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A taxometric analysis of developmental prosopagnosia: Evidence for a categorically distinct impairment.

Bate, S., Portch, E., Bennetts, R. J. and Parris, B. A., 2025. A taxometric analysis of developmental prosopagnosia: Evidence for a categorically distinct impairment. Cortex, 183, 131-145.

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DOI: 10.1016/j.cortex.2024.10.021

Abstract

Poor performance on cognitive assessment tasks may indicate a selective 'impairment'. However, it is unclear whether such difficulties separate the individual from the general population qualitatively (i.e., they form a discrete group) or quantitatively (i.e., they represent the lower end of a continuous distribution). Taxometric methods address this question but have rarely been applied to cognitive disorders. This study examined the latent structure of developmental prosopagnosia (DP) - a relatively selective deficit in face recognition that occurs in the absence of neurological injury. Multiple taxometric procedures were applied to dominant diagnostic indices of face recognition ability across two independent datasets. All analyses supported a categorical outcome, even for mild cases of DP, suggesting that it is a qualitatively distinct condition. This finding has significant implications for our understanding of DP given it has traditionally been viewed as a continuous impairment. In particular, existing (arbitrary) diagnostic cut-offs may be too conservative, underestimating prevalence rates and prohibiting big-data approaches to theoretical study. More broadly, these conclusions support application of the taxometric method to many other cognitive processes where weaknesses are predominantly assumed to reside on a continuous distribution.

Item Type:Article
ISSN:0010-9452
Uncontrolled Keywords:Face recognition; Individual differences; Pathology; Prosopagnosia; Taxometrics
Group:Faculty of Science & Technology
ID Code:40583
Deposited By: Symplectic RT2
Deposited On:09 Dec 2024 14:46
Last Modified:09 Dec 2024 14:46

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