ConFER: A Neurally Constrained Computational Model of Context-Dependent Fear Extinction Recall and Relapse
Shreya K. Rajagopal, Thad A. Polk

TL;DR
ConFER is a neurally constrained computational model that simulates fear extinction, recall, and relapse, integrating neural circuit findings to predict outcomes and improve exposure therapy for anxiety disorders.
Contribution
It introduces a novel neural circuit-based model of fear extinction and relapse, emphasizing cue and context pathways and generating testable hypotheses for therapy improvements.
Findings
Predicts counterconditioning may better prevent relapse than extinction.
Simulates fear renewal and spontaneous recovery across contexts.
Provides mechanistic insights into fear relapse processes.
Abstract
Exposure therapy, a standard treatment for anxiety disorders, relies on fear extinction. However, extinction recall is often limited to the spatial and temporal context in which extinction is learned, leading to fear relapse in new settings or after delays. Animal studies offer insights into fear extinction in humans. Computational models that integrate these findings into a neurally grounded framework, while generating testable hypotheses for humans, can bridge this gap. Current models either focus on neuron-level activity, limiting their scope, or abstract away entirely from neural mechanisms. They also often overlook the distinct contributions of cue and context in fear extinction and recall. To address these gaps, we present ConFER, a neurally constrained model of fear extinction, recall, and relapse. ConFER integrates findings from the neural fear circuit, modeling distinct…
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Taxonomy
TopicsMental Health Research Topics
MethodsFocus
