| Literature DB >> 36168080 |
Peter F Hitchcock1, Willoughby B Britton2, Kahini P Mehta3,4, Michael J Frank3,5.
Abstract
Cognitive theories of depression, and mindfulness theories of well-being, converge on the notion that self-judgment plays a critical role in mental health. However, these theories have rarely been tested via tasks and computational modeling analyses that can disentangle the information processes operative in self-judgments. We applied a drift-diffusion computational model to the self-referential encoding task (SRET) collected before and after an 8-week mindfulness intervention (n = 96). A drift-rate regression parameter representing positive-relative to negative-self-referential judgment strength positively related to mindful awareness and inversely related to depression, both at baseline and over time; however, this parameter did not significantly relate to the interaction between mindful awareness and nonjudgmentalness. At the level of individual depression symptoms, at baseline, a spectrum of symptoms (inversely) correlated with the drift-rate regression parameter, suggesting that many distinct depression symptoms relate to valenced self-judgment between subjects. By contrast, over the intervention, changes in only a smaller subset of anhedonia-related depression symptoms showed substantial relationships with this parameter. Both behavioral and model-derived measures showed modest split-half and test-retest correlations. Results support cognitive theories that implicate self-judgment in depression and mindfulness theories, which imply that mindful awareness should lead to more positive self-views.Entities:
Keywords: Computational modeling; Depression; Drift diffusion model; Mindfulness; Self-referent encoding task
Year: 2022 PMID: 36168080 DOI: 10.3758/s13415-022-01033-9
Source DB: PubMed Journal: Cogn Affect Behav Neurosci ISSN: 1530-7026 Impact factor: 3.526