to contribute to theoretical advancements, and will help inform our understandings of brain dynamics that contribute to moment-to-moment cognitive function.

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