Neural patterns associated with mixed valence feelings differ in consistency and predictability throughout the brain

Author:

Vaccaro Anthony G1ORCID,Wu Helen1,Iyer Rishab1,Shakthivel Shruti1,Christie Nina C1,Damasio Antonio1,Kaplan Jonas1

Affiliation:

1. Department of Psychology, Brain and Creativity Institute, University of Southern California , 3620 McClintock Avenue, Los Angeles, CA 90089 , United States

Abstract

Abstract Mixed feelings, the simultaneous presence of feelings with positive and negative valence, remain an understudied topic. They pose a specific set of challenges due to individual variation, and their investigation requires analtyic approaches focusing on individually self-reported states. We used functional magnetic resonance imaging (fMRI) to scan 27 subjects watching an animated short film chosen to induce bittersweet mixed feelings. The same subjects labeled when they had experienced positive, negative, and mixed feelings. Using hidden-Markov models, we found that various brain regions could predict the onsets of new feeling states as determined by self-report. The ability of the models to identify these transitions suggests that these states may exhibit unique and consistent neural signatures. We next used the subjects’ self-reports to evaluate the spatiotemporal consistency of neural patterns for positive, negative, and mixed states. The insula had unique and consistent neural signatures for univalent states, but not for mixed valence states. The anterior cingulate and ventral medial prefrontal cortex had consistent neural signatures for both univalent and mixed states. This study is the first to demonstrate that subjectively reported changes in feelings induced by naturalistic stimuli can be predicted from fMRI and the first to show direct evidence for a neurally consistent representation of mixed feelings.

Funder

Brain and Creativity Institute and Dornsife Cognitive Neuroimaging Center

Publisher

Oxford University Press (OUP)

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