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Beyond peaks and troughs: Multiplexed performance monitoring signals in the EEG.

Markus Ullsperger
Published in: Psychophysiology (2024)
With the discovery of event-related potentials elicited by errors more than 30 years ago, a new avenue of research on performance monitoring, cognitive control, and decision making emerged. Since then, the field has developed and expanded fulminantly. After a brief overview on the EEG correlates of performance monitoring, this article reviews recent advancements based on single-trial analyses using independent component analysis, multiple regression, and multivariate pattern classification. Given the close interconnection between performance monitoring and reinforcement learning, computational modeling and model-based EEG analyses have made a particularly strong impact. The reviewed findings demonstrate that error- and feedback-related EEG dynamics represent variables reflecting how performance-monitoring signals are weighted and transformed into an adaptation signal that guides future decisions and actions. The model-based single-trial analysis approach goes far beyond conventional peak-and-trough analyses of event-related potentials and enables testing mechanistic theories of performance monitoring, cognitive control, and decision making.
Keyphrases
  • decision making
  • functional connectivity
  • resting state
  • machine learning
  • randomized controlled trial
  • study protocol
  • emergency department
  • deep learning
  • phase iii
  • high throughput
  • single cell
  • quality improvement