Network Dynamics of Emotional Processing: A Structural Balance Theory Approach
Sepehr Gourabi, Parinaz Khosravani, Shahrzad Nosrat, Roya Mohammadi,, Masoud Lotfalipour

TL;DR
This study uses Structural Balance Theory to analyze brain network dynamics during emotional processing, revealing increased imbalance and network reorganization in response to fear stimuli, which enhances understanding of emotional resilience.
Contribution
It introduces a novel application of Structural Balance Theory to brain networks, highlighting how emotional stimuli induce shifts in network stability and hub configurations.
Findings
Imbalance triads increase during emotional processing.
Positive connections increase while negative decrease.
Network becomes more centralized with fewer influential hubs.
Abstract
Understanding emotional processing in the human brain requires examining the complex interactions between different brain regions. While previous studies have identified specific regions involved in emotion processing, a holistic network approach may provide deeper insights. We use Structural Balance Theory to investigate the stability and triadic structures of signed brain networks during resting state and emotional processing, specifically in response to fear-related stimuli. We hypothesized that imbalanced triadic interactions would be more prevalent during emotional processing, especially in response to fear-related stimuli, potentially reflecting the brain's adaptation to emotional challenges. By analyzing fMRI data from 138 healthy, right-handed participants, we found that emotional processing was marked by an increase in positive connections and a decrease in negative connections…
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Taxonomy
TopicsMental Health Research Topics · Opinion Dynamics and Social Influence
