Abstract

Numerous data demonstrate that distracting emotional stimuli cause behavioral slowing (i.e. emotional conflict) and that behavior dynamically adapts to such distractors. However, the cognitive and neural mechanisms that mediate these behavioral findings are poorly understood. Several theoretical models have been developed that attempt to explain these phenomena, but these models have not been directly tested on human behavior nor compared. A potential tool to overcome this limitation is Hidden Markov Modeling (HMM), which is a computational approach to modeling indirectly observed systems. Here, we administered an emotional Stroop task to a sample of healthy adolescent girls (N = 24) during fMRI and used HMM to implement theoretical behavioral models. We then compared the model fits and tested for neural representations of the hidden states of the most supported model. We found that a modified variant of the model posited by Mathews et al. (1998) was most concordant with observed behavior and that brain activity was related to the model-based hidden states. Particularly, while the valences of the stimuli themselves were encoded primarily in the ventral visual cortex, the model-based detection of threatening targets was associated with increased activity in the bilateral anterior insula, while task effort (i.e. adaptation) was associated with reduction in the activity of these areas. These findings suggest that emotional target detection and adaptation are accomplished partly through increases and decreases, respectively, in the perceived immediate relevance of threatening cues and also demonstrate the efficacy of using HMM to apply theoretical models to human behavior.

Highlights

  • Emotions are an important mechanism facilitating behavioral responses to salient and goalrelated environmental cues [1], and the ability to regulate one’s emotions is an important determinant of health and well-being [2]

  • Examining more specific contrasts reveals that this interference effect was driven by trials in which the distractor stimulus was threatening vs neutral (M = 65 ms; SE = 14.29; t = 4.23 p = 0.0003)

  • When examining the interpretability of the resulting modified Mathews model we found that the target valence and target detector were positively correlated across the group (t = 32; p < 0.0001) and the distractor valence and distractor detector valence were positively correlated across the group (t = 2.50; p = 0.01), suggesting interpretability of the model

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Summary

Introduction

Emotions are an important mechanism facilitating behavioral responses to salient and goalrelated environmental cues [1], and the ability to regulate one’s emotions is an important determinant of health and well-being [2]. Hidden Markov Modeling of emotion regulation and neural correlates decision to publish, or preparation of the manuscript

Methods
Results
Conclusion

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