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Conceptualising compulsivity through network analysis: a two-sample study

Conceptualising compulsivity through network analysis: a two-sample study
Conceptualising compulsivity through network analysis: a two-sample study

Compulsivity is a transdiagnostic construct crucial to understanding multiple psychiatric conditions and problematic repetitive behaviours. Despite being identified as a clinical- and research-relevant construct, there are limited insights into the internal conceptual structure of compulsivity. To provide a more nuanced understanding of compulsivity, the current study estimated the structure of compulsivity (indexed using the previously validated Cambridge-Chicago Compulsivity Trait Scale, CHI-T) among two large-scale and geographically distinct samples using the network estimation method. The samples consisted of a United Kingdom cohort (n = 122,346, 51.4% female, Mean age = 43.7, SD = 16.5, range = 9–86 years) and a South Africa cohort (n = 2674, 65.6% female, Mean age = 24.6, SD = 8.6, range = 18–65 years). Network community analysis demonstrated that compulsivity was constituted of three interrelated dimensions, namely: perfectionism, cognitive rigidity and reward drive. Further, ‘Completion leads to soothing’ and ‘Difficulty moving from task to task’ were identified as core (central nodes) to compulsivity. The dimensional structure and central nodes of compulsivity networks were consistent across the two samples. These findings facilitate the conceptualisation and measurement of compulsivity and may contribute to the early detection and treatment of compulsivity-related disorders.

CHI-T, Compulsivity, Network analysis, Structure, Transdiagnostic
0010-440X
Liu, Chang
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Albertella, Lucy
c95a7a69-10d8-4549-a155-55a42170d8c0
Lochner, Christine
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Tiego, Jeggan
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Grant, Jon E.
68b74bfc-0910-4325-aa34-24d285abfc19
Ioannidis, Konstantinos
82240a24-3153-45bb-bfaf-c6df9cd4f261
Yücel, Murat
aff092ea-35e0-476a-b9bf-ace9b84aa1e1
Hellyer, Peter J.
4f401a7f-3135-4d1d-a6ef-997317513aaa
Hampshire, Adam
08af1acb-f59f-4f42-a1ca-99fd2fb66da2
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f
Liu, Chang
f9741c74-d290-4d9c-8c9f-e0a7036b9699
Albertella, Lucy
c95a7a69-10d8-4549-a155-55a42170d8c0
Lochner, Christine
8e428f81-855d-467b-9805-49e387f66683
Tiego, Jeggan
f20f7e9c-597f-42f7-80a9-b36c16808f6c
Grant, Jon E.
68b74bfc-0910-4325-aa34-24d285abfc19
Ioannidis, Konstantinos
82240a24-3153-45bb-bfaf-c6df9cd4f261
Yücel, Murat
aff092ea-35e0-476a-b9bf-ace9b84aa1e1
Hellyer, Peter J.
4f401a7f-3135-4d1d-a6ef-997317513aaa
Hampshire, Adam
08af1acb-f59f-4f42-a1ca-99fd2fb66da2
Chamberlain, Samuel R.
8a0e09e6-f51f-4039-9287-88debe8d8b6f

Liu, Chang, Albertella, Lucy, Lochner, Christine, Tiego, Jeggan, Grant, Jon E., Ioannidis, Konstantinos, Yücel, Murat, Hellyer, Peter J., Hampshire, Adam and Chamberlain, Samuel R. (2023) Conceptualising compulsivity through network analysis: a two-sample study. Comprehensive Psychiatry, 127, [152429]. (doi:10.1016/j.comppsych.2023.152429).

Record type: Article

Abstract

Compulsivity is a transdiagnostic construct crucial to understanding multiple psychiatric conditions and problematic repetitive behaviours. Despite being identified as a clinical- and research-relevant construct, there are limited insights into the internal conceptual structure of compulsivity. To provide a more nuanced understanding of compulsivity, the current study estimated the structure of compulsivity (indexed using the previously validated Cambridge-Chicago Compulsivity Trait Scale, CHI-T) among two large-scale and geographically distinct samples using the network estimation method. The samples consisted of a United Kingdom cohort (n = 122,346, 51.4% female, Mean age = 43.7, SD = 16.5, range = 9–86 years) and a South Africa cohort (n = 2674, 65.6% female, Mean age = 24.6, SD = 8.6, range = 18–65 years). Network community analysis demonstrated that compulsivity was constituted of three interrelated dimensions, namely: perfectionism, cognitive rigidity and reward drive. Further, ‘Completion leads to soothing’ and ‘Difficulty moving from task to task’ were identified as core (central nodes) to compulsivity. The dimensional structure and central nodes of compulsivity networks were consistent across the two samples. These findings facilitate the conceptualisation and measurement of compulsivity and may contribute to the early detection and treatment of compulsivity-related disorders.

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Accepted/In Press date: 2 October 2023
e-pub ahead of print date: 3 October 2023
Published date: 11 October 2023
Keywords: CHI-T, Compulsivity, Network analysis, Structure, Transdiagnostic

Identifiers

Local EPrints ID: 491914
URI: http://eprints.soton.ac.uk/id/eprint/491914
ISSN: 0010-440X
PURE UUID: 783de09f-e3d3-44a9-a520-ba4f40871053
ORCID for Samuel R. Chamberlain: ORCID iD orcid.org/0000-0001-7014-8121

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Date deposited: 05 Jul 2024 17:14
Last modified: 12 Jul 2024 02:06

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Contributors

Author: Chang Liu
Author: Lucy Albertella
Author: Christine Lochner
Author: Jeggan Tiego
Author: Jon E. Grant
Author: Konstantinos Ioannidis
Author: Murat Yücel
Author: Peter J. Hellyer
Author: Adam Hampshire
Author: Samuel R. Chamberlain ORCID iD

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