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Published in: Brain Structure and Function 6/2018

01-07-2018 | Original Article

Predicting personality from network-based resting-state functional connectivity

Authors: Alessandra D. Nostro, Veronika I. Müller, Deepthi P. Varikuti, Rachel N. Pläschke, Felix Hoffstaedter, Robert Langner, Kaustubh R. Patil, Simon B. Eickhoff

Published in: Brain Structure and Function | Issue 6/2018

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Abstract

Personality is associated with variation in all kinds of mental faculties, including affective, social, executive, and memory functioning. The intrinsic dynamics of neural networks underlying these mental functions are reflected in their functional connectivity at rest (RSFC). We, therefore, aimed to probe whether connectivity in functional networks allows predicting individual scores of the five-factor personality model and potential gender differences thereof. We assessed nine meta-analytically derived functional networks, representing social, affective, executive, and mnemonic systems. RSFC of all networks was computed in a sample of 210 males and 210 well-matched females and in a replication sample of 155 males and 155 females. Personality scores were predicted using relevance vector machine in both samples. Cross-validation prediction accuracy was defined as the correlation between true and predicted scores. RSFC within networks representing social, affective, mnemonic, and executive systems significantly predicted self-reported levels of Extraversion, Neuroticism, Agreeableness, and Openness. RSFC patterns of most networks, however, predicted personality traits only either in males or in females. Personality traits can be predicted by patterns of RSFC in specific functional brain networks, providing new insights into the neurobiology of personality. However, as most associations were gender-specific, RSFC–personality relations should not be considered independently of gender.
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Metadata
Title
Predicting personality from network-based resting-state functional connectivity
Authors
Alessandra D. Nostro
Veronika I. Müller
Deepthi P. Varikuti
Rachel N. Pläschke
Felix Hoffstaedter
Robert Langner
Kaustubh R. Patil
Simon B. Eickhoff
Publication date
01-07-2018
Publisher
Springer Berlin Heidelberg
Published in
Brain Structure and Function / Issue 6/2018
Print ISSN: 1863-2653
Electronic ISSN: 1863-2661
DOI
https://doi.org/10.1007/s00429-018-1651-z

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