静息状态功能磁共振成像
功能磁共振成像
大脑活动与冥想
神经科学
人脑
能量代谢
神经影像学
心理学
医学
内科学
脑电图
作者
Tommaso Volpi,Erica Silvestri,Marco Aiello,John J. Lee,Andrei G. Vlassenko,Manu S. Goyal,Maurizio Corbetta,Alessandra Bertoldo
标识
DOI:10.1177/0271678x241237974
摘要
Brain glucose metabolism, which can be investigated at the macroscale level with [ 18 F]FDG PET, displays significant regional variability for reasons that remain unclear. Some of the functional drivers behind this heterogeneity may be captured by resting-state functional magnetic resonance imaging (rs-fMRI). However, the full extent to which an fMRI-based description of the brain’s spontaneous activity can describe local metabolism is unknown. Here, using two multimodal datasets of healthy participants, we built a multivariable multilevel model of functional-metabolic associations, assessing multiple functional features, describing the 1) rs-fMRI signal, 2) hemodynamic response, 3) static and 4) time-varying functional connectivity, as predictors of the human brain’s metabolic architecture. The full model was trained on one dataset and tested on the other to assess its reproducibility. We found that functional-metabolic spatial coupling is nonlinear and heterogeneous across the brain, and that local measures of rs-fMRI activity and synchrony are more tightly coupled to local metabolism. In the testing dataset, the degree of functional-metabolic spatial coupling was also related to peripheral metabolism. Overall, although a significant proportion of regional metabolic variability can be described by measures of spontaneous activity, additional efforts are needed to explain the remaining variance in the brain’s ‘dark energy’.
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