Brief Report: Local-Global Processing and Co-occurrence of Anxiety, Autistic and Obsessive-Compulsive Traits in a Non-clinical Sample.

J Autism Dev Disord

Department of Psychology, School of Human and Health Sciences, University of Huddersfield, Huddersfield, UK.

Published: February 2023

Purpose: Increased local-to-global interference has been found in those with ASD, AD and OCD, and as such, may represent a transdiagnostic marker. As a first step to investigating this, we aimed to assess the overlap in traits of these disorders in a non-clinical sample, and whether local-global processing relates to the traits of the three conditions.

Methods: Participants (n = 149) completed questionnaires including the Autism Quotient (AQ), the Obsessive-Compulsive Inventory (OCI-R) and the Zung Self-rating Anxiety Scale (SAS) and an online version of the Navon task. Behavioural metrics of interference and precedence were extracted from the task and correlated with trait scores.

Results: We found moderate to strong correlations between the total scores for ASD, anxiety and OCD. Most local-global processing indices did not relate to traits.

Conclusion: The study found evidence for an overlap in autism, anxiety and obsessive-compulsive traits in a non-clinical sample. However, local-global processing, as measured by the Navon task, did not appear to underpin symptomatology in the sample and could not be considered a transdiagnostic marker. Future research should investigate the value of alternate metrics.

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Source
http://dx.doi.org/10.1007/s10803-022-05886-4DOI Listing

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