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Dissecting Task-based FMRI Activity Using Normative Modelling: an Application to the Emotional Face Matching Task

Overview
Journal Commun Biol
Specialty Biology
Date 2024 Jul 20
PMID 39033247
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Abstract

Functional neuroimaging has contributed substantially to understanding brain function but is dominated by group analyses that index only a fraction of the variation in these data. It is increasingly clear that parsing the underlying heterogeneity is crucial to understand individual differences and the impact of different task manipulations. We estimate large-scale (N = 7728) normative models of task-evoked activation during the Emotional Face Matching Task, which enables us to bind heterogeneous datasets to a common reference and dissect heterogeneity underlying group-level analyses. We apply this model to a heterogenous patient cohort, to map individual differences between patients with one or more mental health diagnoses relative to the reference cohort and determine multivariate associations with transdiagnostic symptom domains. For the face>shapes contrast, patients have a higher frequency of extreme deviations which are spatially heterogeneous. In contrast, normative models for faces>baseline have greater predictive value for individuals' transdiagnostic functioning. Taken together, we demonstrate that normative modelling of fMRI task-activation can be used to illustrate the influence of different task choices and map replicable individual differences, and we encourage its application to other neuroimaging tasks in future studies.

Citing Articles

Dissecting task-based fMRI activity using normative modelling: an application to the Emotional Face Matching Task.

Savage H, Mulders P, van Eijndhoven P, van Oort J, Tendolkar I, Vrijsen J Commun Biol. 2024; 7(1):888.

PMID: 39033247 PMC: 11271583. DOI: 10.1038/s42003-024-06573-z.

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