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Resting state connectivity best predicts alcohol use severity in moderate to heavy alcohol users
被引:47
|作者:
Fede, Samantha J.
[1
]
Grodin, Erica N.
[1
,3
]
Dean, Sarah F.
[1
]
Diazgranados, Nancy
[2
]
Momenan, Reza
[1
]
机构:
[1] NIAAA, Clin NeuroImaging Res Core, NIH, 10 Ctr Dr,MSC 1108, Bethesda, MD 20814 USA
[2] NIAAA, Off Clin Director, NIH, 10 Ctr Dr,MSC 1108, Bethesda, MD 20814 USA
[3] Univ Calif Los Angeles, Addict Lab, Psychol, Los Angeles, CA USA
基金:
美国国家卫生研究院;
关键词:
Alcohol use disorder;
MRI;
Machine learning;
Multimodal;
Connectivity;
Imaging;
FUNCTIONAL NETWORK CONNECTIVITY;
DISORDERS IDENTIFICATION TEST;
GRAY-MATTER;
AUDIT QUESTIONNAIRE;
NEURAL ACTIVATION;
BRAIN STRUCTURE;
WHITE-MATTER;
DEPENDENCE;
NICOTINE;
CUES;
D O I:
10.1016/j.nicl.2019.101782
中图分类号:
R445 [影像诊断学];
学科分类号:
100207 ;
摘要:
Background: In the United States, 13% of adults are estimated to have alcohol use disorder (AUD). Most studies examining the neurobiology of AUD treat individuals with this disorder as a homogeneous group; however, the theories of the neurocircuitry of AUD call for a quantitative and dimensional approach. Previous imaging studies find differences in brain structure, function, and resting-state connectivity in AUD, but few use a multimodal approach to understand the association between severity of alcohol use and the brain differences. Methods: Adults (ages 22-60) with problem drinking patterns (n = 59) completed a behavioral and neuroimaging protocol at the National Institutes of Health. Alcohol severity was quantified with the Alcohol Use Disorders Identification Test (AUDIT). In a 3 T MRI scanner, participants underwent a structural MRI as well as restingstate, monetary incentive delay, and face matching fMRI scans. Machine learning was applied and trained using the neural data from MRI scanning. The model was tested for generalizability in a validation sample (n = 24). Results: The resting state-connectivity features model best predicted AUD severity in the naive sample, compared to task fMRI, structural MRI, combined MRI features, or demographic features. Network connectivity features between salience network, default mode network, executive control network, and sensory networks explained 33% of the variance associated with AUDIT in this model. Conclusions: These findings indicate that the neural effects of AUD vary according to severity. Our results emphasize the utility of resting state fMRI as a neuroimaging biomarker for quantitative clinical evaluation of AUD.
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