连接体
静息状态功能磁共振成像
神经科学
神经影像学
肥胖
顶叶下小叶
心理学
生物
功能磁共振成像
功能连接
内分泌学
作者
Junjie Wang,Debo Dong,Yong Liu,Yuhu Yang,Ximei Chen,Qinghua He,Xu Lei,Tingyong Feng,Jiang Qiu,Hong Chen
出处
期刊:Cerebral Cortex
[Oxford University Press]
日期:2023-04-06
卷期号:33 (13): 8368-8381
被引量:1
标识
DOI:10.1093/cercor/bhad122
摘要
Abstract The univariate obesity–brain associations have been extensively explored, while little is known about the multivariate associations between obesity and resting-state functional connectivity. We therefore utilized machine learning and resting-state functional connectivity to develop and validate predictive models of 4 obesity phenotypes (i.e. body fat percentage, body mass index, waist circumference, and waist–height ratio) in 3 large neuroimaging datasets (n = 2,992). Preliminary evidence suggested that the resting-state functional connectomes effectively predicted obesity/weight status defined by each obesity phenotype with good generalizability to longitudinal and independent datasets. However, the differences between resting-state functional connectivity patterns characterizing different obesity phenotypes indicated that the obesity–brain associations varied according to the type of measure of obesity. The shared structure among resting-state functional connectivity patterns revealed reproducible neuroimaging biomarkers of obesity, primarily comprising the connectomes within the visual cortex and between the visual cortex and inferior parietal lobule, visual cortex and orbital gyrus, and amygdala and orbital gyrus, which further suggested that the dysfunctions in the perception, attention and value encoding of visual information (e.g. visual food cues) and abnormalities in the reward circuit may act as crucial neurobiological bases of obesity. The recruitment of multiple obesity phenotypes is indispensable in future studies seeking reproducible obesity–brain associations.
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