Literature DB >> 34296093

Individual Cortical Entropy Profile: Test-Retest Reliability, Predictive Power for Cognitive Ability, and Neuroanatomical Foundation.

Mianxin Liu1, Xinyang Liu2, Andrea Hildebrandt2, Changsong Zhou1,3.   

Abstract

The entropy profiles of cortical activity have become novel perspectives to investigate individual differences in behavior. However, previous studies have neglected foundational aspects of individual entropy profiles, that is, the test-retest reliability, the predictive power for cognitive ability in out-of-sample data, and the underlying neuroanatomical basis. We explored these issues in a large young healthy adult dataset (Human Connectome Project, N = 998). We showed the whole cortical entropy profile from resting-state functional magnetic resonance imaging is a robust personalized measure, while subsystem profiles exhibited heterogeneous reliabilities. The limbic network exhibited lowest reliability. We tested the out-of-sample predictive power for general and specific cognitive abilities based on reliable cortical entropy profiles. The default mode and visual networks are most crucial when predicting general cognitive ability. We investigated the anatomical features underlying cross-region and cross-individual variations in cortical entropy profiles. Cortical thickness and structural connectivity explained spatial variations in the group-averaged entropy profile. Cortical folding and myelination in the attention and frontoparietal networks determined predominantly individual cortical entropy profile. This study lays foundations for brain-entropy-based studies on individual differences to understand cognitive ability and related pathologies. These findings broaden our understanding of the associations between neural structures, functional dynamics, and cognitive ability.
© The Author(s) 2020. Published by Oxford University Press.

Entities:  

Keywords:  brain signal entropy; cognitive ability prediction; individual differences; neuroanatomical basis; test–retest reliability

Year:  2020        PMID: 34296093      PMCID: PMC8153045          DOI: 10.1093/texcom/tgaa015

Source DB:  PubMed          Journal:  Cereb Cortex Commun        ISSN: 2632-7376


  95 in total

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