| Literature DB >> 30765822 |
Nina Levar1,2,3, Tessa J Van Doesum4,5,6, Damiaan Denys4,5,6, Guido A Van Wingen4,5,6.
Abstract
In recent years, resting-state (RS) networks and RS function have received increased attention, highlighting their importance in both cognitive function and psychopathology. The neurochemical substrates underlying RS networks and their interactions, however, have not yet been well established. Even though prior research has provided first evidence for a negative association between brain GABA levels and RS connectivity, these findings have been limited to within network connectivity, and not network interactions. In this multi-modal imaging study, we investigated the role of the main inhibitory neurotransmitter У-aminobutyric acid (GABA) and the main excitatory neurotransmitter glutamate (Glx) on RS network function and network coupling of three core networks: the default-mode network (DMN), salience network (SN), and central executive network (CEN). Resting-state functional connectivity and GABA and Glx levels in the dorsal anterior cingulate cortex (dACC) were assessed in 64 healthy male participants using functional MRI and magnetic resonance spectroscopy (MRS). Analyses showed that dACC GABA levels were positively correlated with resting-state connectivity in the CEN, and negatively associated with functional coupling of the DMN and CEN. In contrast, GABA/Glx ratios were inversely correlated with the SN and DMN. These findings extend insights into the role of GABA and Glx in individual networks to interactions across networks, suggesting that GABA levels in the SN might play a role in RS functional connectivity within the central executive network, and network interactions with the default-mode network. Our results further suggest a potentially critical role of the relationship between GABA and Glx in RS network function.Entities:
Year: 2019 PMID: 30765822 PMCID: PMC6375948 DOI: 10.1038/s41598-018-38078-1
Source DB: PubMed Journal: Sci Rep ISSN: 2045-2322 Impact factor: 4.379
Figure 1Resting-state networks identified using independent component analysis (ICA). Four independent components representing (A) the default-mode network (DMN), (B) the salience network, and the (C) left and (D) right central executive networks (CEN).
Figure 2Correlations of dACC GABA and central executive networks. (A) Transverse and sagittal views of significant GABA associated functional connectivity (p < 0.05) in the lateral occipital cortex and superior parietal lobe of the left CEN. The scatter plot depicts the association between GABA/Cr levels and mean intensity (parameter estimates (PE)) of resting-state connectivity within the left CEN. (B) Transverse and sagittal views of significant GABA associated RS connectivity (p < 0.05) in the middle frontal gyrus of the right CEN. The scatter plot shows the correlation between dACC GABA/Cr and resting-state connectivity of the right CEN.
Figure 3Correlations of dACC GABA/Glx ratios and the SN and DMN. (A) Transverse and sagittal views of significant GABA/Glx associated resting-state connectivity (p < 0.05) in the left insula of the SN. The scatter plot depicts the association between GABA/Cr levels and mean intensity (parameter estimates (PE)) of resting-state connectivity within the SN. (B) Transverse and sagittal views of significant GABA/Glx ratio associated functional connectivity (p < 0.05) in the lateral occipital cortex of the DMN. The scatter plot shows the correlation between dACC GABA/Cr and resting-state connectivity within the DMN.
Figure 4Resting-state network correlations. (A) Partial correlation analyses showed that the SN was positively correlated with the CEN and negatively correlated with DMN. CEN and DMN were positively correlated with each other. (B) Scatter plot showing that high GABA levels were correlated with reduced FC between the DMN and the left CEN.
Figure 5(A) MRS voxel placement in the dorsal anterior cingulate cortex. (B) MRS spectrum and fit. The GABA peak was fitted using a Gaussian function at 3.0 ppm. The Glx peak was fitted using two Lorentzian curves.