| Literature DB >> 34921602 |
Lucrezia Liuzzi1, Katharine K Chang2, Charles Zheng3, Hanna Keren1, Dipta Saha1, Dylan M Nielson1, Argyris Stringaris1.
Abstract
Despite its omnipresence in everyday interactions and its importance for mental health, mood and its neuronal underpinnings are poorly understood. Computational models can help identify parameters affecting self-reported mood during mood induction tasks. Here, we test if computationally modeled dynamics of self-reported mood during monetary gambling can be used to identify trial-by-trial variations in neuronal activity. To this end, we shifted mood in healthy (N = 24) and depressed (N = 30) adolescents by delivering individually tailored reward prediction errors while recording magnetoencephalography (MEG) data. Following a pre-registered analysis, we hypothesize that the expectation component of mood would be predictive of beta-gamma oscillatory power (25-40 Hz). We also hypothesize that trial variations in the source localized responses to reward feedback would be predicted by mood and by its reward prediction error component. Through our multilevel statistical analysis, we found confirmatory evidence that beta-gamma power is positively related to reward expectation during mood shifts, with localized sources in the posterior cingulate cortex. We also confirmed reward prediction error to be predictive of trial-level variations in the response of the paracentral lobule. To our knowledge, this is the first study to harness computational models of mood to relate mood fluctuations to variations in neural oscillations with MEG.Entities:
Keywords: MEG; mood; reward prediction error; reward processing
Mesh:
Year: 2022 PMID: 34921602 PMCID: PMC9340400 DOI: 10.1093/cercor/bhab417
Source DB: PubMed Journal: Cereb Cortex ISSN: 1047-3211 Impact factor: 4.861