Patterns of brain structural connectivity differentiate normal weight from overweight subjects

Background: Alterations in the hedonic component of ingestive behaviors have been implicated as a possible risk factor in the pathophysiology of overweight and obese individuals. Neuroimaging evidence from individuals with increasing body mass index suggests structural, functional, and neurochemica...

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Main Authors: Arpana Gupta, Emeran A. Mayer, Claudia P. Sanmiguel, John D. Van Horn, Davis Woodworth, Benjamin M. Ellingson, Connor Fling, Aubrey Love, Kirsten Tillisch, Jennifer S. Labus
Format: Article
Language:English
Published: Elsevier 2015-01-01
Series:NeuroImage: Clinical
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2213158215000066
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author Arpana Gupta
Emeran A. Mayer
Claudia P. Sanmiguel
John D. Van Horn
Davis Woodworth
Benjamin M. Ellingson
Connor Fling
Aubrey Love
Kirsten Tillisch
Jennifer S. Labus
spellingShingle Arpana Gupta
Emeran A. Mayer
Claudia P. Sanmiguel
John D. Van Horn
Davis Woodworth
Benjamin M. Ellingson
Connor Fling
Aubrey Love
Kirsten Tillisch
Jennifer S. Labus
Patterns of brain structural connectivity differentiate normal weight from overweight subjects
NeuroImage: Clinical
Obesity
Overweight
Morphological gray-matter
Anatomical white-matter connectivity
Reward network
Multivariate analysis
Classification algorithm
author_facet Arpana Gupta
Emeran A. Mayer
Claudia P. Sanmiguel
John D. Van Horn
Davis Woodworth
Benjamin M. Ellingson
Connor Fling
Aubrey Love
Kirsten Tillisch
Jennifer S. Labus
author_sort Arpana Gupta
title Patterns of brain structural connectivity differentiate normal weight from overweight subjects
title_short Patterns of brain structural connectivity differentiate normal weight from overweight subjects
title_full Patterns of brain structural connectivity differentiate normal weight from overweight subjects
title_fullStr Patterns of brain structural connectivity differentiate normal weight from overweight subjects
title_full_unstemmed Patterns of brain structural connectivity differentiate normal weight from overweight subjects
title_sort patterns of brain structural connectivity differentiate normal weight from overweight subjects
publisher Elsevier
series NeuroImage: Clinical
issn 2213-1582
publishDate 2015-01-01
description Background: Alterations in the hedonic component of ingestive behaviors have been implicated as a possible risk factor in the pathophysiology of overweight and obese individuals. Neuroimaging evidence from individuals with increasing body mass index suggests structural, functional, and neurochemical alterations in the extended reward network and associated networks. Aim: To apply a multivariate pattern analysis to distinguish normal weight and overweight subjects based on gray and white-matter measurements. Methods: Structural images (N = 120, overweight N = 63) and diffusion tensor images (DTI) (N = 60, overweight N = 30) were obtained from healthy control subjects. For the total sample the mean age for the overweight group (females = 32, males = 31) was 28.77 years (SD = 9.76) and for the normal weight group (females = 32, males = 25) was 27.13 years (SD = 9.62). Regional segmentation and parcellation of the brain images was performed using Freesurfer. Deterministic tractography was performed to measure the normalized fiber density between regions. A multivariate pattern analysis approach was used to examine whether brain measures can distinguish overweight from normal weight individuals. Results: 1. White-matter classification: The classification algorithm, based on 2 signatures with 17 regional connections, achieved 97% accuracy in discriminating overweight individuals from normal weight individuals. For both brain signatures, greater connectivity as indexed by increased fiber density was observed in overweight compared to normal weight between the reward network regions and regions of the executive control, emotional arousal, and somatosensory networks. In contrast, the opposite pattern (decreased fiber density) was found between ventromedial prefrontal cortex and the anterior insula, and between thalamus and executive control network regions. 2. Gray-matter classification: The classification algorithm, based on 2 signatures with 42 morphological features, achieved 69% accuracy in discriminating overweight from normal weight. In both brain signatures regions of the reward, salience, executive control and emotional arousal networks were associated with lower morphological values in overweight individuals compared to normal weight individuals, while the opposite pattern was seen for regions of the somatosensory network. Conclusions: 1. An increased BMI (i.e., overweight subjects) is associated with distinct changes in gray-matter and fiber density of the brain. 2. Classification algorithms based on white-matter connectivity involving regions of the reward and associated networks can identify specific targets for mechanistic studies and future drug development aimed at abnormal ingestive behavior and in overweight/obesity.
topic Obesity
Overweight
Morphological gray-matter
Anatomical white-matter connectivity
Reward network
Multivariate analysis
Classification algorithm
url http://www.sciencedirect.com/science/article/pii/S2213158215000066
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spelling doaj-ad4ad14f800f45a79627a2f1b5c2fc5a2020-11-24T22:25:17ZengElsevierNeuroImage: Clinical2213-15822015-01-017C50651710.1016/j.nicl.2015.01.005Patterns of brain structural connectivity differentiate normal weight from overweight subjectsArpana Gupta0Emeran A. Mayer1Claudia P. Sanmiguel2John D. Van Horn3Davis Woodworth4Benjamin M. Ellingson5Connor Fling6Aubrey Love7Kirsten Tillisch8Jennifer S. Labus9Gail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAThe Institute for Neuroimaging and Informatics, Keck School of Medicine, USC, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USAGail and Gerald Oppenheimer Family Center for Neurobiology of Stress, Ingestive Behavior and Obesity Program (IBOP), UCLA, Los Angeles, CA, USA Background: Alterations in the hedonic component of ingestive behaviors have been implicated as a possible risk factor in the pathophysiology of overweight and obese individuals. Neuroimaging evidence from individuals with increasing body mass index suggests structural, functional, and neurochemical alterations in the extended reward network and associated networks. Aim: To apply a multivariate pattern analysis to distinguish normal weight and overweight subjects based on gray and white-matter measurements. Methods: Structural images (N = 120, overweight N = 63) and diffusion tensor images (DTI) (N = 60, overweight N = 30) were obtained from healthy control subjects. For the total sample the mean age for the overweight group (females = 32, males = 31) was 28.77 years (SD = 9.76) and for the normal weight group (females = 32, males = 25) was 27.13 years (SD = 9.62). Regional segmentation and parcellation of the brain images was performed using Freesurfer. Deterministic tractography was performed to measure the normalized fiber density between regions. A multivariate pattern analysis approach was used to examine whether brain measures can distinguish overweight from normal weight individuals. Results: 1. White-matter classification: The classification algorithm, based on 2 signatures with 17 regional connections, achieved 97% accuracy in discriminating overweight individuals from normal weight individuals. For both brain signatures, greater connectivity as indexed by increased fiber density was observed in overweight compared to normal weight between the reward network regions and regions of the executive control, emotional arousal, and somatosensory networks. In contrast, the opposite pattern (decreased fiber density) was found between ventromedial prefrontal cortex and the anterior insula, and between thalamus and executive control network regions. 2. Gray-matter classification: The classification algorithm, based on 2 signatures with 42 morphological features, achieved 69% accuracy in discriminating overweight from normal weight. In both brain signatures regions of the reward, salience, executive control and emotional arousal networks were associated with lower morphological values in overweight individuals compared to normal weight individuals, while the opposite pattern was seen for regions of the somatosensory network. Conclusions: 1. An increased BMI (i.e., overweight subjects) is associated with distinct changes in gray-matter and fiber density of the brain. 2. Classification algorithms based on white-matter connectivity involving regions of the reward and associated networks can identify specific targets for mechanistic studies and future drug development aimed at abnormal ingestive behavior and in overweight/obesity. http://www.sciencedirect.com/science/article/pii/S2213158215000066ObesityOverweightMorphological gray-matterAnatomical white-matter connectivityReward networkMultivariate analysisClassification algorithm