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  4. Self-Regulation Learning As Active Inference: Dynamic Causal Modeling Of An Fmri Neurofeedback Task
 
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Self-Regulation Learning As Active Inference: Dynamic Causal Modeling Of An Fmri Neurofeedback Task

Journal
Frontiers in Neuroscience
Date Issued
2023-08-15
Author(s)
Gabriela Vargas
David Araya
Pradyumna Sepulveda
Maria Rodriguez-Fernandez
Karl J. Friston
Ranganatha Sitaram
El-deredy, Wael  
Facultad de Ingeniería  
DOI
10.3389/fnins.2023.1212549
WoS ID
WOS:001057202400001
Abstract
Introduction Learning to self-regulate brain activity by neurofeedback has been shown to lead to changes in the brain and behavior, with beneficial clinical and non-clinical outcomes. Neurofeedback uses a brain-computer interface to guide participants to change some feature of their brain activity. However, the neural mechanism of self-regulation learning remains unclear, with only 50% of the participants succeeding in achieving it. To bridge this knowledge gap, our study delves into the neural mechanisms of self-regulation learning via neurofeedback and investigates the brain processes associated with successful brain self-regulation. Methods We study the neural underpinnings of self-regulation learning by employing dynamical causal modeling (DCM) in conjunction with real-time functional MRI data. The study involved a cohort of 18 participants undergoing neurofeedback training targeting the supplementary motor area. A critical focus was the comparison between top-down hierarchical connectivity models proposed by Active Inference and alternative bottom-up connectivity models like reinforcement learning. Results Our analysis revealed a crucial distinction in brain connectivity patterns between successful and non-successful learners. Particularly, successful learners evinced a significantly stronger top-down effective connectivity towards the target area implicated in self-regulation. This heightened top-down network engagement closely resembles the patterns observed in goal-oriented and cognitive control studies, shedding light on the intricate cognitive processes intertwined with self-regulation learning. Discussion The findings from our investigation underscore the significance of cognitive mechanisms in the process of self-regulation learning through neurofeedback. The observed stronger top-down effective connectivity in successful learners indicates the involvement of hierarchical cognitive control, which aligns with the tenets of Active Inference. This study contributes to a deeper understanding of the neural dynamics behind successful self-regulation learning and provides insights into the potential cognitive architecture underpinning this process.
Subjects

Neurosciences

Neuroscience

OCDE Subjects

Medical And Health Sc...

Quartile (Date Issued)
Q2
License
acceso abierto
Product(s)
Data_Sheet_2_Self-regulation learning as active inference: dynamic causal modeling of an fMRI neurofeedback task.CSV  
Data_Sheet_1_Self-regulation learning as active inference: dynamic causal modeling of an fMRI neurofeedback task.CSV  

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