Classifying Vulnerability to Sleep Deprivation Using Resting-State Functional MRI Graph Theory Metrics

Sleep deprivation (SD) has become very common in contemporary society, where people work around the clock. SD-induced cognitive deficits show large inter-individual differences and are trait-like with known neural correlates. However, few studies have used neuroimaging to predict vulnerability to SD...

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Published inFrontiers in neuroscience Vol. 15; p. 660365
Main Authors Xu, Yongqiang, Yu, Ping, Zheng, Jianmin, Wang, Chen, Hu, Tian, Yang, Qi, Xu, Ziliang, Guo, Fan, Tang, Xing, Ren, Fang, Zhu, Yuanqiang
Format Journal Article
LanguageEnglish
Published Switzerland Frontiers Research Foundation 07.06.2021
Frontiers Media S.A
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Online AccessGet full text
ISSN1662-453X
1662-4548
1662-453X
DOI10.3389/fnins.2021.660365

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Summary:Sleep deprivation (SD) has become very common in contemporary society, where people work around the clock. SD-induced cognitive deficits show large inter-individual differences and are trait-like with known neural correlates. However, few studies have used neuroimaging to predict vulnerability to SD. Here, resting state functional magnetic resonance imaging (fMRI) data and psychomotor vigilance task (PVT) data were collected from 60 healthy subjects after resting wakefulness and after one night of SD. The number of PVT lapses was then used to classify participants on the basis of whether they were vulnerable or resilient to SD. We explored the viability of graph-theory-based degree centrality to accurately classify vulnerability to SD. Compared with during resting wakefulness, widespread changes in degree centrality (DC) were found after SD, indicating significant reorganization of sleep homeostasis with respect to activity in resting state brain network architecture. Support vector machine (SVM) analysis using leave-one-out cross-validation achieved a correct classification rate of 84.75% [sensitivity 82.76%, specificity 86.67%, and area under the receiver operating characteristic curve (AUC) 0.94] for differentiating vulnerable subjects from resilient subjects. Brain areas that contributed most to the classification model were mainly located within the sensorimotor network, default mode network, and thalamus. Furthermore, we found a significantly negative correlation between changes in PVT lapses and DC in the thalamus after SD. These findings suggest that resting-state network measures combined with a machine learning algorithm could have broad potential applications in screening vulnerability to SD.
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This article was submitted to Sleep and Circadian Rhythms, a section of the journal Frontiers in Neuroscience
Edited by: Leila Kheirandish-Gozal, University of Chicago, United States
Reviewed by: Kai Yuan, Xidian University, China; Yi Zhang, Xidian University, China
These authors have contributed equally to this work and share first authorship
ISSN:1662-453X
1662-4548
1662-453X
DOI:10.3389/fnins.2021.660365