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Transdiagnostic phenotypes of compulsive behavior and associations with psychological, cognitive, and neurobiological affective processing

Transdiagnostic phenotypes of compulsive behavior and associations with psychological, cognitive, and neurobiological affective processing
Transdiagnostic phenotypes of compulsive behavior and associations with psychological, cognitive, and neurobiological affective processing

Compulsivity is a poorly understood transdiagnostic construct thought to underlie multiple disorders, including obsessive-compulsive disorder, addictions, and binge eating. Our current understanding of the causes of compulsive behavior remains primarily based on investigations into specific diagnostic categories or findings relying on one or two laboratory measures to explain complex phenotypic variance. This proof-of-concept study drew on a heterogeneous sample of community-based individuals (N = 45; 18–45 years; 25 female) exhibiting compulsive behavioral patterns in alcohol use, eating, cleaning, checking, or symmetry. Data-driven statistical modeling of multidimensional markers was utilized to identify homogeneous subtypes that were independent of traditional clinical phenomenology. Markers were based on well-defined measures of affective processing and included psychological assessment of compulsivity, behavioral avoidance, and stress, neurocognitive assessment of reward vs. punishment learning, and biological assessment of the cortisol awakening response. The neurobiological validity of the subtypes was assessed using functional magnetic resonance imaging. Statistical modeling identified three stable, distinct subtypes of compulsivity and affective processing, which we labeled “Compulsive Non-Avoidant”, “Compulsive Reactive” and “Compulsive Stressed”. They differed meaningfully on validation measures of mood, intolerance of uncertainty, and urgency. Most importantly, subtypes captured neurobiological variance on amygdala-based resting-state functional connectivity, suggesting they were valid representations of underlying neurobiology and highlighting the relevance of emotion-related brain networks in compulsive behavior. Although independent larger samples are needed to confirm the stability of subtypes, these data offer an integrated understanding of how different systems may interact in compulsive behavior and provide new considerations for guiding tailored intervention decisions.

Den Ouden, Lauren
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Suo, Chao
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Albertella, Lucy
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Greenwood, Lisa Marie
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Lee, Rico S.C.
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Fontenelle, Leonardo F.
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Parkes, Linden
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Tiego, Jeggan
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Chamberlain, Samuel R.
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Richardson, Karyn
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Segrave, Rebecca
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Yücel, Murat
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Den Ouden, Lauren
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Suo, Chao
fb9c99cd-c388-4b99-974a-de4754e18cdc
Albertella, Lucy
c95a7a69-10d8-4549-a155-55a42170d8c0
Greenwood, Lisa Marie
69ac7468-e346-4c82-b1f0-36403961431a
Lee, Rico S.C.
dc94efcb-7e27-4d28-85d4-b76a326574d3
Fontenelle, Leonardo F.
859206be-2b11-438a-9b18-d22579111a6b
Parkes, Linden
45488113-b369-4d22-a78f-6802d297e8f3
Tiego, Jeggan
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Chamberlain, Samuel R.
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Richardson, Karyn
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Segrave, Rebecca
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Yücel, Murat
aff092ea-35e0-476a-b9bf-ace9b84aa1e1

Den Ouden, Lauren, Suo, Chao, Albertella, Lucy, Greenwood, Lisa Marie, Lee, Rico S.C., Fontenelle, Leonardo F., Parkes, Linden, Tiego, Jeggan, Chamberlain, Samuel R., Richardson, Karyn, Segrave, Rebecca and Yücel, Murat (2022) Transdiagnostic phenotypes of compulsive behavior and associations with psychological, cognitive, and neurobiological affective processing. Translational Psychiatry, 12 (1), [10]. (doi:10.1038/s41398-021-01773-1).

Record type: Article

Abstract

Compulsivity is a poorly understood transdiagnostic construct thought to underlie multiple disorders, including obsessive-compulsive disorder, addictions, and binge eating. Our current understanding of the causes of compulsive behavior remains primarily based on investigations into specific diagnostic categories or findings relying on one or two laboratory measures to explain complex phenotypic variance. This proof-of-concept study drew on a heterogeneous sample of community-based individuals (N = 45; 18–45 years; 25 female) exhibiting compulsive behavioral patterns in alcohol use, eating, cleaning, checking, or symmetry. Data-driven statistical modeling of multidimensional markers was utilized to identify homogeneous subtypes that were independent of traditional clinical phenomenology. Markers were based on well-defined measures of affective processing and included psychological assessment of compulsivity, behavioral avoidance, and stress, neurocognitive assessment of reward vs. punishment learning, and biological assessment of the cortisol awakening response. The neurobiological validity of the subtypes was assessed using functional magnetic resonance imaging. Statistical modeling identified three stable, distinct subtypes of compulsivity and affective processing, which we labeled “Compulsive Non-Avoidant”, “Compulsive Reactive” and “Compulsive Stressed”. They differed meaningfully on validation measures of mood, intolerance of uncertainty, and urgency. Most importantly, subtypes captured neurobiological variance on amygdala-based resting-state functional connectivity, suggesting they were valid representations of underlying neurobiology and highlighting the relevance of emotion-related brain networks in compulsive behavior. Although independent larger samples are needed to confirm the stability of subtypes, these data offer an integrated understanding of how different systems may interact in compulsive behavior and provide new considerations for guiding tailored intervention decisions.

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Accepted/In Press date: 16 December 2021
Published date: 10 January 2022

Identifiers

Local EPrints ID: 492516
URI: http://eprints.soton.ac.uk/id/eprint/492516
PURE UUID: 8aeadee1-a754-4fae-8589-0bc934204eaa
ORCID for Samuel R. Chamberlain: ORCID iD orcid.org/0000-0001-7014-8121

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Date deposited: 30 Jul 2024 16:38
Last modified: 03 Aug 2024 02:01

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Contributors

Author: Lauren Den Ouden
Author: Chao Suo
Author: Lucy Albertella
Author: Lisa Marie Greenwood
Author: Rico S.C. Lee
Author: Leonardo F. Fontenelle
Author: Linden Parkes
Author: Jeggan Tiego
Author: Samuel R. Chamberlain ORCID iD
Author: Karyn Richardson
Author: Rebecca Segrave
Author: Murat Yücel

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