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Identification of a brain fingerprint for overweight and obesity.

Citation
Farruggia, M. C., et al. “Identification Of A Brain Fingerprint For Overweight And Obesity.”. Physiology & Behavior, p. 112940.
Center Yale University
Author Michael C Farruggia, Maria J van Kooten, Emily E Perszyk, Mary Burke V, Dustin Scheinost, Todd Constable, Dana M Small
Keywords BMI, functional connectivity, insulin, obesity, prediction, Waist circumference
Abstract

The brain plays a central role in the pathophysiology of overweight and obesity. Connectome-based Predictive Modeling (CPM) is a newly developed, data-driven approach that exploits whole-brain functional connectivity to predict a behavior or trait that varies across individuals. We used CPM to determine whether brain "fingerprints" evoked during milkshake consumption could be isolated for common measures of adiposity in 67 adults with overweight and obesity. We found that CPM captures more variance in waist circumference than either percent body fat or BMI, the most frequently used measures to assess brain correlates of obesity. In a post-hoc analysis, we were also able to derive a largely separable functional connectivity network predicting fasting blood insulin. These findings suggest that, in individuals with overweight and obesity, brain network patterns may be more tightly coupled to waist circumference than BMI or percent body fat and that adiposity and glucose tolerance are associated with distinct maps, pointing to dissociable central pathophysiological phenotypes for obesity and diabetes.

Year of Publication
2020
Journal
Physiology & behavior
Volume
222
Number of Pages
112940
Date Published
12/2020
ISSN Number
1873-507X
DOI
10.1016/j.physbeh.2020.112940
Alternate Journal
Physiol Behav
PMID
32417645
PMCID
PMC7321926
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